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Bearing fault detection using neural networks

机译:使用神经网络轴承故障检测

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摘要

In this paper we present an application for the Artificial Neural Networks in industrial monitoring domain. Because it is frequently defected, we chose the bearing element to diagnose. Applying the pattern recognition principle, we used the bearing vibration signals which represent this element in its different states (normal, defected and severely defected) to extract their power spectral density parameters and classify them using the Feed Forward Neural Networks. The performance of the used networks reached 100% in some cases.
机译:在本文中,我们在工业监测领域的人工神经网络申请。因为经常叛逃,我们选择了轴承元素诊断。应用模式识别原理,我们使用了轴承振动信号,该振动信号在其不同状态(正常,缺陷和严重缺陷)中表示该元素以提取其功率谱密度参数并使用馈送前进神经网络对它们进行分类。在某些情况下,二手网络的性能达到了100%。

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