Real-Time Estimation of Missile Debris Predicted Impact Point and Dispersion Using Deep Neural Network

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초록

If a failure or an abnormal maneuver occurs during the flight test of a missile, the missile is deliberately self-destructed so as not to continue the flight. At this time, debris are produced and it is important to estimate the impact area in real-time whether it is out of the safety area. In this paper, we propose a method to estimate the debris dispersion area and falling time in real-time using a Fully-Connected Neural Network (FCNN). We applied the Unscented Transform (UT) to generate a large amount of training data. UT parameters were selected by comparing with Monte-Carlo (MC) simulation to secure reliability. Also, we analyzed the performance of the proposed method by comparing the estimation result of MC.

키워드

Deep Neural NetworkUnscented TransformPredicted Impact PointMissile Debris DispersionFlight Test
제목
Real-Time Estimation of Missile Debris Predicted Impact Point and Dispersion Using Deep Neural Network
저자
Kang, Tae YoungPark, Kuk-KwonKim, Jeong-HunRyoo, Chang-Kyung
DOI
10.5139/JKSAS.2021.49.3.197
발행일
2021
유형
Article
저널명
한국항공우주학회지
49
3
페이지
197 ~ 204