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Automated Bearing Fault Detection via Long Short-Term Memory Networks

机译:通过长短期记忆网络自动检测轴承故障

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This paper presents a method for automated bearing fault detection via motor current analysis using Long Short-Term Memory networks. Minimal pre-processing is applied to current signals. The proposed approach is experimentally validated on a laboratory trial comprising different test sets for condition monitoring and fault diagnosis of a 6-poles induction motor. Preliminary results confirmed the effectiveness of the proposed method to detect various bearing faults under different operating conditions, such as: shaft radial load and output torque.
机译:本文提出了一种使用长短期记忆网络通过电动机电流分析自动检测轴承故障的方法。最小的预处理应用于当前信号。所提出的方法在包括不同测试装置的实验室试验中得到了实验验证,用于6极感应电动机的状态监测和故障诊断。初步结果证实了该方法在不同工况下检测各种轴承故障的有效性,例如:轴径向载荷和输出扭矩。

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