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A Recurrent Neural Networks based Method for Fault Diagnosis of Three-way Catalytic Converter

机译:基于递归神经网络的三元催化转化器故障诊断方法

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Three way catalytic converter (TWCC) is an important component in the process of vehicle exhaust after- treatment. The performance of TWCC is often affected by a number of serious faults that are not easy to be detected. Thus, intelligent fault diagnosis for TWCC is necessary. In our proposed approach, two recurrent neural networks(RNN) are implemented for extracting the fault features from the original experimental data and diagnosing the faults of TWCC respectively. The first RNN can decompose TWCC state data information structurally and complete the refined description of state information. The second RNN have a fully connected structure of feedback networks that can be used for fault classification. In this case, TWCC can be perfectly diagnosed by our proposed approach. Experiments also illustrate the merits and effectiveness of the proposed approach.
机译:三效催化转化器(TWCC)是车辆尾气后处理过程中的重要组成部分。 TWCC的性能通常受许多不易检测到的严重故障的影响。因此,有必要对TWCC进行智能故障诊断。在我们提出的方法中,实现了两个递归神经网络(RNN),分别从原始实验数据中提取故障特征并分别诊断TWCC的故障。第一RNN可以在结构上分解TWCC状态数据信息,并完成状态信息的精炼描述。第二个RNN具有可用于故障分类的反馈网络的完全连接结构。在这种情况下,可以通过我们提出的方法完美地诊断TWCC。实验还说明了该方法的优点和有效性。

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