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The influence of feature vector on the classification of mechanical faults using neural networks

机译:特征向量对神经网络机械故障分类的影响

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This paper investigates the problem of automatic detection of rotating-machine faults based on vibration signals acquired during machine operation. In particular, two new signal features, namely the kurtosis and entropy, are considered along with main spectral peaks to discriminate between several machine conditions: normal operation, (vertical and horizontal) misalignment, unbalanced load and bearing faults. Moreover, the inclusion of one set of three accelerometers for each roller bearing associated to the system acquiring more vibration signals also affects the generation of feature vector and is part of our proposal. In order to evaluate the rotating machine fault classification, a database of 1951 fault scenarios with several different fault intensities and rotating frequencies was designed and recorded, taking into consideration the specificities of the proposed machine learning task. The artificial neural networks recognition system employed in this work reached 95.8% of overall accuracy, showing the efficiency of the proposed approach.
机译:本文研究了基于机器运行过程中获得的振动信号自动检测旋转机器故障的问题。特别是,考虑了两个新的信号特征,即峰度和熵以及主要频谱峰,以区分几种机器状况:正常运行,(垂直和水平)失准,不平衡负载和轴承故障。此外,为每个与系统关联的滚动轴承获取更多的振动信号包含一套三个加速度计,也会影响特征向量的生成,这也是我们建议的一部分。为了评估旋转机械故障分类,设计并记录了1951年具有几种不同故障强度和旋转频率的故障场景的数据库,并考虑了所提出的机器学习任务的特殊性。在这项工作中使用的人工神经网络识别系统达到了总体准确率的95.8%,表明了该方法的有效性。

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