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Fault detection and isolation for a small CMG-based satellite: A fuzzy Q-learning approach

机译:基于CMG的小型卫星的故障检测和隔离:一种模糊的Q学习方法

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The model-based fault detection and isolation (FDI) methods are used to detect faults in small satellites when actuator redundancy may not be feasible due to weight, cost, and space limitations. In this paper, fuzzy logic and Q-learning are combined for FDI for small control momentum gyroscope (CMG)-based satellites. The fuzzy logic is good in handling the nonlinear structures of CMG, while the Q-learning provides online learning capabilities. Fuzzy logic, which is based on residual analysis, will be used to find faults in CMGs. Using residuals, fuzzy inference systems develop rules based on membership functions. However, optimization problems arise in fuzzy logic. To overcome this drawback, the Q-learning will be used to compensate for it; that is, by using Q-learning, we can obtain optimal rules in fuzzy inference systems. To achieve these goals, hierarchical dynamics and motor faults will be considered for the generation of residuals, which involves the processing of a large amount of information. The validity of the proposed fuzzy Q-learning-based FDI is demonstrated through simulations. (C) 2015 Elsevier Masson SAS. All rights reserved.
机译:当由于重量,成本和空间限制而导致执行器冗余不可行时,基于模型的故障检测和隔离(FDI)方法用于检测小型卫星中的故障。本文将基于模糊逻辑和Q学习的FDI相结合,用于基于小控制动量陀螺仪(CMG)的卫星。模糊逻辑擅长处理CMG的非线性结构,而Q学习则提供在线学习功能。基于残差分析的模糊逻辑将用于发现CMG中的故障。使用残差,模糊推理系统根据隶属函数开发规则。然而,优化问题出现在模糊逻辑中。为了克服这个缺点,将使用Q学习对其进行补偿。也就是说,通过Q学习,可以得到模糊推理系统的最优规则。为了实现这些目标,将考虑层次动力学和电机故障来生成残差,这涉及大量信息的处理。通过仿真证明了所提出的基于模糊Q学习的FDI的有效性。 (C)2015 Elsevier Masson SAS。版权所有。

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