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Article

A New Fractional Particle Swarm Optimization with Entropy Diversity Based Velocity for Reactive Power Planning

by
Muhammad Waleed Khan
1,
Yasir Muhammad
1,
Muhammad Asif Zahoor Raja
1,2,
Farman Ullah
1,
Naveed Ishtiaq Chaudhary
3,* and
Yigang He
4,*
1
Department of Electrical and Computer Engineering, COMSATS University Islamabad, Attock 22060, Pakistan
2
Future Technology Research Center, National Yunlin University of Science and Technology, 123 University Road, Section 3, Douliou, Yunlin 64002, Taiwan
3
Department of Electrical Engineering, International Islamic University, Islamabad 44000, Pakistan
4
School of Electrical Engineering and Automation, Wuhan University, Wuhan 430072, China
*
Authors to whom correspondence should be addressed.
Entropy 2020, 22(10), 1112; https://doi.org/10.3390/e22101112
Submission received: 7 June 2020 / Revised: 17 August 2020 / Accepted: 18 August 2020 / Published: 1 October 2020
(This article belongs to the Section Multidisciplinary Applications)

Abstract

:
Optimal Reactive Power Dispatch (ORPD) is the vital concern of network operators in the planning and management of electrical systems to reduce the real and reactive losses of the transmission and distribution system in order to augment the overall efficiency of the electrical network. The principle objective of the ORPD problem is to explore the best setting of decision variables such as rating of the shunt capacitors, output voltage of the generators and tap setting of the transformers in order to diminish the line loss, and improve the voltage profile index (VPI) and operating cost minimization of standard electrical systems while keeping the variables within the allowable limits. This research study demonstrates a compelling transformative approach for resolving ORPD problems faced by the operators through exploiting the strength of the meta-heuristic optimization model based on a new fractional swarming strategy, namely fractional order (FO)–particle swarm optimization (PSO), with consideration of the entropy metric in the velocity update mechanism. To perceive ORPD for standard 30 and 57-bus networks, the complex nonlinear objective functions, including minimization of the system, VPI improvement and operating cost minimization, are constructed with emphasis on efficacy enhancement of the overall electrical system. Assessment of the results show that the proposed FO-PSO with entropy metric performs better than the other state of the art algorithms by means of improvement in VPI, operating cost and line loss minimization. The statistical outcomes in terms of quantile–quantile illustrations, probability plots, cumulative distribution function, box plots, histograms and minimum fitness evaluation in a set of autonomous trials validate the capability of the proposed optimization scheme and exhibit sufficiency and also vigor in resolving ORPD problems.

1. Introduction

The Reactive Power Dispatch (RPD) problem, due to its extreme significance in contemporary load monitoring and management systems of power distribution companies, has been receiving mounting attention from power system engineering scholars with the goal of refining the system voltage profile index (VPI) and diminishing electrical system losses while keeping the constraints of system operation within allowed limits. RPD planning is an obligatory requirement for efficient and viable operation of the electrical transmission ( T l i n e ) and distribution ( D l i n e ) systems. Presently, the existing T l i n e and D l i n e systems are involuntary to operate at almost full capacity due to imbalance investment in transmission and distribution sector as well as power generation sector. More often, due above prevailing situation the heavy flows of current in entire system tend to incur losses as well as threatening stability of the electrical system [1]. This ultimately creates unenviably augmented risk of electricity outages in entire system of different severity levels. In this pertinent situation, there is a general consensus developed amongst the network operators to reinforce the existing transmission ( T l i n e ) and distribution ( D l i n e ) system by installation of new lines and power grid stations to make it efficient, smart, reliable and fault tolerant [2]. To meet the highlighted challenges, there are two potential options available which are normally exercised by different operators with certain allied merits and demerits. The first option is associated to augmentation of the existing infrastructure of electrical power system through the addition of new lines (i.e., LT and HT lines) and substations. The merits and demerits of this option are provided in Table 1.
The second option is related to utilization of the existing electrical transmission and distribution system by optimal setting of its performance parameters which resultantly improve the efficacy of entire electrical system. This can be achieved by carrying out specialized technical study of electrical system known as the optimal power flow (OPF). The merits and demerits of this option are provided in Table 2.
The OPF model is employed in an interconnected electrical system to set the operating parameters of power plants in such a way to efficiently meet the expected load dispatch demand of potential consumers with minimum operating cost and power losses. The OPF model is further divided into two sub problems in which first one is known as economic load dispatch and the other sub-problem is known as ORPD. Both problems are applied in different scenarios based on the requirement of operator subjected to get the desired objective functions. The sub problem of OPF are illustrated in Figure 1.
In this research proposal we have nominated the sub problem of OPF known as ORPD for addressing the objective function of electrical system such as P l o s s minimization, voltage profile index (VPI) improvement and operating cost minimization [3,4,5,6]. The ultimate goal of ORPD is to reduce the T l i n e and D l i n e losses and improve the voltage profile index (VPI) while keeping the decision variables of electrical system such as shunt capacitor banks ( Q C ) , generator voltages ( V G ) , and transformer taps (T) setting within the limits in standard power systems. The objective functions of the ORPD such as power loss minimization, VPI improvement and overall cost minimization are modeled as complex nonlinear equations. The solution of these equations using deterministic techniques (such as RK method, Adams method, shooting method and spectral analysis method etc.) is not possible. The problems of RPD have widely been solved using stochastic methods [6]. To eliminate the RPD problems, various optimization algorithms have been implemented over a period of time to achieve the optimal results. Some of the known stochastic methods implemented for solution of RPD problem includes the linear programming (LP) [7], interior point method (IPM) [8], quadratic programming (QP) [9], genetic algorithm (GA) [10], particle swarm optimization (PSO) [11,12], multi-objective optimization particle swarm optimization (MOPSO) algorithm [13], fractional Order PSO (FO-PSO) [6], harmony search algorithm (HSA) [14], gaussian bare-bones water cycle algorithm (NGBWCA) [15], tabu search (TS) [16], comprehensive learning particle swarm optimization [17], teaching learning based optimization (TLBO) [18], adaptive GA (AGA) [19], seeker optimization algorithm (SOA) [20], jaya algorithm [21], differential evolution (DE) [2,3,5,22,23,24,25], Artificial Bee Colony Algorithm [26], Hybrid Artificial Physics PSO [27], improved antlion optimization algorithm [28], Chaotic Bat Algorithm [29], classification-based Multi-objective evolutionary algorithm [30], evolution strategies (ES) [31], evolutionary programming (EP) [32], firefly algorithm (FA) [33], gravitation search optimization algorithm (GSA) [34,35], bacteria foraging optimization (BFO) [36], bio-geography-based optimization algorithm (BBO) [37] and grey wolf based optimizer algorithm (GWO) [38]. In 2017, another advanced optimizer has also been applied to the problems RPD known as gradient-based WCA (GWCA) [39,40] and results demonstrate the relevance and productivity of optimizer. Furthermore, in order to solve the non-linear complex problems of RPD in power system author Heidari et al. has proposed another state-of-the-art algorithm known as chaotic WCA (CWCA) in his research proposal [41].
These methods have their own merits and demerits in solving the problems of RPD, still certain complications are persisted due to multi modal, nonlinear and discrete characteristic of power system which needs to be catered in more appropriate manners. In addition, due to the complex non-linear and non-differential nature of the RPD problems, a wider set of employed optimization methods coverages towards sub optimal solutions. Presently many heuristic models have been applied under circumstances where normal schemes cannot find a satisfactory result in case of discontinuous and non-differential function with large number of nonlinearly related parameters [14,15]; however, the fractional dynamics of particle swarm optimization along with entropy diversity has not yet been explored in energy and power sector, specifically in solving ORPD problems.
The concept of fractional PSO is based on incorporating the fractional derivative and underlying theory inside the mathematical model of conventional PSO to improve the convergence rate while the synergy of entropy metric improve the optimization characteristic of algorithm by avoiding the suboptimal solution. In recent years, the fractional calculus based optimization mechanisms have been effectively applied in domain of science and engineering such as feature selection [42], image processing and segmentation [43,44], swarm robotics [45], fuzzy controllers [46], classification of extreme learning machine [47], adaptive extended Kalman filtering [48], electromagnetics [49], hyperspectral images [50], media-adventitia border detection [51], monitoring [52] and fractional adaptive filters [53]. Similarly, the inclusion of entropy diversity inside the optimizer is found to be effective in enhancing its performance by means of avoiding premature convergence [54,55,56,57]. Keeping this in mind, in present study, a new algorithm, namely, fractional order particle swarm optimization (FO-PSO) with entropy metric, is designed with synergy of both the fractional calculus and Shanon entropy, to address RPD problem through assessment and proper tuning of decision variables including VAR compensator ( Q C ) , setting of transformers tap (T) and generator voltage ( V G ) while meeting the objectives of system operators (i.e., consumers load demand and minimal losses in power system). The proposed optimization algorithm is tested on standard 30 and 57-bus systems. The single-line diagram (SLD) of the standard 30 and 57-bus test system is illustrated in Figure 2 and Figure 3.
The outcomes are compared with their counterpart algorithms to validate the capability of the proposed optimization scheme and exhibit sufficiency besides, vigor to resolve ORPD problems. The apotheosis of the contribution is stated below:
  • Novel application of fractional evolutionary strategy with introduction of the velocity based entropy diversity in internal solver of the optimization algorithm for solving RPD problems in standard power systems.
  • Effective application of designed scheme to improve the performance of power systems in terms of power loss P l o s s minimization, operating cost minimization and improving voltage profile index (VPI) while fulfilling the system load demands and operational constraints.
  • The endorsement of the algorithm performance through outcomes of statistical analysis in terms of histogram studies, learning curves and probability charts which exhibit the accuracy, reliability, strength and constancy of the proposed optimization strategy.
  • Flexibility in degree of freedom is acquirable for solving the optimization assignments by using the variants of FO-PSO based on fractional orders α = [ 0.1 , 0.2 , , 0.9 ] .
  • The brilliance of FC along with entropy is exploited in optimization scenarios to design a substitute and feasible algorithm for problem in energy sector related to transmission and distribution segment.
This presented research article is aligned as follows: In Section 2, the mathematical model for ORPD is formulated. Section 3, describe the methodology of the designed optimization technique known as FO-PSO with entropy metric, along with graphical abstract and pseudo-code of presented optimizer. In Section 4, simulation outcomes and discussion is presented for the proposed technique along with comparative analysis through statistics, while the last section of paper summarizes the conclusions.

2. Problem Formulation

This section briefs the mathematical model of objectives functions including the P l o s s minimization, VPI improvement and overall cost minimization, as given below.

2.1. System P l o s s Minimization

The system P l o s s is calculated by means of the following expression [6,15,23].
A 1 = P L o s s = h 1 m l g h V a 2 2 × V a V b cos δ a δ b + V b 2
where m l represents the no. of transmission lines, V a , V b and δ a , δ b represents magnitude and phase angle of voltage at the end buses a and b of h t h line and g h used to represent the conductance of the h t h line of standard bus system. Data for standard IEEE (100 MVA base) 30-bus system is given in Table 3, Table 4, Table 5 and Table 6 for reference.

2.2. Improvement of Voltage Profile (VPI)

Voltage Profile Index (VPI) can be enhanced by limiting the load bus deviations from 1.0 per unit system. Mathematically, the fitness function of VPI is stated as [6,23].
A 2 = j ϵ M L V j 1.00
where M L represents the no. of load buses.

2.3. Operating Cost Minimization

This fitness function for operating cost minimization includes the cost due to energy loss in the power systems which can be expressed as:
C t o t a l = C E n e r = P l o s s × 0.06 × 1000 × 24 × 365
C E n e r = P l o s s × 525 , 600
where we can fix the following values. Installation cost of shunt capacitor as per market study is approximately 1000 USD. Cost incurred in power system due to energy loss is approximately 0.067 USD/kWh. Furthermore, there is total 365 days in a year and 24 h in a single day.

2.4. System Constraints

System Constraints are divided into the following:

2.4.1. Equality Constraints

The P and Q power balance relationships are adopted as equality constraints in ORPD studies. The mathematical representation of these expressions are formulated below:
V a b = 1 K B V b G a b cos δ a δ b + B a b sin δ a δ b P D a + P G a = 0
V a b = 1 K B V b G a b sin δ a δ b B a b cos δ a δ b Q D a + Q G a = 0
where G a b and B a b denotes the standard bus system line conductance and susceptance between ath and bth bus. Moreover, a = 1 , K B where K B represents the no. of system buses, Q G denotes the generator output Q, P G denotes the generated P, Q D represents the demanded Q, P D represent the demanded P.

2.4.2. Inequality Constraints

It includes the following:
  • Shunt Capacitor ( Q d ) limits, which are restricted by boundaries as follows:
    Q d k m i Q d k Q d k m x , k = 1 , , M d
  • Transformer tap setting ( T k ) , which are restricted by boundaries as follows:
    T k m i T k T k m x , k = 1 , , M T
  • Generator Voltages ( V G ) and output reactive power Q which are restricted by boundaries as follows:
    V G k m i V G k V G k m x , k = 1 , , M G
    Q G k m i Q G k Q G k m x , k = 1 , , M G

3. Methodology

The developed algorithm in the present study is based on FO-PSO with entropy metric to solve the optimization problems during RPD in standard 30 and 57-bus networks. This section is divided into two sub-sections; in first sub-section, a brief outline of proposed technique known as FO-PSO with entropy metric and its mathematical derivation is presented. Then, in second sub-section, the work flow of proposed optimization technique for solving ORPD problem along with pseudo-code and its allied clarifications are presented while the graphical abstract of the proposed scheme is shown as depicted in Figure 4.

3.1. Overview of FO-PSO with Entropy Metric

FO-PSO with entropy metric is a transformational stochastic model that extends PSO scheme [55,58,59,60,61] exploiting the function of typical selection in practical application, was established to improve the PSO limit in order to escape the local optima [15]. The proposed scheme has the capability to resolves variety of practical problems encountered by system operators in power systems due to its high solution quality and superior convergence rate characteristics then traditional model.

3.1.1. Fractional PSO

Fractional calculus (FC) hypothesis is a useful tool for applied science [58,62,63,64,65] and has put considerable effort into enhancing the performance several applied algorithms used for filtering, identification, pattern recognition, reliability, controllability, observability and strength. In this research proposal, another optimization algorithm called fractional-order PSO with entropy metric computation is used to study the RPD problem.
In recent days the application of FC with stochastic function has opened new venues of research in power and engineering sector for specialists, e.g., power sector, fluid mechanics, engineering, and others. Mathematically, the FC can be derived in light of Grunewald-Letnikov definition which dependent on idea of fractional differential equation with fractional coefficient β C of function f (t) is stated as:
X β f t = lim J 0 1 J β m = 0 + 1 m γ β + 1 f t m J γ β m + 1 γ m + 1
where gamma function is denoted by γ [62]. The above stated equation possesses a significant property which suggests a finite arrangement known as integer-order derivative. Along these lines, whole number subsidiaries are “nearby” functions while fractional derivatives functions possess a “memory” of every previous occasion. However, after the elapse of certain time period the influence of past events diminishes. Based on Equation (11):
X β f t = 1 T s β m = 0 Z 1 m γ β + 1 f t m T γ m + 1 γ β m + 1
where sampling period of time is represented by T s and Z denotes the truncation order of function. This mathematical model is appropriate to depict phenomena of chaos and irreversibility because of its in-built memory property function.
Let assume the sampling period T s = 1 based on scientific work proposed in research article [58], the following mathematical expression of the function can be defined:
X β v t + 1 m = ρ 1 r 1 g ˘ t m x t m + ρ 2 r 2 x ˘ t m x t m + ρ 3 r 3 n ˘ t m x t m
Comparable outcomes for r 4 are obtained while performing initial test on the scheme proposed in the literature. Similarly, the mathematical prerequisites of the scheme proposed increment with r linearly. Subsequently, for r = 4 order Equations (12) and (13) will be revised as Equation (14):
v t + 1 m = β v t m + 0.5 × β v t 1 m + 0.1666 × β 1 β v t 2 m + 0.04166 × β 1 β 2 β v t 3 m + ρ 1 r 1 g ˘ t m x t m + ρ 2 r 2 x ˘ t m x t m + ρ 3 r 3 n ˘ t m x t m
The coefficients β , ρ 1 , ρ 2 and ρ 3 allocate weights to the proposed scheme inertial influence, p b e s t and the g b e s t while updating the new velocity and position of the optimizer, respectively. Normally, the value of inertial influence is close to 1 (slightly less than one in most cases). Based on the various characteristics of the scheme and the application of the problem, optimal setting of these parameters will improve the outcome of the proposed model. Furthermore, the parameters r 1 , r 2 and r 3 represents the random vectors generally between 0 and 1.
From Equation (14), FO-PSO will be considered similar to a specific instance of the traditional PSO when fractional coefficient β = 1 (without “memory”). Despite the fact that this new model joins the idea of FC, the difficulty to comprehend the fractional coefficient β influence still remains. Defined in literature [61,66], the behavior of the swarm can be separated in two exercises: First is related to abuse and second is related to investigation. The highlighted first exercise is related to convergence of the scheme while permitting a decent transient exhibition. However, in the event when the level of exploitation is excessively high, at that point the optimization model has the chance to get stuck on local outcome. The subsequent one translates the diversification of the model, while permitting the investigation of new solutions, resulting in the overall improvement of the scheme performance. However, the optimization model FO-PSO will take too much time and effort during the processing to find the best global result if the scheme level of exploration is excessively high.
The major trade-off between both the exploration and exploitation in traditional PSO has ordinarily been taken care by altering the inertial weight of the associated swarm which is also being exhibited by the Eberhart and Shi in his research article [67]. Furthermore, to enhance the activity of exploration an enormous inertial weight can be used while for exploitation the inertial weight should be minimal in order to get the best possible results. Since FO-PSO control and improve the convergence rate of the swarm through integration of FC concept with traditional PSO. Therefore, to get the best global outcome from the scheme significant level of the investigation has been carried out to define the fractional coefficient β .
This stochastic scheme is not much explored in the field of power sector specially in case of RPD problem. However, few researchers have employed this technique recently to RPD problem to get promising results [6,23] but the concept of entropy metric utilized in the internal solver of the model is not yet explored. So, we are going to propose this concept in order to get the advantage of both the techniques by improve the convergence rate of scheme and also discourages the premature convergence phenomenon encountered in some cases.
The concept of entropy with FO-PSO with entropy metric will be new domain for various researcher in the field of power and applied engineering sector specifically to address RPD problem to get the optimal results.

3.1.2. Entropy

Entropy is defined as quantitative measure of system transformation from ordered to disorder state [68,69,70]. Various explanations have been proposed consistently for entropy over the years some of which are state as freedom, chaos, measure of disorder, issue, mixing, tumult, spreading, opportunity and information data [71]. This concept is widely utilized in field of statistical mechanics, engineering and thermodynamics; however it describes the amount of data transmitted in a signal or activity performed. An instinctive understanding of the entropy with pre-defined distribution of probability relates to the amount of ambiguity about an event performed. In order to measure information loss in any event or activity a renowned information hypothesis developed by Shannon has been adopted by researchers as a reference in order to carry forward their investigation [55].
The essential depiction of entropy was proposed by Boltzmann to portray various transition of systems states. The phenomenon of spreading was implemented by Guggenheim to exhibit scattering imperativeness structure framework. Shannon portrayed H [72] as an extent of choice, and information:
H J = M c j ϵ J p i j log p i j
The parameter M c is a positive constant which is normally equal to 1. Moreover, probability distribution p(k) is termed as a discrete random variable j ϵ J . This can also be easily extended to random multi variables. For two variables j , k ϵ J , K entropy is defined as:
H J , K = M c j ϵ J k ϵ K p i j , k log p i j , k
The introduction of entropy concept in FO-PSO algorithm will improve the optimizer rate of convergence as well as also avoiding premature convergence. In a second phase, the behavior of optimization technique FO-PSO is being influenced by the entropy signal, namely the updation of the velocity as shown in Figure 5, along the implementation for improving its rate of convergence.
Certainly, entropy exhibit the disorder of a employed system, i.e., a gauge of how speed up particles are within a system. Keeping in view, it is considered the velocity v x of any swarm particle and the velocity of best global particle. Each probability p x , is given by the velocity of particle x to the velocity of best global particle over the maximum possible velocity. Therefore, the probability is expressed as:
p x = v x v m x
where v m x denotes the maximum possible velocity for a particle. The Shannon particle diversity index, for a n swarm size, is based in quantification process and can be represented as:
H J = j = 1 p i j log p i j
Entropy integrated with FO-PSO is proposed to promote the evaluation process of the model towards the best possible global optima. Comparison with several schemes have been undertaken to observe the performance of proposed model. The core motivation behind the use of entropy metric with FO-PSO is to improve the velocity updating mechanism of traditional algorithm by enhancing the convergence rate in order to attain the best possible optimal outcomes.

3.2. Application of FO-PSO with Entropy Metric in ORPD

The key variation in proposed optimization technique known as FO-PSO with entropy from traditional PSO is the utilization of fractional derivative component along with introduction of entropy in the internal solver of algorithm to update swarm velocity. In the proposed mechanism, the computational efficacy of FO-PSO with entropy metric is proved by solving the ORPD problems in 30 and 57 Bus networks by minimizing the power losses of system, improving the voltage profile index (VPI) and minimizing the operating cost of power system. The application of FO-PSO with entropy metric by means of process stages is illustrated in Algorithm 1.
Algorithm 1 Pseudo-code for FO-PSO with entropy metric to solve Optimal Reactive Power Dispatch (ORPD) problem.
 1:
procedureIn steps with input and outputs
 2:
 
 3:
Inputs: Set swarm particles size, function iterations, bus, branch and generator data for IEEE Standard Test Bus System i.e., 30 Bus system with 13 control variables and 57-Bus system with 25 control variables
 4:
 
 5:
Objective Functions: The objective functions of this study are:
  • Power Loss Minimization
  • Improvement of Voltage Profile Index (VPI)
  • Operating Cost Minimization
 6:
Output: Minimum loss of power as define in Equation (1), improved Voltage Profile Index(VPI) as define in Equation (2) and minimum operating cost as defined in Equation (3)
 7:
 
 8:
Start FO-PSO with Entropy Metric
 9:
 
 10:
Step 1: Initialization: Randomly generated initial swarm A, known as particle in n-dimensional search space:
A = [ T x 1 , T x 2 , T n t , V x 1 , V x 2 , V n v , Q x 1 , Q x 2 Q n q ]
  • Each swarm particle comprises of equal entries as no. of decision variables in the IEEE standard bus systems, which are to be optimized.
  • Randomly initialize velocity V k and position X k
  • The entry of swarm is based on random generation within the defined lower and upper limit of independent decision variable of data set. Mathematically ith member of swarm is set as:
    A i , j ( 0 ) = ( A j v A j v ) × r a n d ( 0 , 1 ) + A j L
    where, rand(0,1) demonstrates the pseudo-random real numbers between 0 and 1. Setting parameters of proposed optimization algorithm is mentioned in Table 7 and Table 8
 11:
 
 12:
Step 2: Fitness evaluation: Evaluate the fitness of each particle (P) of the swarm using Equation (1) for system P l o s s minimization, Equation (2) for improvement of voltage profile (VPI) and Equation (3) for operating cost minimization
 13:
 
 14:
Step 3: Termination Criterion: Stopping criteria of the proposed algorithm is based on the following factors:
  • Tolerance limit attains, i.e., predefine difference between current and previous best attained
  • On execution of Total number of set iterations i.e., i=1,2…, 100
  • If the algorithm exceeds the predefine limits of control variables
Go to Step 5 if termination criteria is satisfied
 15:
 
 16:
Step 4: Algorithm Updating Mechanism: FO-PSO with entropy metric algorithms is updated on the basis of two mechanisms that are particle position using Equation (21) as:
x ( n , j + 1 ) = x ( n , j + 1 ) + x ( n , j )
and updating velocity using Equation (22) as:
v t + 1 m = β v t m + 0.5 × β v t 1 m + 0.1666 × β 1 β v t 2 m + 0.04166 × β 1 β 2 β v t 3 m + ρ 1 r 1 g ˘ t m x t m + ρ 2 r 2 x ˘ t m x t m + ρ 3 r 3 n ˘ t m x t m
The coefficients β , ρ 1 , ρ 2 and ρ 3 allocate weights to the proposed scheme inertial influence, p b e s t and the g b e s t while updating the new velocity and position of the optimizer, respectively. Update global best and local best for each particle and go to Step 2
 17:
 
 18:
Step 5: Storage: Store the parameter of g b e s t particle on the basis of objective functions
 19:
 
 20:
Step 6: Analysis: Repeat Steps 1 to 5 for different value of fractional order α in the algorithm for detailed statistical analysis of the results
 21:
 
 22:
Step 7: Replication: Repeat the Steps 1 to 6 for 30 an 57 bus networks
 23:
 
 24:
End of FO-PSO with Entropy Metric
 25:
 
 26:
Step 8: Statistics: Repeat the algorithm from Steps 1 to 7 for several autonomous trials in order to analyze detailed performance of FO-PSO with entropy metric for optimal RPD systems

4. Simulation Results and Discussion

To validate the capability and efficacy of the proposed optimization technique known as FO-PSO with entropy metric, it has been tried and tested for problem of ORPD in standard 30 and 57 Bus networks with 13 and 25 variables. The FO-PSO with entropy metric method have been employed in MATLAB R2017b and the simulations are being performed on a PC core i5 having 8 GB RAM. The swarm size for the proposed technique is set to be 20 and 13 in case of standard 30 and 57 bus networks, respectively. The parameter settings used during the execution of algorithm evolution for 30 and 57 bus networks are listed in Table 7 and Table 8 accordingly.
Table 7. FO-PSO with entropy metric parameter settings of 30-bus system.
Table 7. FO-PSO with entropy metric parameter settings of 30-bus system.
ParametersParameters Setting Value of Standard 30 Bus System
(13 Variables)
Minimization of P loss Improvement of VPIOperating Cost Minimization
Fractional Order0.30.40.7
Vmx2.042.042.04
Factor of Local Acceleration0.90–0.100.90–0.100.90–0.10
Factor of Global Acceleration0.10–0.900.10–0.900.10–0.90
Inertia Weight0.90–0.200.90–0.200.90–0.20
Particle Size or Decision Variables131313
Iterations During Statistics603080
Swarm Size202020
Table 8. FO-PSO with entropy metric parameter settings of 57-bus system.
Table 8. FO-PSO with entropy metric parameter settings of 57-bus system.
ParametersParameters Setting Value of Standard 57 Bus System
(25 Variables)
Minimization of P loss Improvement of VPIOperating Cost Minimization
Fractional Order0.90.30.7
Vmx2.042.042.04
Factor of Local Acceleration0.90–0.100.90–0.100.90–0.10
Factor of Global Acceleration0.10–0.900.10–0.900.10–0.90
Inertia Weight0.90–0.200.90–0.200.90–0.20
Particle Size or Decision Variables252525
Iterations During Statistics6030100
Swarm Size13135
The outcomes of the proposed optimizer technique is demonstrated in the relevant results tables in order to depicts the strength, capabilities and reliability in comparison to other state of the art techniques. The results obtained after implementation of FO-PSO with entropy metric technique in case of 30 bus and 57 bus system are duly compared with other optimization techniques results that have been directly taken from corresponding research publications of ORPD problems. Furthermore, the lower and upper limits of control variables are duly listed in Table 9.

4.1. ORPD for Standard 30-Bus System with 13 Variables

For contextual analysis, total 13 control variables of 30 bus system need to be optimized which includes four tap changer transformers (T), three compensator devices ( Q c ) , and six voltages of generator ( V G ) . To evaluate total actual losses incurred in power system, the proposed optimization algorithm is employed for ORPD in standard 30 bus system with 13 variables. The single line diagram of the same system has been depicted as Figure 2. The obtained outcomes are then duly compared and analyzed with similar problems reported outcomes of literature. The decision variables reported in these research studies of ORPD problems are delineated into the similar mathematical regime of MATPOWER [6,74] for a purpose to validate impartial comparison of the compared optimization techniques.
Table 9. Limits of control variables [38,75].
Table 9. Limits of control variables [38,75].
Control or Decision VariablesLower LimitUpper Limit
IEEE 30-Test Bus System
Shunt VAR Compensators (MVar)−1236
Generator Voltages (p.u)0.91.1
Setting of Transformer Tap Changer (p.u)0.9501.050
IEEE 57-Test Bus System
Shunt VAR Compensators (MVar)020
Generator Voltages (p.u)0.941.06
Setting of Transformer Tap Changer (p.u)0.9001.100
Attained actual value of power system losses after implementation of FO-PSO with entropy metric algorithm is compiled in Table 10 along with reported values of power losses from other algorithms including PSO [76], HSA [14], GA [17], IWO [18], SGA [77], ICA [78], MICA-IWO [78], DE [23,79], R-DE [80], C-PSO [80], SFLA [81] and PSO-TVAC [82]. For effective assessment, all the compiled outcomes of line losses in 30 bus system with 13 decision variables in Table 10 are being examined using MATPOWER load flow.
It was observed that actual losses incurred by applying FO-PSO with entropy metric algorithm in case of 30 bus system are 4.628 MW, found to be 18.28% curtailed than the initial value while in contrast to the counterparts, the DE, HSA, GA, C-PSO, R-DE, GA, IWO, MICA-IWO, ICA, SFLA and PSO-TVAC provides 13.68%, 9.78%, 17.35%, 17.58%, 13.87%, 13.12%, 14.42%, 14.37%, 17.25% and 18.23% respectively as shown in Table 11.
In this case the results obtained by implementing the proposed technique known as FO-PSO with entropy metric stipulates preferable outcomes in tackling the ORPD problems and also remained within their identified boundaries. The learning curves of 30 bus test system are plotted in Figure 6, Figure 7 and Figure 8 showing the best, average and worst iterative updates of fitness function i.e., minimization of Power Losses, Cost Function and Voltage Profile Index (VPI) during 100 independent trials for α = 0.1, …, 0.9. Moreover, efficacy of proposed optimization algorithm can be evaluated by observing the learning power curves of fitness functions where the best results are obtained at fractional order α = 0.3 in case of power loss, α = 0.4 in case of voltage profile index improvement and α = 0.7 in case of operating cost minimization functions as shown in Figure 6, Figure 7 and Figure 8.
The proposed technique is also tested for fitness function of voltage profile improvement of power system and outcomes of simulation depicts that designed optimizer is considerably effective than other methods. The results achieved by the FO-PSO with entropy metric technique and some other state of the art algorithms such as SGA [77], PSO [77], NGBWCA [15], HSA [77], FA [33], BFOA [33], GWO [77], MFO [77] and OGSA [15] have been tabulated in Table 12.
Table 10. Comparison of optimized variable for 30-bus system with 13 decision variables.
Table 10. Comparison of optimized variable for 30-bus system with 13 decision variables.
Decision
Variables
Published OutcomesPresent
PSO
[77]
HSA
[14]
GA
[17]
IWO
[18]
SGA
[77]
ICA
[78]
MICA-IWO
[78]
DE
[23,79]
R-DE
[80]
C-PSO
[80]
SFLA
[81]
PSO-
TVAC [82]
FO-PSO
with Entropy
Transformer Tap Ratio (T)
T6-90.9701.0101.0221.0500.9501.0801.0301.0181.0500.9900.9840.9751.022
T6-101.0201.0000.9910.9600.9800.9500.9900.9790.9001.0501.0200.9271.046
T4-121.0100.9900.9960.9701.0401.0001.0000.9771.0000.9900.9870.9991.015
T27-280.9900.9700.9710.9701.0200.9700.9801.0090.9700.9601.0080.9641.011
Generator Voltages (Vg)
V11.0311.0721.0721.0691.1001.0781.0791.0951.1001.1001.0951.0971.103
V21.0111.0621.0631.0601.0421.0691.0701.0851.0941.1001.0911.0871.101
V51.0221.0391.0371.0361.0321.0691.0481.0621.0701.0741.0791.0661.076
V81.0031.0421.0441.0380.9811.0471.0481.0651.0731.0861.0701.0701.080
V110.9741.0311.0131.0290.9761.0341.0751.0261.0651.1001.0841.0671.1083
V130.9981.0681.0891.0551.1001.0711.0701.0141.0961.1001.0991.0991.1076
Capacitor Banks (Qc)
Qc317345.350812−6−720.223109NPNP4.7645
Qc1013123635−1036239.58430.260.303.9651.03034.182
Qc24231012.4171130111213.0290.1284.2054.65311.458
Ploss5.8815.1094.8774.926.5314.8494.8464.8884.6674.6804.6864.6484.628
Note: NP stands for Not Provided.
Table 11. % Power loss reduction in standard 30-bus system with 13 decision variables.
Table 11. % Power loss reduction in standard 30-bus system with 13 decision variables.
ItemsBase CaseDE
[23,79]
HSA
[14]
C-PSO
[80]
R-DE
[80]
GA
[17]
IWO
[18]
MICA-IWO
[78]
ICA
[78]
SFLA
[81]
PSO-TVAC
[82]
FO-PSO
with Entropy
Ploss (MW)5.6634.8885.1094.6804.6674.8774.9204.8464.8494.6864.6484.628
Loss reduction (%)-13.6809.78017.35017.58013.87013.12014.42014.37017.25018.2318.280
Table 12. Comparison of voltage profile index (VPI) for standard 30-bus system with 13 decision variables.
Table 12. Comparison of voltage profile index (VPI) for standard 30-bus system with 13 decision variables.
ItemsPublished OutcomesPresent
SGA
[77]
PSO
[77]
NGBWCA
[15]
HSA
[77]
FA
[33]
BFOA
[33]
GWO
[77]
MFO
[77]
OGSA
[15]
FO-PSO
with Entropy
VPI (p.u)0.15010.14240.47730.13490.11570.14900.12600.12150.80850.1131

4.2. ORPD for Standard 57-Bus System Having 25 Variables

In this section, Standard 57-bus system with 25 decision variables system is being utilized to evaluate the efficacy of proposed technique known as FO-PSO with entropy metric. This ORPD problem will be handled as a search space of 25-dimension having 7 generator voltages (at buses B1, B2, B3, B6, B8, B9 and B12), 3 reactive power sources (at buses B18, B25 and B53) and 15 transformer taps. The single line diagram of the same system has been depicted as Figure 3. The optimization variables are obtained implementation of proposed technique in case of 57 bus system and then outcomes are collated with already established algorithms while keeping the Q and voltage constraints within the allowed limits.
Moreover, all the constraints of Q and voltage are scrutinized and not being violated. The corresponding outcomes obtained from simulations are recorded in Table 13 along with the previously published outcomes of other techniques in case of ORPD.
The attained value of P l o s s = 26.3956 MW after employment of proposed optimization algorithm which is 5.268% lower than the initial value and demonstrates a good undertaking of ORPD problem while in contrast to other counterparts such that PSO, ICA, ICA-PSO hybrid, FO-DPSO and DSA that provides 0.077%, 2.651%, 2.399%, 4.248% and 0.587% respectively, as illustrated in Table 14. In this case the results obtained by implementing the proposed technique stipulates preferable outcomes in tackling the ORPD problems and also remained within their identified boundaries.
In this case the results obtained by implementing the proposed technique stipulates preferable outcomes in tackling the ORPD problems and also remained within their identified boundaries. Moreover, the results of the simulation performed suggests by observing the learning power curves of fitness functions where the best results are obtained at fractional order α = 0.9 in case of power loss, α = 0.3 in case of voltage profile index improvement and α = 0.7 in case of operating cost minimization functions as shown in Figure 9, Figure 10 and Figure 11. Hence, the efficacy and computational distinction of proposed optimization scheme in case of undertaking the ORPD problem over the counterparts is clear from the comparative analyses.
Table 13. Comparison of optimized variable for 57-bus system with 25 decision variables.
Table 13. Comparison of optimized variable for 57-bus system with 25 decision variables.
Decision
Variables
Published OutcomesPresent
PSO
[75]
OGSA
[15]
WCA
[15]
ICA
[75]
Hybrid
[75]
NGBWCA
[15]
FO-DPSO
[6]
DSA
[83]
FO-PSO
with Entropy
Transformer Tap Ratio (T)
T4-180.975430.98331.02170.95840.92651.01850.90.94801.0459
T4-180.97160.95030.96140.93090.95320.96010.92091.02301.0252
T21-201.02860.95230.94961.02691.01650.94581.02681.02101.0230
T24-261.01831.00360.99011.00851.00710.99191.00750.96601.0231
T7-290.94010.97780.99860.90.94140.99510.90700.92701.0289
T34-320.940.91460.90000.98720.95550.90000.98710.90001.0415
T11-410.97610.94540.96340.90970.90320.96220.90100.90001.0100
T15-450.92110.92650.90630.93770.93560.90580.90.97701.0213
T14-460.91650.99600.98010.91660.91720.97640.90.99201.0283
T10-510.90441.03861.06310.90570.93371.06000.91650.90001.0094
T13-490.91180.90600.91310.90.90.91000.90.95301.0359
T11-430.920.92340.92940.90.92060.93020.90.95301.0302
T40-560.98910.98710.97820.95751.00420.97700.99801.01601.0315
T39-570.9431.01321.02861.04761.02971.02710.99450.90001.0395
T9-550.99980.93720.90530.90.92940.90000.90.98001.0409
Generator Voltages (Vg)
V11.02841.01381.02421.061.03951.01511.041.01701.088
V21.00440.96080.99531.03881.02590.98101.02980.95001.0805
V30.98441.01731.00981.00781.00771.00021.00991.06001.0825
V60.98720.98981.01760.96880.99821.00390.97761.03401.0802
V81.02621.03621.02680.97151.01581.01980.98551.01401.0862
V90.98341.02411.02830.95560.9851.02540.96761.06001.0799
V120.98441.01361.01250.98910.99661.00810.90811.00901.0824
Capacitor Banks (Qc)
Qc1890.04630.059309.98460.055040.00634.8939
Qc257.01850.05900.059110100.0590150.10004.8324
Qc535.03870.06280.03829.5956100.038111.6780.09486.4528
Ploss27.84232.3430.0227.12527.19529.2026.68027.70026.3956
Table 14. % Power loss reduction in standard 57-bus system with 25 decision variables.
Table 14. % Power loss reduction in standard 57-bus system with 25 decision variables.
ItemBase CasePSO
[75]
ICA
[75]
ICA-PSO
Hybrid [75]
FO-DPSO
[6]
DSA
[83]
FO-PSO
with Entropy
Ploss (MW)27.863727.84227.12527.19526.68027.70026.395
Loss reduction (%)-0.0772.6512.3994.2480.5875.268
The proposed technique is also tested for fitness function of voltage profile improvement of power system and outcomes of simulation depicts that proposed optimizer is more promising than other techniques which is duly stated in Table 15.

4.3. Comparative Study through Statistics

The demonstration of statistical illustrations are provided in this section to endorse consistent optimization inferences on account of designed optimization algorithm known as FO-PSO with entropy metric for optimal RPD problems. Therefore, the proposed optimization algorithm is executed for Hundred independent runs considering the best α for 30 and 57 Bus standard networks. The outcomes of statistical analysis, by means of minimum fitness evaluation function, probability charts of CDF, histogram studies, box plots, probability plot illustrations and quantile–quantile plot illustrations are presented in Figure 12, Figure 13, Figure 14, Figure 15, Figure 16 and Figure 17 for ORPD in standard electric networks.
In all case studies of optimal RPD presented in Figure 12a, Figure 13a, Figure 14a, Figure 15a, Figure 16a and Figure 17a show the minor distinction and also established reasonable accuracy and efficacy of FO-PSO with entropy metric optimization algorithm in each independent run. Furthermore, in Figure 12b, Figure 13b, Figure 14b, Figure 15b, Figure 16b and Figure 17b, probability charts demonstrate an ideal normal distribution of fitness values for all the cases which prove the precise optimization of the FO-PSO with entropy metric. The histogram illustrations presented in Figure 12c, Figure 13c, Figure 14c, Figure 15c, Figure 16c and Figure 17c for all ORPD scenarios illustrates that majority of the independent run of FO-PSO with entropy metric provide minimum gauges of P l o s s . As provided in Figure 12d, Figure 13d, Figure 14d, Figure 15d, Figure 16d and Figure 17d the probability plots for CDF shows that 80% of the independent runs of proposed algorithm gives P l o s s inferior to 5.2 MW and 26.9 MW 30 and 57 bus networks, respectively. The outcomes of box plots in Figure 12e, Figure 13e, Figure 14e, Figure 15e, Figure 16e and Figure 17e for all cases of ORPD demonstrates that median of P l o s s is approximately 4.98 MW & 26.8 MW for 30 and 57 bus networks, respectively while the data spread is very close. The quantile–quantile plot presented in Figure 12f, Figure 13f, Figure 14f, Figure 15f, Figure 16f and Figure 17f show the ideal behavior of fitness versus the quantiles of a normal distribution for all cases of ORPD. All the above mentioned graphical illustrations of the statistical analysis carried for different ORPD scenarios demonstrate the efficacy, stability and robustness of proposed FO-PSO with entropy metric.

5. Conclusions

This paper proposed a new fractional swarm computing mechanism, namely, FO-PSO with entropy metric for the solution of ORPD problems for tuning the operational variables to reduce P l o s s , overall cost while improving the VPI and meeting the consumer’s power demand. The designed strategy is viably tested on standard electric networks including IEEE 30 and 57 bus. The yielded outcomes from the FO-PSO with entropy metric are compared with the results reported in literature by the other well established algorithms where in all the given scenarios the proposed method demonstrate best performance by mean of evaluating least P l o s s , overall cost and VPI in benchmark networks. Variants of FO-PSO with entropy metric are developed by adopting different fractional coefficients α = [ 0.1 , 0.2 , , 0.9 ] and tested on both standard systems with considerable precision; however, the best performance of FO-PSO with entropy metric is achieved at α = 0.3 for fitness function of power loss minimization, α = 0.4 for voltage profile improvement and α = 0.7 for operating cost minimization in case of 30-bus system. Similarly, in case of 57-bus system the best results of fitness functions are obtained at α = 0.9 , α = 0.3 and α = 0.7 for power loss minimization, voltage profile improvement and operating cost minimization, respectively. The efficacy of developed algorithms is endorsed through outcomes of statistics by means of the iterative updates depictions, cumulative distribution, histograms charts and quantile–quantile probability illustrations based on sixty independent trials of proposed algorithm adopting α = 0.3 for all test systems which demonstrate the stable, robust and consistent nature of FO-PSO with entropy metric as an alternate, precise and promising computational technique. In the adopted scenarios, the developed algorithm has computed minimum losses, voltage deviation index, and overall cost in comparison with existing methods while adopting the same standard test system. In fact, fractional calculus has appeared as a mathematical tool to improve the performance of traditional PSO algorithm pertaining the main reason for its improved performance.
It should be noted that the better performance of the proposed FO-PSO with entropy metric is achieved for particular/selected cases of ORPD in terms of computing minimum value of objective functions compared to those, yielded/reported by other algorithms; however, there may be some situations in which other methods perform comparably or even marginally better. Indeed, theoretical analysis for a proper justification of the improved performance is always difficult, stiff, challenging, and complex task. Therefore, a stochastic process is adopted in the presented study for performance evaluation by means of statistical assessments based on Monte Carlo simulations, so, one should also investigate to provide theoretical analysis with proper mathematical justification. There are some situations with fractional orders α in [0-1] where the other methods perform comparably or even better; however, in the present study we have documented those situations with fractional orders only where the algorithm performs better than other algorithms in terms of computing minimum fitness evaluation function and suggested a solution for the readers and system operators.
In future one may design new variants of canonical algorithms based on synergy the of both the entropy and fractional calculus to improve the optimization characteristics and apply them to other problems of the energy sector.

Author Contributions

Conceptualization, M.W.K., Y.M. and M.A.Z.R.; Methodology, M.W.K. and Y.M.; Software, M.W.K. and F.U.; Investigation, M.W.K. and Y.M.; Resources, M.W.K.; Writing—original draft preparation, M.W.K.; Writing—review and editing, Y.M., M.A.Z.R., F.U. and N.I.C.; Visualization, M.W.K. and Y.M.; Supervision, Y.M., N.I.C. and M.A.Z.R.; Project administration, Y.H.; Funding acquisition, Y.H. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the National Natural Science Foundation of China under Grant No. 51977153, 51977161, 51577046, State Key Program of National Natural Science Foundation of China under Grant No. 51637004, National Key Research and Development Plan “important scientific instruments and equipment development” Grant No. 2016YFF010220, Equipment research project in advance Grant No. 41402040301.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. El Ela, A.A.; Abido, M.A.; Spea, S.R. Optimal power flow using differential evolution algorithm. Electr. Eng. 2009, 91, 220–224. [Google Scholar]
  2. Vaisakh, K.; Kanta, R.P. Differential Evolution Based Optimal Reactive Power Dispatch for Voltage Stability Enhancement. J. Theor. Appl. Inf. Technol. 2008, 638–646. Available online: http://citeseerx.ist.psu.edu/viewdoc/download;jsessionid=9108925C8D1F3102090A85E8B4B3515B?doi=10.1.1.208.2692&rep=rep1&type=pdf (accessed on 18 August 2020).
  3. Liu, Y.; Shang, T.; Wu, D. Improved differential evolution for solving optimal reactive power flow. In Proceedings of the 2009 Asia-Pacific Power and Energy Engineering Conference, Wuhan, China, 28–30 March 2009; pp. 1–4. [Google Scholar]
  4. Balamurugan, R.; Subramanian, S. Self-adaptive differential evolution based power economic dispatch of generators with valve-point effects and multiple fuel options. Fuel 2007, 1, 543–550. [Google Scholar]
  5. Bakare, G.A.; Krost, G.; Venayagamoorthy, G.K.; Aliyu, U.O. Differential evolution approach for reactive power optimization of Nigerian grid system. In Proceedings of the 2007 IEEE Power Engineering Society General Meeting, Tampa, FL, USA, 24–28 June 2007; pp. 1–6. [Google Scholar]
  6. Muhammad, Y.; Khan, R.; Ullah, F.; ur Rehman, A.; Aslam, M.S.; Raja, M.A.Z. Design of fractional swarming strategy for solution of optimal reactive power dispatch. Neural Comput. Appl. 2020, 32, 10501–10518. [Google Scholar] [CrossRef]
  7. Kirschen, D.S.; Van Meeteren, H.P. MW/voltage control in a linear programming based optimal power flow. IEEE Trans. Power Syst. 1988, 3, 481–489. [Google Scholar] [CrossRef]
  8. Sergio, G. Optimal reactive dispatch through interior point methods. IEEE Trans. Power Syst. 1994, 9, 136–146. [Google Scholar]
  9. Quintana, V.H.; Santos-Nieto, M. Reactive-power dispatch by successive quadratic programming. IEEE Trans. Energy Convers. 1989, 4, 425–435. [Google Scholar] [CrossRef]
  10. Durairaj, S.; Devaraj, D.; Kannan, P.S. Genetic algorithm applications to optimal reactive power dispatch with voltage stability enhancement. J. Inst. Eng. India Part Electr. Eng. Div. 2006, 87, 42. [Google Scholar]
  11. James, K.; Russell, E. Particle swarm optimization. In Proceedings of the ICNN’95—International Conference on Neural Networks, Perth, Australia, 27 November–1 December 1995; Volume 4, pp. 1942–1948. [Google Scholar]
  12. Zhao, B.; Guo, C.X.; Cao, Y.J. A multiagent-based particle swarm optimization approach for optimal reactive power dispatch. IEEE Trans. Power Syst. 2005, 20, 1070–1078. [Google Scholar] [CrossRef]
  13. Mollazei, S.; Farsangi, M.M.; Nezamabadi-pour, H.; Lee, K.Y. Multi-objective optimization of power system performance with TCSC using the MOPSO algorithm. In Proceedings of the 2007 IEEE Power Engineering Society General Meeting, Tampa, FL, USA, 24–28 June 2007; pp. 1–8. [Google Scholar]
  14. Khazali, A.H.; Kalantar, M. Optimal reactive power dispatch based on harmony search algorithm. Int. J. Electr. Power Energy Syst. 2011, 33, 684–692. [Google Scholar] [CrossRef]
  15. Asghar, H.A.; Ali, A.R.; Rezaee, J.A. Gaussian bare-bones water cycle algorithm for optimal reactive power dispatch in electrical power systems. Appl. Soft Comput. 2017, 57, 657–671. [Google Scholar]
  16. Abido, M.A. Optimal power flow using tabu search algorithm. Electr. Power Components Syst. 2002, 30, 469–483. [Google Scholar] [CrossRef] [Green Version]
  17. Mahadevan, K.; Kannan, P.S. Comprehensive learning particle swarm optimization for reactive power dispatch. Appl. Soft Comput. 2010, 10, 641–652. [Google Scholar] [CrossRef]
  18. Barun, M.; Kumar, R.P. Optimal reactive power dispatch using quasi-oppositional teaching learning based optimization. Int. J. Electr. Power Energy Syst. 2013, 53, 123–134. [Google Scholar]
  19. Wu, Q.H.; Cao, Y.J.; Wen, J.Y. Optimal reactive power dispatch using an adaptive genetic algorithm. Int. J. Electr. Power Energy Syst. 1998, 20, 563–569. [Google Scholar] [CrossRef]
  20. Dai, C.; Chen, W.; Zhu, Y.; Zhang, X. Reactive power dispatch considering voltage stability with seeker optimization algorithm. Electr. Power Syst. Res. 2009, 79, 1462–1471. [Google Scholar] [CrossRef]
  21. Das, T.; Roy, R.; Mandal, K.K.; Mondal, S.; Mondal, S.; Hait, P.; Das, M.K. Optimal Reactive Power Dispatch Incorporating Solar Power Using Jaya Algorithm. Comput. Adv. Commun. Circuits Syst. 2020, 575, 37–48. [Google Scholar]
  22. Dharmbir, P.; Abhik, B.; Pratap, S.R. Optimal Reactive Power Dispatch Using Modified Differential Evolution Algorithm. Adv. Comput. Commun. Control. 2019, 41, 275–283. [Google Scholar]
  23. Abou El Ela, A.A.; Abido, M.A.; Spea, S.R. Differential evolution algorithm for optimal reactive power dispatch. Electr. Power Syst. Res. 2011, 81, 458–464. [Google Scholar] [CrossRef]
  24. Cai, H.R.; Chung, C.Y.; Wong, K.P. Application of differential evolution algorithm for transient stability constrained optimal power flow. IEEE Trans. Power Syst. 2008, 23, 719–728. [Google Scholar] [CrossRef]
  25. Abido, M.A.; Al-Ali, N.A. Multi-objective optimal power flow using differential evolution. Arab. J. Sci. Eng. 2012, 37, 991–1005. [Google Scholar] [CrossRef]
  26. Ettappan, M.; Vimala, V.; Ramesh, S.; Thiruppathy, K.V. Optimal Reactive Power Dispatch for Real Power Loss Minimization and Voltage Stability Enhancement using Artificial Bee Colony Algorithm. Microprocess. Microsyst. 2020, 76, 103085. [Google Scholar] [CrossRef]
  27. Aljohani, T.M.; Ebrahim, A.F.; Mohammed, O. Single and multiobjective optimal reactive power dispatch based on hybrid artificial physics–particle swarm optimization. Energies 2019, 12, 2333. [Google Scholar] [CrossRef] [Green Version]
  28. Li, Z.; Cao, Y.; Dai, L.V.; Yang, X.; Nguyen, T.T. Finding solutions for optimal reactive power dispatch problem by a novel improved antlion optimization algorithm. Energies 2019, 12, 2968. [Google Scholar] [CrossRef] [Green Version]
  29. Mugemanyi, S.; Qu, Z.; Rugema, F.X.; Dong, Y.; Bananeza, C.; Wang, L. Optimal Reactive Power Dispatch Using Chaotic Bat Algorithm. IEEE Access 2020, 8, 65830–65867. [Google Scholar] [CrossRef]
  30. Zhang, M.; Li, Y. Multi-objective optimal reactive power dispatch of power systems by combining classification-based Multi-objective evolutionary algorithm and integrated decision making. IEEE Access 2020, 8, 38198–38209. [Google Scholar] [CrossRef]
  31. Bhagwan, D.D.; Patvardhan, C. A new hybrid evolutionary strategy for reactive power dispatch. Electr. Power Syst. Res. 2003, 65, 83–90. [Google Scholar] [CrossRef]
  32. Wu, Q.H.; Ma, J.T. Power system optimal reactive power dispatch using evolutionary programming. IEEE Trans. Power Syst. 1995, 10, 1243–1249. [Google Scholar] [CrossRef]
  33. Abhishek, R.; Malakar, T. Optimal reactive power dispatch using hybrid Nelder–Mead simplex based firefly algorithm. Int. J. Electr. Power Energy Syst. 2015, 66, 9–24. [Google Scholar]
  34. Duman, S.; Güvenç, U.; Sönmez, Y.; Yörükeren, N. Optimal power flow using gravitational search algorithm. Energy Convers. Manag. 2012, 59, 86–95. [Google Scholar] [CrossRef]
  35. Taher, N.; Rasoul, N.M.; Rasoul, A.-A.; Bahman, B.-F. Multiobjective optimal reactive power dispatch and voltage control: A new opposition-based self-adaptive modified gravitational search algorithm. IEEE Syst. J. 2013, 7, 742–753. [Google Scholar]
  36. Tripathy, M.; Mishra, S. Bacteria foraging-based solution to optimize both real power loss and voltage stability limit. IEEE Trans. Power Syst. 2007, 22, 240–248. [Google Scholar] [CrossRef]
  37. Aniruddha, B.; Kumar, C.P. Solving complex economic load dispatch problems using biogeography-based optimization. Expert Syst. Appl. 2010, 37, 3605–3615. [Google Scholar]
  38. Herwan, S.M.; Zuriani, M.; Rusllim, M.M.; Omar, A. Using the gray wolf optimizer for solving optimal reactive power dispatch problem. Appl. Soft Comput. 2015, 32, 286–292. [Google Scholar]
  39. Amin, K.; Reza, E.M.; Mosayeb, B. Optimal coordinated design of UPFC and PSS for improving power system performance by using multi-objective water cycle algorithm. Int. J. Electr. Power Energy Syst. 2016, 83, 124–133. [Google Scholar]
  40. Abedi, P.S.M.; Alireza, A.; Ali, S.; Hoon, K.J. Gradient-based water cycle algorithm with evaporation rate applied to chaos suppression. Appl. Soft Comput. 2017, 53, 420–440. [Google Scholar]
  41. Asghar, H.A.; Ali, A.R.; Rezaee, J.A. An efficient chaotic water cycle algorithm for optimization tasks. Neural Comput. Appl. 2017, 28, 57–85. [Google Scholar]
  42. Pedram, G.; Micael, S.C.; Atli, B.J. A novel feature selection approach based on FODPSO and SVM. IEEE Trans. Geosci. Remote Sens. 2014, 53, 2935–2947. [Google Scholar]
  43. Yang, Q.; Chen, D.; Zhao, T.; Chen, Y. Fractional calculus in image processing: A review. Fract. Calc. Appl. Anal. 2016, 19, 1222–1249. [Google Scholar] [CrossRef] [Green Version]
  44. Ghamisi, P.; Couceiro, M.S.; Martins, F.M.; Benediktsson, J.A. Multilevel image segmentation based on fractional-order Darwinian particle swarm optimization. IEEE Trans. Geosci. Remote Sens. 2013, 52, 2382–2394. [Google Scholar] [CrossRef] [Green Version]
  45. Couceiro, M.S.; Martins, F.M.; Rocha, R.P.; Ferreira, N.M. Introducing the fractional order robotic Darwinian PSO. Aip Conf. Proc. 2012, 1493, 242–251. [Google Scholar]
  46. Haji, H.V.; Concepción, A.M. Fractional order fuzzy-PID control of a combined cycle power plant using Particle Swarm Optimization algorithm with an improved dynamic parameters selection. Appl. Soft Comput. 2017, 58, 256–264. [Google Scholar] [CrossRef]
  47. Wang, Y.-Y.; Huan, Z.; Qiu, C.-H.; Xia, S.-R. A Novel Feature Selection Method Based on Extreme Learning Machine and Fractional-Order Darwinian PSO. Comput. Intell. Neurosci. 2018, 2018, 5078268. [Google Scholar] [CrossRef] [PubMed]
  48. Zhu, Q.; Yuan, M.; Liu, Y.-L.; Chen, W.-D.; Chen, Y.; Wang, H.-R. Research and application on fractional-order Darwinian PSO based adaptive extended Kalman filtering algorithm. IAES Int. J. Robot. Autom. 2014, 3, 245. [Google Scholar] [CrossRef]
  49. Akbar, S.; Zaman, F.; Asif, M.; Rehman, A.U.; Raja, M.A.Z. Novel application of FO-DPSO for 2-D parameter estimation of electromagnetic plane waves. Neural Comput. Appl. 2019, 31, 3681–3690. [Google Scholar] [CrossRef]
  50. Paliwal, K.K.; Singh, S.; Gaba, P. Feature selection approach of hyperspectral image using GSA-FODPSO-SVM. In Proceedings of the 2017 International Conference on Computing, Communication and Automation (ICCCA), Greater Noida, India, 5–6 May 2017; pp. 1070–1075. [Google Scholar]
  51. Wang, Y.-Y.; Peng, W.-X.; Qiu, C.-H.; Jiang, J.; Xia, S.-R. Fractional-order Darwinian PSO-based feature selection for media-adventitia border detection in intravascular ultrasound images. Ultrasonics 2019, 92, 1–7. [Google Scholar] [CrossRef]
  52. Naoto, Y.; Pedram, G. Land-cover monitoring using time-series hyperspectral data via fractional-order darwinian particle swarm optimization segmentation. In Proceedings of the 2016 8th Workshop on Hyperspectral Image and Signal Processing: Evolution in Remote Sensing (WHISPERS), Los Angeles, CA, USA, 21–24 August 2016; pp. 1–5. [Google Scholar]
  53. Abdullah, A.; Baykant, A.B.; Gurkan, K.; Celaleddin, Y. Implementation of fractional order filters discretized by modified fractional order darwinian particle swarm optimization. Measurement 2017, 107, 153–164. [Google Scholar]
  54. Lopes António, M.; Tenreiro Machado, J.A. Entropy analysis of soccer dynamics. Entropy 2019, 21, 187. [Google Scholar] [CrossRef] [Green Version]
  55. Pires, E.J.S.; Machado, J.A.T.; de Moura Oliveira, P.B. Entropy diversity in multi-objective particle swarm optimization. Entropy 2013, 15, 5475–5491. [Google Scholar] [CrossRef] [Green Version]
  56. Machado, J.A. Entropy analysis of fractional derivatives and their approximation. J. Appl. Nonlinear Dyn. 2012, 1, 109–112. [Google Scholar] [CrossRef] [Green Version]
  57. Tenreiro Machado, J.A. Shannon entropy analysis of the genome code. Math. Probl. Eng. 2012, 2012, 132625. [Google Scholar] [CrossRef] [Green Version]
  58. Pires, E.S.; Machado, J.T.; de Moura Oliveira, P.B.; Cunha, J.B.; Mendes, L. Particle swarm optimization with fractional-order velocity. Nonlinear Dyn. 2010, 61, 295–301. [Google Scholar] [CrossRef] [Green Version]
  59. Van Den Bergh, F.; Engelbrecht, A.P. A study of particle swarm optimization particle trajectories. Inf. Sci. 2006, 176, 937–971. [Google Scholar] [CrossRef]
  60. Shi, Y.; Eberhart, R. Monitoring of particle swarm optimization. Front. Comput. Sci. China 2009, 3, 31–37. [Google Scholar] [CrossRef]
  61. Yasuda, K.; Iwasaki, N.; Ueno, G.; Aiyoshi, E. Particle swarm optimization: A numerical stability analysis and parameter adjustment based on swarm activity. IEEJ Trans. Electr. Electron. Eng. 2008, 3, 642–659. [Google Scholar] [CrossRef]
  62. Sabatier, J.; Agrawal, O.P.; Machado, J.T. Advances in Fractional Calculus; Springer: Amsterdam, The Netherlands, 2007. [Google Scholar]
  63. Adam, M. Advances in Fractional Calculus: Theoretical Developments and Applications in Physics and Engineering; SIAM Review; Society for Industrial and Applied Mathematics: Philadelphia, PA, USA, 2008. [Google Scholar]
  64. Machado, J. Fractional order generalized information. Entropy 2014, 16, 2350–2361. [Google Scholar] [CrossRef] [Green Version]
  65. Duarte Ortigueira, M.; Tenreiro Machado, J.A. Fractional signal processing and applications. Signal Process. 2003, 83, 11. [Google Scholar] [CrossRef]
  66. Wakasa, Y.; Tanaka, K.; Nishimura, Y. Control-theoretic analysis of exploitation and exploration of the PSO algorithm. In Proceedings of the 2010 IEEE International Symposium on Computer-Aided Control System Design, Yokohama, Japan, 8–10 September 2010; pp. 1807–1812. [Google Scholar]
  67. Shi, Y.; Eberhart, R.C. Fuzzy adaptive particle swarm optimization. In Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No. 01TH8546), Seoul, Korea, 27–30 May 2001; Volume 1, pp. 101–106. [Google Scholar]
  68. Machado, J.T. Entropy analysis of integer and fractional dynamical systems. Nonlinear Dyn. 2010, 62, 371–378. [Google Scholar]
  69. Machado, J.T. Entropy analysis of systems exhibiting negative probabilities. Commun. Nonlinear Sci. Numer. Simul. 2016, 36, 58–64. [Google Scholar] [CrossRef]
  70. Lopes, A.M.; Machado, J.T. Entropy analysis of industrial accident data series. J. Comput. Nonlinear Dyn. 2016, 11, 031006. [Google Scholar] [CrossRef]
  71. Ben-Naim, A. Entropy and the Second Law: Interpretation and Misss-Interpretationsss; World Scientific: Singapore, 2012. [Google Scholar]
  72. Shannon, C.E. A mathematical theory of communication. ACM SIGMOBILE Mob. Comput. Commun. Rev. 2001, 5, 3–55. [Google Scholar] [CrossRef]
  73. Solteiro Pires, E.J.; Tenreiro Machado, J.A.; de Moura Oliveira, P.B. PSO Evolution Based on a Entropy Metric. In International Conference on Hybrid Intelligent Systems; Springer: Berlin/Heidelberg, Germany, 2018; pp. 238–248. [Google Scholar]
  74. Zimmerman, R.D.; Murillo-Sánchez, C.E.; Thomas, R.J. MATPOWER: Steady-state operations, planning, and analysis tools for power systems research and education. IEEE Trans. Power Syst. 2010, 26, 12–19. [Google Scholar] [CrossRef] [Green Version]
  75. Mehdinejad, M.; Mohammadi-Ivatloo, B.; Dadashzadeh-Bonab, R.; Zare, K. Solution of optimal reactive power dispatch of power systems using hybrid particle swarm optimization and imperialist competitive algorithms. Int. J. Electr. Power Energy Syst. 2016, 83, 104–116. [Google Scholar] [CrossRef]
  76. Abido, M.A. Optimal power flow using particle swarm optimization. Int. J. Electr. Power Energy Syst. 2002, 24, 563–571. [Google Scholar] [CrossRef]
  77. Mei, R.N.S.; Sulaiman, M.H.; Mustaffa, Z.; Daniyal, H. Optimal reactive power dispatch solution by loss minimization using moth-flame optimization technique. Appl. Soft Comput. 2017, 59, 210–222. [Google Scholar]
  78. Ghasemi, M.; Ghavidel, S.; Ghanbarian, M.M.; Habibi, A. A new hybrid algorithm for optimal reactive power dispatch problem with discrete and continuous control variables. Appl. Soft Comput. 2014, 22, 126–140. [Google Scholar] [CrossRef]
  79. Huang, C.-M.; Huang, Y.-C. Combined differential evolution algorithm and ant system for optimal reactive power dispatch. Energy Procedia 2012, 14, 1238–1243. [Google Scholar] [CrossRef] [Green Version]
  80. Khorsandi AAlimardani AVahidi, B.; Hosseinian, S.H. Hybrid shuffled frog leaping algorithm and Nelder–Mead simplex search for optimal reactive power dispatch. IET Gener. Transm. Distrib. 2011, 5, 249–256. [Google Scholar] [CrossRef]
  81. Uney, M.S.; Cetinkaya, N. New Metaheuristic Algorithms for Reactive Power Optimization. Tehnički Vjesnik 2019, 26, 1427–1433. [Google Scholar]
  82. Ben Oualid Medani, K.; Sayah, S.; Bekrar, A. Whale optimization algorithm based optimal reactive power dispatch: A case study of the Algerian power system. Electr. Power Syst. Res. 2018, 163, 696–705. [Google Scholar] [CrossRef]
  83. Abaci, K.; Yamaçli, V. Optimal reactive-power dispatch using differential search algorithm. Electr. Eng. 2017, 99, 213–225. [Google Scholar] [CrossRef]
Figure 1. Sub problems of optimal power flow (OPF).
Figure 1. Sub problems of optimal power flow (OPF).
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Figure 2. Thirty-standard bus system single-line diagram (SLD).
Figure 2. Thirty-standard bus system single-line diagram (SLD).
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Figure 3. Fifty-seven-standard bus system SLD.
Figure 3. Fifty-seven-standard bus system SLD.
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Figure 4. Overall design scheme for the proposed study.
Figure 4. Overall design scheme for the proposed study.
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Figure 5. Fractional order (FO)–particle swarm optimization (PSO) with entropy with velocity reinitialization [73].
Figure 5. Fractional order (FO)–particle swarm optimization (PSO) with entropy with velocity reinitialization [73].
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Figure 6. Thirty-bus system power loss (MW) minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 6. Thirty-bus system power loss (MW) minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 7. Thirty-bus system cost function minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 7. Thirty-bus system cost function minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 8. Thirty-bus system voltage profile index minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 8. Thirty-bus system voltage profile index minimization learning curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 9. Fifty-seven-bus system Power Loss (MW) curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 9. Fifty-seven-bus system Power Loss (MW) curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 10. Fifty-seven-bus system cost function curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 10. Fifty-seven-bus system cost function curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 11. Fifty-seven-bus system voltage profile index curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
Figure 11. Fifty-seven-bus system voltage profile index curves for (a) α = 0.1 (b) α = 0.2 (c) α = 0.3 (d) α = 0.4 (e) α = 0.5 (f) α = 0.6 (g) α = 0.7 (h) α = 0.8 (i) α = 0.9.
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Figure 12. Statistical analysis of 30-bus system for power loss minimization with α = 0.3 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 12. Statistical analysis of 30-bus system for power loss minimization with α = 0.3 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Figure 13. Statistical analysis of 30-bus system for voltage profile improvement with α = 0.4 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 13. Statistical analysis of 30-bus system for voltage profile improvement with α = 0.4 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Figure 14. Statistical analysis of 30-bus system for operating cost minimization with α = 0.7 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 14. Statistical analysis of 30-bus system for operating cost minimization with α = 0.7 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Figure 15. Statistical analysis of 57-bus system for power loss minimization with α = 0.9 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 15. Statistical analysis of 57-bus system for power loss minimization with α = 0.9 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Figure 16. Statistical analysis of 57-bus system for voltage profile improvement with α = 0.3 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 16. Statistical analysis of 57-bus system for voltage profile improvement with α = 0.3 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Figure 17. Statistical analysis of 57-bus system for operating cost minimization with α = 0.7 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
Figure 17. Statistical analysis of 57-bus system for operating cost minimization with α = 0.7 based on (a) fitness comparison (b) probability plot (c) histogram analysis (d) CFD analysis (e) box plot representation (f) QQ plot.
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Table 1. Up-gradation of power system infrastructure.
Table 1. Up-gradation of power system infrastructure.
MeritsDe-Merits
Enhanced Power Evacuation
Capacity
Cost (Capex & Opex)
Improved Load ManagementSite Clearance & Security Issues
Permits/Right of Way Issues
Table 2. Optimization of existing power system.
Table 2. Optimization of existing power system.
MeritsDe-Merits
Minimize T&D lossesMarginal Improvement in System
Capacity
Improvement of Voltage Profile
Index (VPI)
Enhanced System Stability
Reduce Overall Cost of
Operation
Table 3. Load data.
Table 3. Load data.
Bus #Load Detail
(per unit)
Bus #Load Detail
(per unit)
QPQP
B10.00000.0000B160.01800.0350
B20.12700.2170B170.05800.0900
B30.01200.0240B180.00900.0320
B40.01600.0760B190.03400.0950
B50.19000.9420B200.00700.0220
B60.00000.0000B210.11200.1750
B70.10900.2280B220.00000.0000
B80.30000.3000B230.01600.0320
B90.00000.0000B240.06700.0870
B100.02000.0580B250.00000.0000
B110.00000.0000B260.02300.0350
B120.07500.1120B270.00000.0000
B130.00000.0000B280.00000.0000
B140.01600.0620B290.00900.0240
B150.02500.0820B300.01900.1060
Table 4. Transmission line data.
Table 4. Transmission line data.
Transmission Line #Line Impedance
(per unit)
To BusFrom Bus
XR
L10.05750.019221
L20.18520.045231
L30.17370.057042
L40.03790.013243
L50.19830.047252
L60.17630.058162
L70.04140.011964
L80.11600.046075
L90.08200.026776
L100.04200.012086
L110.20800.000096
L120.55600.0000106
L130.20800.0000119
L140.11000.0000109
L150.25600.0000124
L160.14000.00001312
L170.25590.12311412
L180.13040.06621512
L190.19870.09451612
L200.19970.22101514
L210.19320.08241716
L220.21850.10701815
L230.12920.06391918
L240.06800.03402019
L250.20900.09362010
L260.08450.03241710
L270.07490.03482110
L280.14990.07272210
L290.02360.01162221
L300.20200.10002315
L310.17900.11502422
L320.27000.13202423
L330.32920.18852524
L340.38000.25442625
L350.20870.10932725
L360.39600.00002728
L370.41530.21982927
L380.60270.32023027
L390.45330.23993029
L400.20000.6360288
L410.05990.0169286
Table 5. Generator bus data.
Table 5. Generator bus data.
Bus #Cost Coefficients
xyz
B10.00002.00000.003750
B20.00001.75000.017500
B50.00001.00000.062500
B80.00003.25000.008340
B110.00003.00000.025000
B130.00003.00000.025000
Table 6. Minimum and maximum limits for the decision variables.
Table 6. Minimum and maximum limits for the decision variables.
Decision Variables
MinMaxInitial
T110.90001.10001.0780
T120.90001.10001.0690
T150.90001.10001.0320
T360.90001.10001.0680
P150.00200.0099.24
P220.0080.0080.00
P515.0050.0050.00
P810.0035.0020.00
P1110.0030.0020.00
P1312.0040.0020.00
V10.95001.10001.0500
V20.95001.10001.0400
V50.95001.10001.0100
V80.95001.10001.0100
V110.95001.10001.0500
V130.95001.10001.0500
Qx100.00005.00000.00
Qx120.00005.00000.00
Qx150.00005.00000.00
Qx170.00005.00000.0000
Qx200.00005.00000.0000
Qx210.00005.00000.0000
Qx230.00005.00000.0000
Qx240.00005.00000.0000
Qx290.00005.00000.0000
Power losses (MW)5.8420
Voltage deviations (VPI)1.16060
Lmax0.21440
Table 15. Comparison of VPI for standard 57-bus system with 25 decision variables.
Table 15. Comparison of VPI for standard 57-bus system with 25 decision variables.
ItemPublished OutcomesPresent
NGBWCA
[15]
WCA
[15]
OGSA
[15]
FO-PSO
with Entropy
VPI (p.u)1.27101.38521.19071.1844

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Khan, M.W.; Muhammad, Y.; Raja, M.A.Z.; Ullah, F.; Chaudhary, N.I.; He, Y. A New Fractional Particle Swarm Optimization with Entropy Diversity Based Velocity for Reactive Power Planning. Entropy 2020, 22, 1112. https://doi.org/10.3390/e22101112

AMA Style

Khan MW, Muhammad Y, Raja MAZ, Ullah F, Chaudhary NI, He Y. A New Fractional Particle Swarm Optimization with Entropy Diversity Based Velocity for Reactive Power Planning. Entropy. 2020; 22(10):1112. https://doi.org/10.3390/e22101112

Chicago/Turabian Style

Khan, Muhammad Waleed, Yasir Muhammad, Muhammad Asif Zahoor Raja, Farman Ullah, Naveed Ishtiaq Chaudhary, and Yigang He. 2020. "A New Fractional Particle Swarm Optimization with Entropy Diversity Based Velocity for Reactive Power Planning" Entropy 22, no. 10: 1112. https://doi.org/10.3390/e22101112

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