Jin Weihua, Zhang Shijie, Sun Bo, Jin Pengli, Li Zhidong
Research Center of Satellite Technology, Harbin Institute of Technology, Harbin 150080, China.
Beijing Institute of Spacecraft System Engineering, Beijing 100094, China.
Sensors (Basel). 2022 Feb 25;22(5):1819. doi: 10.3390/s22051819.
The satellite power subsystem is responsible for all power supply in a satellite, and is an important component of it. The system's performance has a direct impact on the operations of other systems as well as the satellite's lifespan. Sequence to sequence (seq2seq) learning has recently advanced, gaining even more power in evaluating complicated and large-scale data. The potential of the seq2seq model in detecting anomalies in the satellite power subsystem is investigated in this work. A seq2seq-based scheme is given, with a thorough comparison of different neural-network cell types and levels of data smoothness. Three specific approaches were created to evaluate the seq2seq model performance, taking into account the unsupervised learning mechanism. The findings reveal that a CNN-based seq2seq with attention model under suitable data-smoothing conditions has a better ability to detect anomalies in the satellite power subsystem.
卫星电源子系统负责卫星中的所有电力供应,是卫星的重要组成部分。该系统的性能直接影响其他系统的运行以及卫星的寿命。序列到序列(seq2seq)学习最近取得了进展,在评估复杂和大规模数据方面变得更加强大。这项工作研究了seq2seq模型在检测卫星电源子系统异常方面的潜力。给出了一种基于seq2seq的方案,并对不同的神经网络单元类型和数据平滑程度进行了全面比较。考虑到无监督学习机制,创建了三种具体方法来评估seq2seq模型的性能。研究结果表明,在合适的数据平滑条件下,基于卷积神经网络(CNN)的带有注意力模型的seq2seq在检测卫星电源子系统异常方面具有更好的能力。