交流发电机健康监测系统异常预测及剩余使用寿命

Lin Yong Wong, N. Yahya, M. N. Hamid, S. B. Hisham
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引用次数: 0

摘要

交流发电机在发电机中将机械能转化为电能方面起着至关重要的作用。一个有效的机器健康监测系统(MHMS)模型在为工厂操作员提供有洞察力的信息作为预防任何故障的措施方面是至关重要的。几项研究表明,在MHMS的开发中,数据驱动模型比基于物理的模型更有效。这是由于基于深度学习或机器学习的数据驱动模型在检测数据的微小变化方面具有鲁棒性和敏感性,这在机器工作状态发生变化时尤其有用。在这个项目中,我们将研究MHMS中的两种方法,即剩余使用寿命(RUL)和使用深度学习技术的异常预测。在深度学习技术中,选择卷积神经网络(CNN)和长短期记忆(LSTM)进行RUL预测和异常预测。特别地,将介绍基于cnn的MHMS与基于lstm的MHMS的性能比较。建议的RUL模型将用于确定发电机在发生重大故障之前剩余的循环总数。另一方面,在多元预测方法的基础上,发展基于LSTM的异常预测。简而言之,CNN模型对于RUL的预测效果比LSTM模型更好,RMSE最低为41.66,准确率高达99.89%,而对于多变量预测的异常预测,单层LSTM比堆叠LSTM的预测效果更好,准确率高达94.54%,RMSE低至0.113
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Prediction and Remaining Useful Life for Alternator Health Monitoring System
An alternator plays a vital role in conversion of mechanical energy into electrical energy in a generator. An effective model of Machine Health Monitoring System (MHMS) is paramount in providing insightful information for the plant operators as preventive measures against any failure. Several studies have shown the effectiveness of the data-driven model, over the physics-based model in the development of MHMS. This is due to the robustness and sensitivity of the data-driven model based on deep learning or machine learning in detecting the small changes of the data which is especially useful when there are changes in the working state of the machine. In this project, we will investigate two approaches in MHMS namely Remaining Useful Life (RUL) and anomaly prediction using deep learning techniques. Among the deep learning techniques, Convolutional Neural Network (CNN) and Long-Short Term Memory (LSTM) for RUL prediction and anomaly prediction are chosen to be further analysed. In particular, the performance of CNN-based MHMS will be presented in comparison with the LSTM-based MHMS. The proposed RUL model will be used to identify the total number of cycles left for the generator before a major breakdown. On the other hand, anomaly prediction based on LSTM would be developed based on the multivariate forecasting method. In short, CNN model works better for the RUL prediction with the lowest RMSE value of 41.66 and accuracy up to 99.89% as compared to LSTM model whereas for the anomaly prediction through multivariate forecasting, singlelayered LSTM has a better performance as compared to stacked LSTM with accuracy up to 94.54% and RMSE value as low as 0.113
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