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An Adaptive Threshold Based on RBF Neural Network for Fault Detection of a Nonlinear System

机译:基于RBF神经网络的自适应阈值在非线性系统故障诊断中的应用。

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Considering the drawback of the big error when using fixed threshold in fault detection, this paper presented a practical approach to combine RBF-based fault detection observer with an adaptive threshold. Firstly, a fault detection observer based on RBF neural network was applied to generate a residual error signal. Secondly, several key factors in adaptive threshold model were outlined, such as modeling error, random disturbance, input instructions, system status and etc. In order to avoid the above errors, the observer model was modified to combine with an adaptive threshold based on RBF neural network as well. Finally, the suitability of the proposed technique was illustrated through its application to the condition monitoring of an E-cabin temperature control system. It is very effective to adaptively adjust the fault threshold according to a variety of influencing factors.
机译:考虑到在故障检测中使用固定阈值时存在较大误差的缺点,本文提出了一种将基于RBF的故障检测观察器与自适应阈值相结合的实用方法。首先,基于RBF神经网络的故障检测观测器被用于产生残余误差信号。其次,概述了自适应阈值模型中的几个关键因素,如建模误差,随机扰动,输入指令,系统状态等。为了避免上述错误,对观察者模型进行了修改,使其与基于RBF的自适应阈值相结合。神经网络也是如此。最后,通过将其应用于电子客舱温度控制系统的状态监测中,说明了所提出技术的适用性。根据各种影响因素自适应地调整故障阈值是非常有效的。

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