Gas Turbine Anomaly Prediction using Hybrid Convolutional Neural Network with LSTM in Power Plant

F. Zhultriza, Aries Subiantoro
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Abstract

The fault and anomaly of real-time performance gas turbine data are difficult to predict because of the complexity of feature data and dynamically time series. In the case of real performance gas turbine, the complexity of the physical model is hard to interpret. In deep learning, the Convolutional Neural Network (CNN) is used to perform the identification of data with great feature extraction. But, since CNN is poorly accurate for time-series data, the prediction for gas turbine anomaly could be hardly optimized. Another neural network method that can interact with time-series data is Recurrent Neural Network (RNN), especially, the Long Short-Term Memory (LSTM) that can deal with the vanishing gradient problem in traditional RNN. This paper aims to develop hybrid CNN-LSTM as a proposed method to predict gas turbine anomaly more accurately than single CNN. The accuracy of the single CNN method is 81.33%. With the addition of LSTM in the same CNN architecture, the accuracy of hybrid CNN-LSTM is 91.79%. The accuracy of model data is significantly increased by adding LSTM layer after the convolutional and pooling layer.
基于混合卷积神经网络和LSTM的电厂燃气轮机异常预测
由于特征数据和动态时间序列的复杂性,燃气轮机实时性能数据的故障和异常难以预测。在真实性能燃气轮机的情况下,物理模型的复杂性很难解释。在深度学习中,使用卷积神经网络(CNN)对具有大量特征提取的数据进行识别。但是,由于CNN对时间序列数据的准确性较差,对燃气轮机异常的预测很难优化。另一种可以与时间序列数据交互的神经网络方法是递归神经网络(RNN),特别是传统RNN中可以解决梯度消失问题的长短期记忆(LSTM)。本文旨在发展混合CNN- lstm作为一种比单一CNN更准确预测燃气轮机异常的方法。单一CNN方法的准确率为81.33%。在相同的CNN架构下加入LSTM,混合CNN-LSTM的准确率为91.79%。在卷积层和池化层之后加入LSTM层,可以显著提高模型数据的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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