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On-line fault detection and diagnosis obtained by implementing neural algorithms on a digital signal processor

机译:通过在数字信号处理器上实施神经算法获得的在线故障检测和诊断

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摘要

A measurement instrument for on-line fault detection and diagnosis is proposed. It is based on the implementation of a neural network algorithm on a processor specialized in digital signal processing and provided with suitable data acquisition and generation units. Two specific implementations are detailed. The former uses the neural-network to simulate on-line the correct system behavior, thus allowing the fault detection to be achieved by comparing the neural network output with the measured one. The latter uses the neural network to classify on-line the system as correct or faulty, thus allowing the fault detection and diagnosis to be achieved simultaneously. These two implementations are applied to detect on-line and diagnose faults on a real system in order to point out different fields of application and to highlight the performance of the measurement apparatus.
机译:提出了一种在线故障检测与诊断的测量仪器。它基于神经网络算法在专用于数字信号处理的处理器上的实现,并配有合适的数据采集和生成单元。详细介绍了两个具体的实现。前者使用神经网络在线模拟正确的系统行为,从而可以通过将神经网络输出与测量值进行比较来实现故障检测。后者使用神经网络将系统在线分类为正确或有故障,从而允许同时进行故障检测和诊断。这两种实现方式用于检测在线和诊断实际系统中的故障,以便指出不同的应用领域并突出显示测量设备的性能。

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