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Anomaly Detection of Power Plant Equipment Using Long Short-Term Memory Based Autoencoder Neural Network

机译:基于长短期内存的自动化网络神经网络的电厂设备的异常检测

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摘要

Anomaly detection is of great significance in condition-based maintenance of power plant equipment. The conventional fixed threshold detection method is not able to perform early detection of equipment abnormalities. In this study, a general anomaly detection framework based on a long short-term memory-based autoencoder (LSTM-AE) network is proposed. A normal behavior model (NBM) is established to learn the normal behavior patterns of the operating variables of the equipment in space and time. Based on the similarity analysis between the NBM output distribution and the corresponding measurement distribution, the Mahalanobis distance (MD) is used to describe the overall residual (OR) of the model. The reasonable range is obtained using kernel density estimation (KDE) with a 99% confidence interval, and the OR is monitored to detect abnormalities in real-time. An induced draft fan is chosen as a case study. Results show that the established NBM has excellent accuracy and generalizability, with average root mean square errors of 0.026 and 0.035 for the training and test data, respectively, and average mean absolute percentage errors of 0.027%. Moreover, the abnormal operation case shows that the proposed framework can be effectively used for the early detection of abnormalities.
机译:异常检测对于电厂设备的条件维护具有重要意义。传统的固定阈值检测方法不能进行早期检测设备异常。在该研究中,提出了一种基于长短期存储基的AutoEncoder(LSTM-AE)网络的一般异常检测框架。建立正常行为模型(NBM)以了解空间和时间在设备的操作变量的正常行为模式。基于NBM输出分布与相应测量分布之间的相似性分析,Mahalanobis距离(MD)用于描述模型的整体残差(或)。使用具有99%置信区间的核密度估计(KDE)获得合理的范围,并且监测或监测以实时检测异常。选择诱导的风扇作为案例研究。结果表明,已建立的NBM具有出色的准确性和普遍性,平均均均线为0.026和0.035,分别为培训和测试数据,平均平均百分比误差为0.027%。此外,异常操作情况表明,所提出的框架可以有效地用于早期检测异常。

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