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A gray-box neural network-based model identification and fault estimation scheme for nonlinear dynamic systems

机译:基于灰箱神经网络的非线性动力学系统模型辨识与故障估计

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摘要

A novel gray-box neural network model (GBNNM), including multi-layer perception (MLP) neural network (NN) and integrators, is proposed for a model identification and fault estimation (MIFE) scheme. With the GBNNM, both the nonlinearity and dynamics of a class of nonlinear dynamic systems can be approximated. Unlike previous NN-based model identification methods, the GBNNM directly inherits system dynamics and separately models system nonlinearities. This model corresponds well with the object system and is easy to build. The GBNNM is embedded online as a normal model reference to obtain the quantitative residual between the object system output and the GBNNM output. This residual can accurately indicate the fault offset value, so it is suitable for differing fault severities. To further estimate the fault parameters (FPs), an improved extended state observer (ESO) using the same NNs (IESONN) from the GBNNM is proposed to avoid requiring the knowledge of ESO nonlinearity. Then, the proposed MIFE scheme is applied for reaction wheels (RW) in a satellite attitude control system (SACS). The scheme using the GBNNM is compared with other NNs in the same fault scenario, and several partial loss of effect (LOE) faults with different severities are considered to validate the effectiveness of the FP estimation and its superiority.
机译:提出了一种新颖的灰箱神经网络模型(GBNNM),包括多层感知(MLP)神经网络(NN)和积分器,用于模型识别和故障估计(MIFE)方案。使用GBNNM,一类非线性动力学系统的非线性和动力学都可以近似。与以前的基于NN的模型识别方法不同,GBNNM直接继承系统动力学并单独对系统非线性进行建模。该模型与对象系统非常吻合,易于构建。 GBNNM作为常规模型参考在线嵌入,以获取对象系统输出和GBNNM输出之间的定量残差。此残差可以准确指示故障偏移值,因此适用于不同的故障严重性。为了进一步估计故障参数(FP),提出了使用来自GBNNM的相同NN(IESONN)的改进的扩展状态观察器(ESO),以避免需要ESO非线性知识。然后,将提出的MIFE方案应用于卫星姿态控制系统(SACS)中的反作用轮(RW)。将使用GBNNM的方案与同一故障场景下的其他NN进行比较,并考虑了几种具有不同严重程度的局部效应(LOE)故障,以验证FP估计的有效性及其优越性。

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