基于LSTM网络的油颗粒污染预测研究

Liangliang Zhai, Kun Yang, Biao Hu, Shuai Li
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引用次数: 0

摘要

油液监测技术作为设备状态监测的主要技术之一,对评价设备的现状、预测设备的发展趋势具有极其重要的作用。本文利用某电厂的历史数据,建立了LSTM神经网络。采用交叉验证方法,并在同一测试集中与流行的时间序列预测算法LSM、ARIMA、BPNN、SVR和RFR进行比较,LSTM的RMSE值最低,为42.26,验证了LSTM神经网络在油颗粒污染预测中的适用性和准确性。
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Study on the oil particle contamination forecasting Using LSTM network
As one of the main techniques of equipment condition monitoring, oil monitoring technology plays an extremely important role in evaluating the current state of equipment and predicting the development trend of equipment. In this paper, the LSTM neural networks was established by the historical data collected by a power plant. Using the cross validation method, and compared whit the popular time series prediction algorithm LSM, ARIMA, BPNN, SVR and RFR in the same test set, LSTM got the lowest RMSE value 42.26, which validates the applicability and accuracy of the LSTM neural network in the prediction of oil particle contamination.
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