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Research on radar signal recognition based on automatic machine learning

  • Deep Learning & Neural Computing for Intelligent Sensing and Control
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Abstract

With the advancement of machine learning and radar technology, machine learning is becoming more and more widely used in the field of radar. Radar scanning, signal acquisition and processing, one-dimensional range image, radar SAR, ISAR image recognition, radar tracking and guidance are all integrated into machine learning technology, but machine learning technology relies heavily on human machine learning experts for radar signal recognition. In order to realize the automation of radar signal recognition by machine learning, this paper proposes an automatic machine learning AUTO-SKLEARN system and applies it to radar radiation source signals. Identification: Firstly, this paper briefly introduces the classification of traditional machine learning algorithms and the types of algorithms specifically included in each type of algorithm. On this basis, the machine learning Bayesian algorithm is introduced. Secondly, the automatic machine learning AUTO based on Bayesian algorithm is proposed. -SKLEARN system, elaborates the process of AUTO-SKLEARN system in solving automatic selection algorithm and hyperparameter optimization, including meta-learning and its program implementation and automatic model integration construction. Finally, this paper introduces the process of automatic machine learning applied to radar emitter signal recognition. Through data simulation and experiment, the effect of traditional machine learning k-means algorithm and automatic machine learning AUTO-SKLEARN system in radar signal recognition is compared, which shows that automatic machine learning is feasible for radar signal recognition. The automatic machine learning AUTO-SKLEARN system can significantly improve the accuracy of the radar emitter signal recognition process, and the scheme is more reliable in signal recognition stability.

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References

  1. Long T, Zeng T, Hu C, Dong X, Chen L, Liu Q, Xie Y, Ding Z, Li Y, Wang Y, Wang Y (2019) High resolution radar real-time signal and information processing. China Commun 16(02):105–133

    Google Scholar 

  2. Jazayeri S, Saghafi A, Esmaeili S, Tsokos CP (2019) Automatic object detection using dynamic time warping on ground penetrating radar signals. Expert Syst Appl 122:102–107

    Article  Google Scholar 

  3. Rong H, Cheng J, Li Y (2013) Radar emitter signal analysis with estimation of distribution algorithms. J Netw 8(1):108

    Google Scholar 

  4. Zheng Z, Lu J, Wang W-Q, Yang H, Zhang S (2018) An efficient method for angular parameter estimation of incoherently distributed sources via beamspace shift invariance. Digit Signal Process 83:261–270

    Article  Google Scholar 

  5. Hermessi H, Mourali O, Zagrouba E (2018) Convolutional neural network-based multimodal image fusion via similarity learning in the shearlet domain. Neural Comput Appl 30:2029. https://doi.org/10.1007/s00521-018-3441-1

    Article  Google Scholar 

  6. Cao R, Zhang X (2018) Computationally efficient MUSIC-based algorithm for joint direction of arrival (DOA) and Doppler frequency estimation in monostatic MIMO radar. Trans Nanjing Univ Aeronaut Astronaut 35(06):1053–1063

    Google Scholar 

  7. Ter-Avetisyan S, Singh PK, Kakolee KF, Ahmed H, Jeong TW, Scullion C, Hadjisolomou P, Borghesi M, Bychenkov VY (2018) Ultrashort PW laser pulse interaction with target and ion acceleration. Nuclear Inst Methods Phys Res A 909:156–159

    Article  Google Scholar 

  8. Bayat B, van der Tol C, Verhoef W (2018) Retrieval of land surface properties from an annual time series of Landsat TOA radiances during a drought episode using coupled radiative transfer models. Remote Sens Environ 47(1):339–349

    Google Scholar 

  9. Wen C, Tao M, Peng J, Wu J, Wang T (2018) Clutter suppression for airborne FDA-MIMO radar using multi-waveform adaptive processing and auxiliary channel STAP. Signal Process 154:280–293

    Article  Google Scholar 

  10. da Costa KAP, Papa JP, Lisboa CO, Munoz R, de Albuquerque VHC (2019) Internet of things: a survey on machine learning-based intrusion detection approaches. Comput Netw 151:147–157

    Article  Google Scholar 

  11. Chen W, Zhang S, Li R, Shahabi H (2018) Performance evaluation of the GIS-based data mining techniques of best-first decision tree, random forest, and naïve Bayes tree for landslide susceptibility modeling. Sci Total Environ 644:1006–1018

    Article  Google Scholar 

  12. Gong H (2018) Tibetan character recognition based on machine learning of K-means algorithm. In: Proceedings of 2018 international conference on computer modeling, simulation and algorithm (CMSA2018), vol 3. Advanced Science and Industry Research Center, Science and Engineering Research Center

  13. Wu J (2018) A generalized tree augmented naive Bayes link prediction model. J Comput Sci 27:206–217

    Article  Google Scholar 

  14. Sarvari PA, Ustundag A, Takci H (2016) Performance evaluation of different customer segmentation approaches based on RFM and demographics analysis. Kybernetes 45(7):1129–1157

    Article  Google Scholar 

  15. Elavarasan D, Vincent DR, Sharma V, Zomaya AY, Srinivasan K (2018) Forecasting yield by integrating agrarian factors and machine learning models: a survey. Comput Electron Agric 155:257–282

    Article  Google Scholar 

  16. Wan J, Chen B, Xu B, Liu H, Jin L (2019) Convolutional neural networks for radar HRRP target recognition and rejection. EURASIP J Adv Signal Process 2019(1):1–17

    Article  Google Scholar 

  17. Panda AK, Rapur JS, Tiwari R (2018) Prediction of flow blockages and impending cavitation in centrifugal pumps using support vector machine (SVM) algorithms based on vibration measurements. Measurement 130:44–56

    Article  Google Scholar 

  18. Uddin MN, Islam AKMS, Bala SK, Islam GMT, Adhikary S, Saha D, Haque S, Fahad MGR, Akter R (2019) Mapping of climate vulnerability of the coastal region of Bangladesh using principal component analysis. Appl Geogr 102:47–57

    Article  Google Scholar 

  19. Song Z (2018) Study on automatic identification technology of greenhouse tomato pests and diseases based on machine learning. In: Proceedings of 2018 2nd international conference on systems, computing, and applications (SYSTCA 2018), vol 4. International Information and Engineering Association, Computer Science and Electronic Technology International Society

  20. Guan RP, Ristic B, Wang L, Evans R (2018) Monte Carlo localisation of a mobile robot using a Doppler–Azimuth radar. Automatica 97:161–166

    Article  MathSciNet  MATH  Google Scholar 

  21. Curcio A, Dolci V, Lupi S, Petrarca M (2018) Terahertz-based retrieval of the spectral phase and amplitude of ultrashort laser pulses. Opt Lett 43(4):783–786

    Article  Google Scholar 

  22. Panigrahi PK, Ghosh S, Parhi DR (2014) A novel intelligent mobile robot navigation technique for avoiding obstacles using RBF neural network. In: Proceedings of the 2014 international conference on control, instrumentation, energy and communication (CIEC). IEEE

  23. Kun Q, Tian-zhen W, Tian-hao T, Claramunt C (2014) A novel local BP neural network model and application in parameter identification of power system. In: 33rd Chinese control conference (CCC)

  24. Li X (2014) Study on traffic flow base on RBF neural network. In: 2014 sixth international conference on measuring technology and mechatronics automation (ICMTMA)

  25. Pimentel BA, de Carvalho ACPLF (2019) A new data characterization for selecting clustering algorithms using meta-learning. Inf Sci 477:203–219

    Article  Google Scholar 

  26. Chu X, Cai F, Cui C, Hu M, Li L, Qin Q (2018) Adaptive recommendation model using meta-learning for population-based algorithms. Inf Sci 476:192–210

    Article  Google Scholar 

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Acknowledgements

This work was supported by the Scientific and Technological Research Program of Chongqing Municipal Education Commission (Grant No. KJQN201801302), the Science and Technology Research Program of Chongqing Municipal Education Commission (Grant Nos. KJQN201801302, KJ1401128) and the Scientific and Technological Research Program of Chongqing Municipal Education Commission (Grant No. KJQN201801302).

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Li, P. Research on radar signal recognition based on automatic machine learning. Neural Comput & Applic 32, 1959–1969 (2020). https://doi.org/10.1007/s00521-019-04494-1

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