Parachute Deployment Fault Identification and Landing Point Prediction of Spacecraft Recovery System Based on Swin Transformer and Edge Detection

Yilan Bai, Qibin Hu, Yu Long, Ke Ma, Chuangye Zhao,Mengying Zhang

2022 5th International Conference on Mechatronics, Robotics and Automation (ICMRA)(2022)

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摘要
The recovery and landing process of spacecraft requires a high level of safety and reliability. In this paper, we focus on the parachute of the spacecraft recovery system, investigating the method of open state identification and landing point prediction. A deep-learning-based method of opening fault identification and accurate landing point prediction of the spacecraft recovery system is proposed. On the basis of a 3-DOF dynamic model of the parachute and payload system, combined with the effects of wind fields, we built a framework for predicting the landing point of the recovery system. A dataset of parachute-opening images and complete labels was established from video data photographed in previous airdrop experiments. Integrate the well-trained Swin Transformer in the landing-point prediction framework to determine whether the parachute opens normally. Calculate the characteristic drag area of the parachute with edge detection using Sobel filter. Furthermore, real-time correction of the recovery system dynamics parameters is used to obtain a complete opening fault identification and landing point prediction system of the spacecraft recovery system.
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关键词
parachute,opening process,recovery system dynamics,fault identification,Swin Transformer,edge detection
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