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A Time-frequency Signal-based Convolutional Neural Network Algorithm for Fault Diagnosis of Gasoline Engine Fuel Control System

机译:基于时频信号的卷积神经网络算法在汽油机燃油控制系统故障诊断中的应用

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摘要

This study aims to apply the convolutional neural network algorithm to diagnose the fault of the gasoline engine fuel control system. First, run the system in the Simulink environment and get its operational data, including Fuel, Fuel/air ratio. However, in order to improve the robustness of the proposed method, additive white Gaussian noise is added to the signal. Then the short-time Fourier transform is used to obtain the characteristics of time, frequency and amplitude, and become the data source of neural network modeling. The experimental results show that the 16-layer convolutional neural network architecture can completely diagnose the operating state of the system, including normal and four types of faults. At the same time, it has the advantage of computational efficiency. In the future research work, compound faults, variable speed conditions and algorithm optimization are the key points. It is expected that the operation and maintenance of the plant can be more intelligent, so as to reduce the probability of machine abnormalities and accidents, so that life and property can be better protected.
机译:本研究旨在将卷积神经网络算法应用于汽油机燃油控制系统的故障诊断。首先,在Simulink环境中运行系统并获取其运行数据,包括燃料,燃料/空气比率。然而,为了提高所提出方法的鲁棒性,将加性高斯白噪声添加到信号中。然后利用短时傅立叶变换获得时间,频率和幅度的特征,成为神经网络建模的数据源。实验结果表明,该16层卷积神经网络体系结构可以完全诊断系统的运行状态,包括正常故障和四种类型的故障。同时,它具有计算效率的优势。在未来的研究工作中,复合故障,变速条件和算法优化是关键。期望工厂的运营和维护可以更加智能化,从而减少机器异常和事故的可能性,从而可以更好地保护生命和财产。

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