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Classification Type of Weapon Using Artificial Intelligence for Counter-battery RadarPaper Title

인공지능을 이용한 대포병탐지레이더의 탄종 식별

  • Received : 2020.10.13
  • Accepted : 2020.12.18
  • Published : 2020.12.31

Abstract

The Counter-battery radar estimates the origin and impact point of the artillery by tracking the trajectory of the shell. In addition, it has the ability of identifying the type of weapon. Depending on the position between the shell and the radar, the detected signals appear differently. This has ambiguity to distinguish the type of shells. This paper compares fuzzy logic and artificial intelligence, which classifies type of shell using the parameter of signal processing step. According to the research result, artificial intelligence can improve identification rate of type of shell. The data used in the experiment was obtained from a live fire detection test.

대포병탐지레이더는 포탄의 궤적을 역으로 추적하여 화포 원점과 탄착점을 추정해 낸다. 부가적으로 추적 화포의 탄종을 식별하는 기능도 포함된다. 레이더를 통해 포탄의 궤적을 추적하는 중에는 포탄과 레이더의 위치에 따라 감지된 신호들이 다르게 나타나는 경우가 발생한다. 이는 포탄의 종류를 식별하기에는 모호한 부분이 있다. 본 논문은 레이더의 신호처리 과정 중에 산출하는 데이터를 바탕으로 퍼지이론과 인공지능을 이용하여 포탄의 종류를 구분하고 비교하였다. 연구 결과에 의하면 인공지능에 의한 정확도가 퍼지이론을 사용한 표적 식별 결과 대비 우수한 식별률이 나오는 것을 확인했다. 실험에 사용된 데이터는 포탄을 실제 발사하여 대포병탐지레이더-II로부터 얻은 것이다.

Keywords

References

  1. BAE Systems, "Combat Identification (IFF)," Roland Bros, https://www.baesystems.com/en/product/iff-fa mily/
  2. Lord Bowden, "The story of IFF (identification friend or foe)," IEEE Proceedings A-Physical Science, Measurement and Instrumentation, Management and Education, Reviews, Vol.132, No.65, pp.435-437, 1985. DOI: 10.1049/ip-a-1.1985.0079
  3. FM 3-09.12 (FM 6-121) MCRP 3-16.1A Tactics, Techniques, and Procedures for Field Artillery Target Aquisition, US Army, 2002.
  4. Van Veen, B. D.; Buckley, K. M., "Beam forming: A versatile approach to spatial filtering," IEEE ASSP Magazine, Vol.5, No.2, pp.4-24, 1988. DOI: 10.1109/53.665
  5. Mehmet S. Seyfioglu, Baris Erol, Sevgi Z. Gurbuz, and Moeness G. Amin, "Diversified Radar Micro-Doppler Simulations as Training Data for Deep Residual Neural Networks," Proc. IEEE Radar Conf., pp.0612-0617, 2018. DOI: 10.1109/RADAR.2018.8378629
  6. U. Nickel, "Fundamentals of signal processing for phased array radar in Advanced Radar Signal and Data Processing," Neuilly-sur-Seine, France: NATO Research & Technology Organisation (RTO), pp.1-1, 2006.
  7. William L. Melvin, James A. Scheer, "Principles of modern radar advanced techniques," SciTech Publishing, 2013.
  8. Heung-joo Lee, "Gun and ballistics," Cheong Moon Gak, 1998.
  9. Robert, F. L. "Determination of Aerodynamic Drag and Exterior Ballistic Trajectory Simulation for The 155 mm, DPICM M864 Base-Burn Projectile," ARMY BALLISTIC RESEARCH LAB ABERDEEN PROVING GROUND MD, 1989.
  10. Zadeh L.A., "Fuzzy sets," Information and Control, Vol.8, No.3, pp.3.38-353, 1965. DOI: 10.1016/S0019-9958(65)90241-X
  11. J. Jantzen. J. Jantzen. "Foundations of fuzzy control," Wiley, 2007.
  12. E. J. Teoh, K. C. Tan, and C. Xiang, "Estimating the number of hidden neurons in a feedforward network using the singular value decomposition," IEEE Transactions on Neural Networks, vol.17, pp.1623-1629, 2006. DOI: 10.1109/TNN.2006.880582
  13. N. Wanas, G. Auda, M. S. Kamel, and F. Karray, "On the optimal number of hidden nodes in a neural network, in Electrical and Computer Engineering," IEEE Canadian Conference on Electrical and Computer Engineering, pp.918-921, 1998. DOI: 10.1109/CCECE.1998.685648
  14. K. Chen, S. Yang, and C. Batur, "Effect of multi-hidden-layer structure on performance of BP Neural network: Probe," in Natural Computation (ICNC), 2012 Eighth International Conference, pp.1-5, 2012. DOI: 10.1109/ICNC.2012.6234604
  15. J. De Villiers, E. Barnard, "Backpropagation neural nets with one and two hidden layers," IEEE Transactions on Neural Networks, vol.4, pp.136-141, 1993. DOI: 10.1109/72.182704
  16. N. Karayiannis, A. N. Venetsanopoulos, "Artificial neural networks: learning algorithms, performance evaluation, and applications vol. 209:" Springer Science & Business Media, 2013.
  17. K. Mehrotra, C. K. Mohan, and S. Ranka, "Elements of artificial neural networks:" MIT press, 1997.
  18. Seung-Jae Lee, Sung-Jae Jung, Byung-Soo Kang, Hyung-gi Na, Hyun Kim, Kyung-Tae Kim, "A Study on Shell-Shaped Target Classification Using RCS and Fuzzy Classifier," The Journal of Korean Institute of Electromagnetic Engineering and Science, Vol.25, No.5, pp.576-584, 2014. DOI: 10.5515/KJKIEES.2014.25.5.576