Next Article in Journal
Selenium Dissolution from Decopperized Anode Slimes in ClO/OH Media
Previous Article in Journal
Characteristics of Canister Core Desorption Gas from Unconventional Reservoirs and Applications to Improve Assessment of Hydrocarbons-in-Place
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Application of High-Precision Filters on Airborne Magnetic Data: A Case Study of the Ogoja Region, Southeast Nigeria

1
Applied Geophysics Programme, Department of Physics, University of Calabar, Calabar P.M.B. 1115, Cross River State, Nigeria
2
Department of Geology, Suez University, Suez 43518, Egypt
3
Department of Geology and Geophysics, College of Science, King Saud University, Riyadh 11451, Saudi Arabia
4
Department of Geology, University of Calabar, Calabar P.M.B. 1115, Cross River State, Nigeria
5
Faculty of Physics, University of Science, Vietnam National University, Hanoi 700000, Vietnam
6
Department of Biology and Geology, Physics and Inorganic Chemistry, ESCET, Universidad Rey Juan Carlos, Móstoles, 28032 Madrid, Spain
*
Author to whom correspondence should be addressed.
Minerals 2022, 12(10), 1227; https://doi.org/10.3390/min12101227
Submission received: 19 August 2022 / Revised: 24 September 2022 / Accepted: 26 September 2022 / Published: 28 September 2022

Abstract

:
Aeromagnetic data from the Ogoja region, Southeast Nigeria, were enhanced using high-precision methods including the tilt angle of total horizontal gradient (TAHG), the softsign function (SF), and the improved logistic function (IL) with the aim of creating a new structural map. This new map can help improve the understanding of the trend, spatial distribution, and pattern of the lineaments. The TAHG, SF, and IL methods generated geologic structures with correlating trends, distributions, and patterns. However, the SF and IL techniques mapped the borders of geologic structures more precisely. The lineaments extracted from the SF and IL maps were reduced to equator (RTE) magnetic data, and a GIS was used to create structural maps with NE–SW, NW–SE, NNE–SSW, and NNW–SSE orientations. Furthermore, the depths (0–2100 m) of these geologic structures were estimated using the tilt depth technique (TDT). The high lineament density and thin sedimentation observed in the study area were triggered by the widespread Santonian igneous intrusions associated with the Abakaliki Anticlinorium. The techniques applied in our study can be employed in areas with the same conditions around the world for the precise delineation of geologic structures from magnetic and gravity data.

1. Introduction

One of the most well-known uses of magnetic and gravity techniques is the visualization of lineaments commonly associated with tectonic intrusions using different filtering procedures [1,2,3,4,5,6]. These procedures are vital because the identified lineaments usually match the lateral borders of geologic structures [6,7,8,9,10].
Previously, some filters were developed for mapping geologic features employing magnetic and gravity data. The total horizontal gradient (THG) and analytic signal [11,12] have been the most commonly applied filtering methods for geologic structural studies. Even though these traditional procedures are frequently employed to qualitatively interpret magnetic and gravity data [13,14], they often generate diffuse lineament maps [15,16,17,18]. However, researchers have proposed several other enhancement operations centered on potential field gradients to reduce the difficulties of the traditional edge-detection procedures [18,19]. The tilt derivative method centered on the arctan function of the vertical gradient-to-THG ratio [20], the tilt derivative of gradient amplitude [21], and the THG computed by averaging the vertical gradients [22]. Ref. [23] introduced the theta technique that applied the gradient amplitude to normalize the total gradient, while the normalized gradient amplitude technique [24] was also developed. In addition to these, other edge-detection filters that rely on potential field data are well documented [11,12,25,26]. Furthermore, very recent high-precision filters, such as the normalized standard deviation, enhanced horizontal gradient amplitude, softsign function, logistic function of the total horizontal gradient, tilt angle of total horizontal gradient, theta map, hyperbolic tilt angle, horizontal tilt angle, tilt angle of the total gradient, improved tilt angle, improved theta map, improved logistic and fast sigmoid-based edge detection, have all been developed [24,27,28,29,30] to accurately map the lineaments originating from near-surface and deep geologic sources. The application of these filters on both theoretical and observed potential field data has shown their efficacy and precision in the qualitative delineation and interpretation of geologic structures [31,32,33,34,35].
The Ogoja region, which is a portion of the Lower Benue Trough (LBT), is of great economic interest because of the extensive occurrence of brine fields, base metals, and polymetallic–magmatic hydrothermal deposits as well as other rift minerals [36,37,38,39,40]. Mineralization is often related to structural control and hydrothermal modifications caused by magmatic intrusions [36].
In general, some previous geologic structural studies in the LBT involved filters such as the first and second vertical derivatives, tilt-angle derivative, total horizontal gradient, analytic signal, downward continuation, and center for exploration targeting [37,41,42,43,44,45]. All these enhancement and filtering procedures permitted the mapping of responses linked to the mineralization, geologic structures, and lithology of the area. From these investigations, it was observed that the lineaments were oriented in the E–W, NW–SE, NE–SW, and NNE–SSW directions and functioned as a pathway for hydrothermal fluid movement and mineralization. Overall, these filters had the disadvantage of being unable to balance the anomaly amplitudes initiated by the structures buried at various depths [33] in order to clearly recognize the horizontal boundaries of deep structures and generate detailed geologic structures of the LBT.
In this study, TAHG [35], SF [32], and IL [46] filters were employed to the high quality aeromagnetic data to enable the generation of a highly precise map of the geologic structures of the Ogoja region. The airborne magnetic data were measured and assembled by Fugro Airborne Surveys, Canada, between 2005 and 2010. These data were acquired using the Flux-Adjusting Surface Data Assimilation System and were observed to be of very high resolution when compared to the 1970 aerogeophysical data [47]. Moreover, the TDT was applied to approximate the depth of the geologic structures of the area. The mapping of these structures is expected to help delineate brine conduit, lead–zinc, barite, and ironstones occurring near the igneous intrusions related to the Abakiliki Anticlinorium and Cameroon Volcanic Line within the Ogoja region. Furthermore, the findings of this study are expected to enhance our understanding of the trend, distribution, and structural pattern of the investigated area.

2. Location and Geologic Setting of the Study Area

Okpoma, Ugaga, Ogoja Town, and the surrounding areas are part of the Asu River Group (ARG) and Mamfe Formation sedimentary sequences. The investigated region is located in the LBT, on the northeastern flank of the Abakaliki Anticlinorium (AA) in Southeast Nigeria (Figure 1). The investigated region is positioned between longitudes 8°30′ E and 9°00′ E and latitudes 6°30′ N and 7°00′ N.
The series of tectonic occurrences that resulted in the creation of the Benue Trough (LB) and its constituent parts have been well documented [48]. The LBT is occupied by a thick Cretaceous sediment that overlies the Precambrian basement, which is primarily composed of magmatic and granitic rocks. Outcrops at Ogoja and Ikom, as well as geophysical data, have confirmed the presence of arkosic non-fossiliferous fanglomerates [49]. The Ogoja Sandstone, pre-Middle Albian in age, corresponds to the basin’s early phases of development [50]. The Ogoja sandstones that correlate laterally with the basal Awi Formation overlie the Obudu Basement complex. The ARG consists of shale with sandstones and sandy limestones [51,52]. Ref [49] provided a more comprehensive report of the assemblage, dividing it into three groups that ranged from the middle Albian to the lower Cenomanian. The existence of mega turbidites and slumps, as well as ammonite and foraminifera assemblages, suggested that the Ekebeligwe Formation was created in a deep-marine asymmetrical turbidite basin during the middle-Albian period [49].
It has been revealed that the tectonic event continued during the basin’s development and infilling (Pre-Aptian-Santonian), as well as in the Santonian occurrence and subsequently Campanian, with its maximum activity during the Albian and Santonian [53]. In the Afikpo–Ugep area, the rocks are predominantly alkaline with tholeiitic tendencies [53,54]. Even though magmatism is widespread in the LBT, magmatic concentrations are concentrated in a few major areas, including Gboko–Ogoja, Workum Hills, Afikpo–Ugep, and Ishiagu [50,53,54,55]. The igneous rocks are primarily dolerites, with Monzonites, Syenites, and Gabbros, in addition to pyroclastics and basaltic lava flows.

3. Materials

Data Acquisition

Between 2005 and 2010, Fugro Airborne Surveys, Canada, collected high resolution airborne magnetic data. The dataset was measured using the Flux-Adjusting Surface Data Assimilation System with 0.1 km of flight-line space, 0.5 km of tie-line space, and a terrain clearance that ranged from 0.08 to 0.1 km. The flight-line direction in the study area was mainly NW–SE, while the tie lines, which were meant to intersect the main geological strike direction, were oriented predominantly NE–SW [46]. Furthermore, Fugro Airborne Surveys, Canada, subtracted the regional field from the observed aeromagnetic data using the International Geomagnetic Reference Field’s tenth (10th) generation (IGRF). The IGRF’s main advantage is the constancy it provides in potential field explorations, which began after the IGRF was made conventional and readily available. The observed total magnetic intensity data (Figure 2) employed in this investigation were reduced to the equator (RTE) (Figure 3). Because the data were gathered at a low latitude, the magnetic data were RTE. According to [56], RTE data produce more reliable results, particularly at middle and lower latitudes. Furthermore, the data were upward continued to 100 m using the frequency method [57] to mitigate the geologic effects associated with very short wavelength anomalies.

4. Methods

The tilt angle of the total horizontal gradient (TAHG) is one of the frequently applied filters for recognizing geological features. The computation procedure of the TAHG operator can be expressed as [35]:
TAHG = atan ( R H G ) ,
where R H G is the ratio between the derivatives of the total-horizontal gradient, expressed as [35]:
R H G = HG z ( H G x ) 2 + ( H G y ) 2
and the total-horizontal gradient (HG) of the potential field data F is given by [58]:
H G = ( F x ) 2 + ( F y ) 2 .
Ref. [59] used the logistic function and derivatives of the gradient amplitude to extract the horizontal borders, which are defined by:
I L = 1 1 + exp [ p ( R H G 1 ) + 1 ] ,
where p ≥ 2 will produce better results.
The softsign function (SF) is a new edge delineation method, developed by [32] to recognize the geological features from potential field data. The SF is calculated by the following equation:
SF = k × H G z ( k + 2 ) ( H G x ) 2 + ( H G y ) 2 ( H G x ) 2 + ( H G y ) 2 + | k × HG z ( k + 1 ) ( H G x ) 2 + ( H G y ) 2 |
where 1 ≤ k ≤ 10 will yield the best results.

5. Results

To offer a better understanding of the location, trend, and pattern of geologic structures in the Ogoja region of Southeast Nigeria, enhanced filters including TAHG, SF, and IL were applied to the high-resolution airborne magnetic data (Figure 3). Figure 4 shows the effects plus outputs of the TAHG developed from the tilt-angle filter. The zero-contour line of the tilt angle revealed the lineaments caused by magnetic bodies; nevertheless, sharp edges were not detected by this filter [29]. The SF map (Figure 5) displayed a more detailed delineation of the geologic structures, which were much easier to visually qualitatively interpret. Furthermore, a high-resolution lineament map (Figure 6) of the investigated area was generated from the IL filter. Interpretation of an IL-derived lineation map is often without complications [3]. This filter was reported by [3] to be able to accurately map the edges of regional and deeply seated geologic structures. The SF and IL filters were not affected by the depth of the magnetic bodies, and their highest values were near the true boundaries, even for deeper magnetic bodies [29]. Overall, the peaks of the SF (Figure 5) and IL (Figure 6) responses were placed directly over the magnetic source borders, and these filters provided sharper responses over the source edges than the TAHG filter (Figure 4). Figure 4 created more connective linear structures that were somewhat diffused. This linkage of lineations made visual interpretation of the geologic structures somewhat problematic [20]. Figure 5 and Figure 6 balanced the low and high amplitude signals emanating from geologic structures, simultaneously. The filters (SF and IL) delineated distinctly several lineaments caused by the Santonian AA [60] that were not recognizable in Figure 4. In general, the lineament maps (Figure 8) generated from Figure 4 and Figure 5 and a GIS indicated geologic structures that trended in the NE–SW, NW–SE, NNE–SSW, and NNW–SSE directions (Figure 9). The southeastern and northeastern flanks, shown in Figure 8a, were characterized by curvilinear geologic structures, which were indicative of folds related to the Santonian intrusions of the region. These folds were also identified in Figure 4 and Figure 6. Furthermore, the SF- and IL-generated structural map (Figure 8a) showed well defined clusters of lineaments with a regular NE–SW trend, while the GIS structural map (Figure 8b) revealed sparely distributed structures with dominant NW–SE and NE–SW directions. In general, Figure 9 revealed that the geologic structures within the study area were oriented predominantly in the NE–SW direction. The regional NE-SW trend of the BT [53,61,62] matched the dominant direction of the lineaments of the study area.
To evaluate the depths of these lineaments in the investigated area, the TDT [25,63,64] was applied. The key benefit of the TDT (Figure 7) is that it does not involve the use of window-size, magnetization, or structure-index unlike the standard Euler deconvolution [36,38,43]. Figure 8 shows a depth range of 0–2100 m and reveals that these mapped geologic structures (Figure 4, Figure 5 and Figure 6) were not deeply seated beyond 2100 m. The thin sedimentation and high concentration of lineaments are believed to have been initiated by the wide-ranging occurrence of near-surface Santonian intermediate-mafic igneous, calc–alkaline lavas, and tuffs intrusions, as well as highly baked shales [45,60] in the study area.

6. Discussion

The structural framework of the BT controls the sedimentation as well as the basement topography [53,60] and dominant trend of lineaments. The TAHG, SF, and IL (Figure 4, Figure 5 and Figure 6) filters were used to create enhanced structural maps from the airborne magnetic data. Furthermore, the SF and IL filters delineated the borders of the shallow, deep, and regional geologic structures appropriately [28]. In this study, lineaments were extracted from the SF and IL methods (Figure 5), and a GIS was used to create structural maps of the Ogoja region (Figure 8). Moreover, the combined maps were matched taking into consideration the spatial characteristics as well as location, orientation, number, and subdivision of the created geologic structures. Based on this, the trend analysis of the delineated geologic structures was statistically calculated and presented as a rose diagram (Figure 9). The interpretation of the structural map indicated three main groups of frequency NNE–SSW, NNW–SSE, NE–SW, and NE–SW and a secondary orientation of NW–SE. To a certain extent, one of the major NE–SW lineament trends generated matched the basic structural orientation of the BT and AA, which was NE–SW [60]. This trend was observed to be very regular and dominant in the SF-RTE generated structural map (Figure 8a). Similar structural trends have been previously observed in the LBT [37,43,44]. These near-surface geologic structures were triggered by the widespread intrusions [60], as well as metamorphosed Albian shales [39,42,43,60] interrelated to the Santonian AA [38]. The related tectonic perturbations caused the high concentration of lineaments in the Ogoja region, which served as pathways for the movements and entrapments of brines [36] and lead–zinc [38] in the region. The results obtained showed that there was a relation between the geologic structures extracted from the magnetic data and the mineralization, demonstrating the success of the magnetic data in mapping the pathways of the mineral deposits [4]. Furthermore, in terms of the trend analysis of the geologic structures obtained from the TAHG, SF, and IL (Figure 4, Figure 5 and Figure 6), an obvious consistency was witnessed from the lineament trends. However, the SF and IL generated structures that were sharper, well-defined, and correlated relatively well. Overall, the findings showed that the combination of the SF and IL filters alongside the surface geologic structural mapping can serve as potent tools for imaging lineaments in a complex geologic area characterized by multiple phases of deformation [28] such as the LBT.

7. Conclusion

To create improved structural maps of the Ogoja region in Southeast Nigeria, airborne magnetic data were enhanced using high precision filters such as TAHG, SF, and IL. Before application of the enhanced filters, the magnetic data were reduced to the equator. The TAHG, SF, and IL filters produced geologic structures that were relatively well correlated. Furthermore, the SF and IL filters correctly mapped the boundaries of shallow, deep, and regional geologic structures. The lineaments extracted from the SF and IL of the RTE data and a GIS were used to generate structural maps of the Ogoja region. The generated maps revealed structural trends such as NE–SW, NW–SE, NNE–SSW, and NNW–SSE. In general, most of the geologic structures followed the structural orientation of the BT and AA and trended in the NE–SW direction. The depths to these lineaments were determined using TDT, and the obtained result showed a depth range of 0–2100 m. Overall, the extensive occurrence of Santonian intrusions is thought to be the primary cause of the high concentration of geologic structures and thin sedimentation in the study area.

Author Contributions

Conceptualization, S.E.E. and A.M.E.; methodology, L.T.P. and A.M.E.; software, L.T.P. and A.M.E.; validation, U.C.B., O.-I.M.A. and A.E.A.; formal analysis, S.E.E. and D.G.-O.; investigation, K.A. and A.M.E.; resources, S.E.E., A.E.A. and A.M.E.; data curation, U.C.B.; writing—original draft preparation, S.E.E., A.M.E. and L.T.P.; writing—review and editing, A.M.E. and L.T.P.; visualization, A.E.A.; supervision, A.M.E.; project administration, A.M.E.; funding acquisition, H.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research was fundded by the Researchers Supporting Project number (RSP2022R425), King Saud University, Riyadh, Saudi Arabia.

Data Availability Statement

The data is available under the request from the corresponding author.

Acknowledgments

This research was supported by the Researchers Supporting Project number (RSP2022R425), King Saud University, Riyadh, Saudi Arabia.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Bencharef, M.H.; Eldosouky, A.M.; Zamzam, S.; Boubaya, D. Polymetallic mineralization prospectivity modelling using multi-geospatial data in logistic regression: The Diapiric Zone, Northeastern Algeria. Geocarto Int. 2022. [Google Scholar] [CrossRef]
  2. Mahdi, A.M.; Eldosouky, A.M.; El Khateeb, S.O.; Youssef, A.M.; Saad, A.A. Integration of remote sensing and geophysical data for the extraction of hydrothermal alteration zones and lineaments; Gabal Shilman basement area, Southeastern Desert, Egypt. J. Afr. Earth Sci. 2022, 194, 104640. [Google Scholar] [CrossRef]
  3. Eldosouky, A.M.; Pham, L.T.; Abdelrahman, K.; Fnais, M.S.; Gomez-Ortiz, D. Mapping structural features of the Wadi Umm Dulfah area using aeromagnetic data. J. King Saud Univ.-Sci. 2021, 34, 101803. [Google Scholar] [CrossRef]
  4. Eldosouky, A.M.; El-Qassas, R.A.; Pour, A.B.; Mohamed, H.; Sekandari, M. Integration of ASTER satellite imagery and 3D inversion of aeromagnetic data for deep mineral exploration. Adv. Space Res. 2021, 68, 3641–3662. [Google Scholar] [CrossRef]
  5. Elkhateeb, S.O.; Eldosouky, A.M.; Khalifa, M.O.; Aboalhassan, M. Probability of mineral occurrence in the Southeast of Aswan area, Egypt, from the analysis of aeromagnetic data. Arab. J. Geosci. 2021, 14, 1514. [Google Scholar] [CrossRef]
  6. Oksum, E.; Le, D.V.; Vu, M.D.; Nguyen, T.H.T.; Pham, L.T. A novel approach based on the fast sigmoid function for interpretation of potential field data. Bull. Geophys. Oceanogr. 2021, 62, 543–556. [Google Scholar]
  7. Sehsah, H.; Eldosouky, A.M. Neoproterozoic hybrid forearc—MOR ophiolite belts in the northern Arabian-Nubian Shield: No evidence for back-arc tectonic setting. Int. Geol. Rev. 2020, 64, 151–163. [Google Scholar] [CrossRef]
  8. Saada, S.A.; Eldosouky, A.M.; Kamel, M.; El Khadragy, A.; Abdelrahman, K.; Fnais, M.S.; Mickus, K. Understanding the structural framework controlling the sedimentary basins from the integration of gravity and magnetic data: A case study from the east of the Qattara Depression area, Egypt. J. King Saud Univ.-Sci. 2021, 34, 101808. [Google Scholar] [CrossRef]
  9. Eldosouky, A.M.; Pham, L.T.; El-Qassas, R.A.Y.; Hamimi, Z.; Oksum, E. Lithospheric Structure of the Arabian–Nubian Shield Using Satellite Potential Field Data. In The Geology of the Arabian-Nubian Shield. Regional Geology Reviews; Hamimi, Z., Fowler, A.R., Liégeois, J.P., Collins, A., Abdelsalam, M.G., Abd EI-Wahed, M., Eds.; Springer: Cham, Switzerland, 2021. [Google Scholar] [CrossRef]
  10. Oksum, E.; Dolmaz, M.N.; Pham, L.T. Inverting gravity anomalies over the Burdur sedimentary basin, SW Turkey. Acta Geod. Geophys. 2019, 54, 445–460. [Google Scholar] [CrossRef]
  11. Roest, W.; Verhoef, J.; Pilkington, M. Magnetic interpretation using the 3-D analytic signal. GEOPHYSICS 1992, 57, 116–125. [Google Scholar] [CrossRef]
  12. Cordell, L.; Grauch, V.J.S. Mapping basement magnetization zones from aeromagnetic data in the san Juan basin, New Mexico. In The Utility of Regional Gravity and Magnetic Anomaly Maps; Society of Exploration Geophysicists: Houston, TX, USA, 1985. [Google Scholar]
  13. Ben, U.C.; Ekwok, S.E.; Achadu, O.-I.M.; Akpan, A.E.; Eldosouky, A.M.; Abdelrahman, K.; Gómez-Ortiz, D. A Novel Method for Estimating Model Parameters from Geophysical Anomalies of Structural Faults Using the Manta-Ray Foraging Optimization. Front. Earth Sci. 2022, 10, 870299. [Google Scholar] [CrossRef]
  14. Ben, U.C.; Ekwok, S.E.; Akpan, A.E.; Mbonu, C.C.; Eldosouky, A.M.; Abdelrahman, K.; Gómez-Ortiz, D. Interpretation of Magnetic Anomalies by Simple Geometrical Structures Using the Manta-Ray Foraging Optimization. Front. Earth Sci. 2022, 10, 849079. [Google Scholar] [CrossRef]
  15. Prasad, K.N.D.; Pham, L.T.; Singh, A.P. Structural mapping of potential field sources using BHG filter. Geocarto Int. 2022, 1–28. [Google Scholar] [CrossRef]
  16. Eldosouky, A.M.; Elkhateeb, S.O.; Mahdy, A.M.; Saad, A.A.; Fnais, M.S.; Abdelrahman, K.; Andráš, P. Structural analysis and basement topography of Gabal Shilman area, South Eastern Desert of Egypt, using aeromagnetic data. J. King Saud Univ.-Sci. 2021, 34, 101764. [Google Scholar] [CrossRef]
  17. Eldosouky, A.M.; Elkhateeb, S.O.; Ali, A.; Kharbish, S. Enhancing linear features in aeromagnetic data using directional horizontal gradient at Wadi Haimur area, South Eastern desert, Egypt. Carpathian J. Earth Environ. Sci. 2020, 15, 323–326. [Google Scholar] [CrossRef]
  18. Thanh, L.P.; Oksum, E.; Kafadar, O.; Trong, T.P.; Viet, D.N.; Thanh, Q.V.; Le Thi, S. Determination of subsurface lineaments in the Hoang Sa islands using enhanced methods of gravity total horizontal gradient. Vietnam J. Earth Sci. 2022, 44, 395–409. [Google Scholar] [CrossRef]
  19. Pham, L.T.; Oliveira, S.P.; Eldosouky, A.M.; Abdelrahman, K.; Fnais, M.S.; Xayavong, V.; Andráš, P.; Le, D.V. Determination of structural lineaments of Northeastern Laos using the LTHG and EHGA methods. J. King Saud Univ.-Sci. 2022, 34, 101825. [Google Scholar] [CrossRef]
  20. Miller, H.G.; Singh, V. Potential field tilt—A new concept for location of potential field sources. J. Appl. Geophys. 1994, 32, 213–217. [Google Scholar] [CrossRef]
  21. Verduzco, B.; Fairhead, J.D.; Green, C.M.; MacKenzie, C. New insights into magnetic derivatives for structural mapping. Lead. Edge 2004, 23, 116–119. [Google Scholar] [CrossRef]
  22. Fedi, M.; Florio, G. Detection of potential fields source boundaries by enhanced horizontal derivative method. Geophys. Prospect. 2001, 49, 40–58. [Google Scholar] [CrossRef]
  23. Wijns, C.; Perez, C.; Kowalczyk, P. Theta map: Edge detection in magnetic data. Geophysics 2005, 70, L39–L43. [Google Scholar] [CrossRef]
  24. Cooper, G.; Cowan, D. Enhancing potential field data using filters based on the local phase. Comput. Geosci. 2006, 32, 1585–1591. [Google Scholar] [CrossRef]
  25. Salem, A.; Williams, S.; Fairhead, J.D.; Ravat, D.; Smith, R. Tilt-depth method: A simple depth estimation method using first-order magnetic derivatives. Lead. Edge 2007, 26, 1502–1505. [Google Scholar] [CrossRef]
  26. Hansen, R.O.; Deridder, E. Linear feature analysis for aeromagnetic data. Geophysics 2006, 71, L61–L67. [Google Scholar] [CrossRef]
  27. Eldosouky, A.M.; Ekwok, S.E.; Akpan, A.E.; Achadu, O.-I.M.; Pham, L.T.; Abdelrahman, K.; Gómez-Ortiz, D.; Alarifi, S.S. Delineation of structural lineaments of Southeast Nigeria using high resolution aeromagnetic data. Open Geosci. 2022, 14, 331–340. [Google Scholar] [CrossRef]
  28. Eldosouky, A.M.; Pham, L.T.; Henaish, A. High precision structural mapping using edge filters of potential field and remote sensing data: A case study from Wadi Umm Ghalqa area, South Eastern Desert, Egypt. Egypt. J. Remote Sens. Space Sci. 2022, 25, 501–513. [Google Scholar] [CrossRef]
  29. Eldosouky, A.M.; Pham, L.T.; Mohmed, H.; Pradhan, B. A comparative study of THG, AS, TA, Theta, TDX and LTHG techniques for improving source boundaries detection of magnetic data using synthetic models: A case study from G. Um Monqul, North Eastern Desert, Egypt. J. Afr. Earth Sci. 2020, 170, 103940. [Google Scholar] [CrossRef]
  30. Pham, L.T.; Oksum, E.; Nguyen, D.V.; Eldosouky, A.M. On the performance of phase-based filters for enhancing lateral boundaries of magnetic and gravity sources: A case study of the Seattle Uplift. Arab J. Geosci. 2021, 14, 129. [Google Scholar] [CrossRef]
  31. Pham, L.T.; Kafadar, O.; Oksum, E.; Hoang-Minh, T. A comparative study on the peak detection methods used to interpret potential field data: A case study from Vietnam. Geocarto Int. 2021, 37, 3679–3696. [Google Scholar] [CrossRef]
  32. Pham, L.T.; Oksum, E.; Van Le, D.; Ferreira, F.J.F.; Le, S.T. Edge detection of potential field sources using the softsign function. Geocarto Int. 2021, 1–14. [Google Scholar] [CrossRef]
  33. Pham, L.T.; Vu, M.D.; Le, S.T. Performance Evaluation of Amplitude- and Phase-Based Methods for Estimating Edges of Potential Field Sources. Iran. J. Sci. Technol. Trans. A Sci. 2021, 45, 1327–1339. [Google Scholar] [CrossRef]
  34. Pham, L.T.; Oksum, E.; Do, T.D. Edge enhancement of potential field data using the logistic function and the total horizontal gradient. Acta Geod. Geophys. 2019, 54, 143–155. [Google Scholar] [CrossRef]
  35. Ferreira, F.J.F.; de Souza, J.; de B. e S. Bongiolo, A.; de Castro, L.G. Enhancement of the total horizontal gradient of magnetic anomalies using the tilt angle. Geophysics 2013, 78, J33–J41. [Google Scholar] [CrossRef]
  36. Ekwok, S.E.; Akpan, A.E.; Achadu, O.-I.M.; Thompson, C.E.; Eldosouky, A.M.; Abdelrahman, K.; Andráš, P. Towards understanding the source of brine mineralization in Southeast Nigeria: Evidence from high-resolution airborne magnetic and gravity data. Minerals 2022, 12, 146. [Google Scholar] [CrossRef]
  37. Ekwok, S.E.; Akpan, A.E.; Achadu, O.-I.M.; Eze, O.E. Structural and lithological interpretation of aero-geophysical data in parts of the Lower Benue Trough and Obudu Plateau, southeast Nigeria. Adv. Space Res. 2021, 68, 2841–2854. [Google Scholar] [CrossRef]
  38. Ekwok, S.E.; Akpan, A.E.; Kudamnya, E.A. Exploratory mapping of structures controlling mineralization in Southeast Nigeria using high resolution airborne magnetic data. J. Afr. Earth Sci. 2019, 162, 103700. [Google Scholar]
  39. Ofoegbu, C.O.; Onuoha, K. Analysis of magnetic data over the Abakaliki Anticlinorium of the Lower Benue Trough, Nigeria. Mar. Pet. Geol. 1991, 8, 174–183. [Google Scholar] [CrossRef]
  40. Olade, M.A.; Morton, R.D. Origin of lead-zinc mineralization in the southern Benue Trough, Nigeria—Fluid inclusion and trace element studies. Miner. Depos. 1985, 20, 76–80. [Google Scholar] [CrossRef]
  41. Ekwok, S.E.; Akpan, A.E.; Achadu, O.-I.M.; Ulem, C.A. Implications of tectonic anomalies from potential field data in some parts of Southeast Nigeria. Environ. Earth Sci. 2021, 81, 6. [Google Scholar] [CrossRef]
  42. Ekwok, S.E.; Achadu, O.I.M.; Akpan, A.E.; Eldosouky, A.M.; Ufuafuonye, C.H.; Abdelrahman, K.; Gómez-Ortiz, D. Depth estimation of sedimentary sections and basement rocks in the Bornu basin, Northeast Nigeria using high-resolution. Minerals 2022, 12, 285. [Google Scholar] [CrossRef]
  43. Ekwok, S.E.; Akpan, A.E.; Ebong, E.D.; Eze, O.E. Assessment of depth to magnetic sources using high resolution aeromagnetic data of some parts of the Lower Benue Trough and adjoining areas, Southeast Nigeria. Adv. Space Res. 2021, 67, 2104–2119. [Google Scholar] [CrossRef]
  44. Ekwok, S.E.; Akpan, A.E.; Ebong, E.D. Assessment of crustal structures by gravity and magnetic methods in the Calabar Flank and adjoining areas of Southeastern Nigeria—A case study. Arab. J. Geosci. 2021, 14, 308. [Google Scholar] [CrossRef]
  45. Ekwok, S.E.; Akpan, A.E.; Kudamnya, E.A.; Ebong, E.D. Assessment of groundwater potential using geophysical data: A case study in parts of Cross River State, south-eastern Nigeria. Appl. Water Sci. 2020, 10, 144. [Google Scholar] [CrossRef]
  46. Eldosouky, A.M.; El-Qassas, R.A.Y.; Pham, L.T.; Abdelrahman, K.; Alhumimidi, M.S.; El Bahrawy, A.; Mickus, K.; Sehsah, H. Mapping Main Structures and Related Mineralization of the Arabian Shield (Saudi Arabia) Using Sharp Edge Detector of Transformed Gravity Data. Minerals 2022, 12, 71. [Google Scholar] [CrossRef]
  47. Ekwok, S.E.; Akpan, A.E.; Ebong, E.D. Enhancement and modelling of aeromagnetic data of some inland basins, southeastern Nigeria. J. Afr. Earth Sci. 2019, 155, 43–53. [Google Scholar] [CrossRef]
  48. Onuoha, K.M.; Ofoegbu, C.O. Subsidence and evolution of Nigeria’s continental margin: Implications of data from Afowo-1 well Mar. Petrol. Geol. 1988, 5, 175–181. [Google Scholar] [CrossRef]
  49. Ojoh, K.A. The southern part of the Benue Trough (Nigeria) Cretaceous stratigraphy, basin analysis, paleogeography, and geodynamic evolution in theequatorial domain of the South Atlantic. NAPE Bull 1992, 7, 131–152. [Google Scholar]
  50. Nwajide, C.S. Geology of Nigeria’s Sedimentary Basins; CSS Press: Lagos, Nigeria, 2013. [Google Scholar]
  51. Shell, B.P. Geological maps, 1: 250 000 Sheets: Makurdi (64); Ankpa (63); Enugu (72); Ogoja (73); Umuahia (79); Oban Hills (80); Calabar (85); Geological Survey of Nigeria: Abuja, Nigeria, 1957. [Google Scholar]
  52. Reyment, R.A. Aspects of the Geology of Nigeria: The Stratigraphy of the Cretaceous and Cenozoic Deposits; Ibadan University Press: Ibadan, Nigeria, 1965. [Google Scholar]
  53. Benkhelil, J. The origin and evolution of the Cretaceous Benue Trough (Nigeria). J. Afr. Earth Sci. (Middle East) 1989, 8, 251–282. [Google Scholar] [CrossRef]
  54. Hossain, M.T. Geochemistry and petrology of the minor intrusives between Efut Eso and Nko in the Ugep area of Cross River State, Nigeria. J. Min. Geol. 1981, 18, 42–51. [Google Scholar]
  55. Umeji, A.C. Evolution of the Abakaliki and the Anambra Sedimentary Basins, Southeastern Nigeria [R]; A Report Submitted to the Shell Petroleum Development Company Ltd., 2000; p. 155. [Google Scholar]
  56. Leu, L.K. Use of reduction-to-the-equator process for magnetic data interpretation: Presented at the 51st Ann. Int. Mtg., Soc. Expl. Geophy., Los Angeles, Abstract, P. 12. Geophysics 1981, 47, 445. [Google Scholar]
  57. Blakely, R.J. Potential Theory in Gravity and Magnetic Applications; Cambridge University Press: Cambridge, UK, 1996. [Google Scholar]
  58. Cordell, L. Gravimetric expression of graben faulting in Santa Fe Country and the Espanola Basin. In Proceedings of the New Mexico Geological Society Guidebook 30th Field Conference; New Mexico Geological Society: Socorro, NM, USA, 1979; pp. 59–64. [Google Scholar]
  59. Pham, L.T.; Van Vu, T.; Le Thi, S.; Trinh, P.T. Enhancement of Potential Field Source Boundaries Using an Improved Logistic Filter. Pure Appl. Geophys. 2020, 177, 5237–5249. [Google Scholar] [CrossRef]
  60. Benkhelil, J. Cretaceous deformation, magmatism and metamorphism in the lower Benue Trough. Nigeria. Geo. J. 1987, 22, 467–493. [Google Scholar] [CrossRef]
  61. Offodile, M.E. The geology of the Middle Benue, Nigeria; Paleontologiska Inst., Uppsala Universitet: Uppsala, Sweden, 1976. [Google Scholar]
  62. Ekwok, S.E.; Eldosouky, A.M.; Achadu, O.-I.M.; Akpan, A.E.; Pham, L.T.; Abdelrahman, K.; Gómez-Ortiz, D.; Ben, U.C.; Fnais, M.S. Application of the enhanced horizontal gradient amplitude (EHGA) filter in mapping of geological structures involving magnetic data in Southeast Nigeria. J. King Saud Univ.-Sci. 2022, 34, 102288. [Google Scholar] [CrossRef]
  63. Kharbish, S.; Eldosouky, A.M.; Amer, O. Integrating mineralogy, geochemistry and aeromagnetic data for detecting Fe–Ti ore deposits bearing layered mafic intrusion, Akab El-Negum, Eastern Desert, Egypt. Sci. Rep. 2022, 12, 15474. [Google Scholar] [CrossRef] [PubMed]
  64. Eldosouky, A.M.; Pham, L.T.; Duong, V.-H.; Ghomsi, F.E.K.; Henaish, A. Structural interpretation of potential field data using the enhancement techniques: A case study. Geocarto Int. 2022. [Google Scholar] [CrossRef]
Figure 1. Geologic map of the study area.
Figure 1. Geologic map of the study area.
Minerals 12 01227 g001
Figure 2. Total magnetic intensity data.
Figure 2. Total magnetic intensity data.
Minerals 12 01227 g002
Figure 3. Total magnetic intensity data reduced to equator and upward continued to 100 m.
Figure 3. Total magnetic intensity data reduced to equator and upward continued to 100 m.
Minerals 12 01227 g003
Figure 4. TAHG map of the study area.
Figure 4. TAHG map of the study area.
Minerals 12 01227 g004
Figure 5. SF map of the study area.
Figure 5. SF map of the study area.
Minerals 12 01227 g005
Figure 6. IL map of the study area.
Figure 6. IL map of the study area.
Minerals 12 01227 g006
Figure 7. TDT map of the study area.
Figure 7. TDT map of the study area.
Minerals 12 01227 g007
Figure 8. Lineament maps extracted from (a) SF and IL and (b) the GIS results.
Figure 8. Lineament maps extracted from (a) SF and IL and (b) the GIS results.
Minerals 12 01227 g008
Figure 9. Equal area rose diagrams of (a) softsign function and (b) GIS-generated lineament maps from the TMI and SRTM data, respectively.
Figure 9. Equal area rose diagrams of (a) softsign function and (b) GIS-generated lineament maps from the TMI and SRTM data, respectively.
Minerals 12 01227 g009
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Ekwok, S.E.; Eldosouky, A.M.; Ben, U.C.; Alzahrani, H.; Abdelrahman, K.; Achadu, O.-I.M.; Pham, L.T.; Akpan, A.E.; Gómez-Ortiz, D. Application of High-Precision Filters on Airborne Magnetic Data: A Case Study of the Ogoja Region, Southeast Nigeria. Minerals 2022, 12, 1227. https://doi.org/10.3390/min12101227

AMA Style

Ekwok SE, Eldosouky AM, Ben UC, Alzahrani H, Abdelrahman K, Achadu O-IM, Pham LT, Akpan AE, Gómez-Ortiz D. Application of High-Precision Filters on Airborne Magnetic Data: A Case Study of the Ogoja Region, Southeast Nigeria. Minerals. 2022; 12(10):1227. https://doi.org/10.3390/min12101227

Chicago/Turabian Style

Ekwok, Stephen E., Ahmed M. Eldosouky, Ubong C. Ben, Hassan Alzahrani, Kamal Abdelrahman, Ogiji-Idaga M. Achadu, Luan Thanh Pham, Anthony E. Akpan, and David Gómez-Ortiz. 2022. "Application of High-Precision Filters on Airborne Magnetic Data: A Case Study of the Ogoja Region, Southeast Nigeria" Minerals 12, no. 10: 1227. https://doi.org/10.3390/min12101227

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop