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Neural Network Approach to Vibration Feature Selection and Multiple Fault Detection for Mechanical Systems

机译:机械系统振动特征选择和多故障检测的神经网络方法

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Correct feature selection is critically important to any feature-based diagnostic techniques, but it is not always easy to achieve for systems with complex fault modes. This paper proposes an artificial intelligence methodology for mechanical fault detection using vibration data, which incorporates intelligent feature optimization. After preliminary feature extraction through spectrum analysis of measured vibration signals, this approach uses backpropagation neural network twice, first for feature reselection and then for fault detection. Applications of this method to over fifty lubrication pumps proved its effectiveness.
机译:正确的特征选择对于任何基于特征的诊断技术都至关重要,但是对于具有复杂故障模式的系统而言,实现这一点并不总是那么容易。本文提出了一种使用振动数据进行机械故障检测的人工智能方法,该方法结合了智能特征优化。通过对测得的振动信号进行频谱分析初步提取特征后,该方法使用了反向传播神经网络两次,首先用于特征重选,然后用于故障检测。该方法在五十多个润滑泵上的应用证明了其有效性。

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