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Neural network multi-model based method of fault diagnostics of actuators

机译:基于神经网络多模型的执行器故障诊断方法

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This paper introduces an artificial neural network based technique which is capable of distinguishing among different types of faulty states of the analysed system and generating signals to alarm the user about the failures in the system. The developed method can detect, separate and identify faults in the system. Large datasets were generated to train the separator networks. A novel active learning method was developed to speed up the training process of separator network. To find the weakness of the separator's mathematical structure, a complex test process was used where the size of the different faults was varied and the actual performance of the structure was examined. The examination had two parts: a) the appearance and termination of the faults were tested; b) the estimation of the fault size was verified. The separator technique requires mathematical models of the analysed system. In this case, the models were also based on feedforward neural networks with tapped delay line. The developed technique was tested on a traditional vehicle starter motor.
机译:本文介绍了一种基于人工神经网络的技术,该技术能够区分所分析系统的不同类型的故障状态,并生成信号以警告用户有关系统中的故障。所开发的方法可以检测,分离和识别系统中的故障。生成了大型数据集来训练分离器网络。开发了一种新颖的主动学习方法,以加快分离器网络的训练过程。为了发现分离器数学结构的弱点,使用了复杂的测试过程,其中改变了不同故障的大小,并检查了结构的实际性能。检查包括两个部分:a)测试了故障的出现和终止; b)验证了故障大小的估计。分离器技术需要所分析系统的数学模型。在这种情况下,模型还基于带有抽头延迟线的前馈神经网络。这项开发的技术已在传统的汽车起动机马达上进行了测试。

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