基于双向长短期记忆法的异步电动机故障类型分类

Ahmet Ali Süzen, K. Kayaalp
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引用次数: 0

摘要

确定在许多工业应用中使用的感应电动机的初始故障水平是很重要的。通过对故障的预检测,可以防止系统的突然停机。建立了检测感应电机机械不平衡和短路故障的实验机构。在故障时测量并保存电流值。结果,得到了由3个相电流组成的9000个数据。本研究建立了一种基于长短时记忆(LSTM)的深度神经网络,根据故障类型对异步电动机进行分类。在神经网络的训练中,使用了3个输入参数和1个输出参数的3种分类类型。它被保留用于训练60%的数据,40%用于测试数据集中的模型。利用LSTM模型对故障类型进行分类,准确率达到98.5%,平均绝对误差值为1.12。实验结果表明,所提出的双lstm网络可以用于异步电动机的故障检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Induction Motors by Fault Type with bidirectional Long-Short Term Memory Method
It is important to determine the initial level of failures of induction motors used in many industrial applications. The sudden stops of the system can be prevented with the pre-detection of the fault. The experiment mechanism was established to detect mechanical unbalance and short circuit faults in the induction motors. Current values were measured and saved at fault time. As a result, 9.000 data were obtained consisting of 3 phase currents. In this study, a Long-Short Term Memory (LSTM) deep neural network has been developed that classification of induction motors by fault type. In the training of the neural network, 3 input parameters and 3 classification types of 1 output parameter are used. It was reserved for training 60% of data and 40% for testing the model in the dataset. As a result of the fault type classification with the LSTM model, 98.5% accuracy and 1.12 average absolute error value were obtained. It has been shown that the proposed bi-LSTM network can be used for fault detection of asynchronous motors.
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