基于自回归移动平均模型和神经网络的航天器反作用轮故障检测与识别

Ehab A. Omran, Wael A. Murtada
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引用次数: 5

摘要

航天器姿态确定与控制系统(ADCS)是近地轨道卫星运行过程中对指向精度要求很高的关键子系统之一。因此,在多年的研究中,快速可靠的故障检测与识别技术越来越受到重视。本文通过区分反作用轮内部可能出现的过压、欠压、电流损耗、温度升高、温度升高等故障特征,对作为ADCS一部分的航天器反作用轮的FDI进行了改进和修正。基于三轴航天器反作用轮动态数学模型和神经网络分类器,采用自回归移动平均(ARMA)模型对正常和故障数据进行故障诊断。结果表明,该方法成功地完成了故障检测和识别。
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Fault Detection and Identification of spacecraft reaction wheels using Autoregressive Moving Average model and neural networks
Spacecraft Attitude Determination and Control System (ADCS) is considered to be one of the most critical subsystem of the low earth orbit satellites due to the pointing accuracy required during its operation. Consequently a fast and reliable Fault Detection and Identification (FDI) technique is obtaining more significant weight meanwhile years of researches. This paper presents a procedure to ameliorate and amend the (FDI) of a spacecraft reaction wheel as a part of the (ADCS) by differentiating the signatures of possible faults which could be occurred inside the reaction wheel such as over voltage, under voltage, current loss, temperature increase, and hybrid faults using Autoregressive Moving Average (ARMA) model for either normal and faulty data based on the behavior of a dynamic mathematical model of 3-axis spacecraft reaction wheel and neural network classifier. The results demonstrate that the fault detection and identification are successfully accomplished.
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