基于卷积自编码器的燃气轮机运行无监督异常检测

G. G. Lee, Myungkyo Jung, Myoungwoo Song, J. Choo
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引用次数: 9

摘要

提出了一种将卷积神经网络与自编码器(CAE)相结合的工业燃气轮机无监督异常检测方法。自动监控系统保护燃气轮机,其设置在其使用寿命中保持不变。这些系统不能检测到任何异常的操作模式,这些模式在长期暴露后可能会危及设备。近年来,机器学习和深度学习模型被应用于工业领域,用于检测标称工作范围内的异常。然而,对于燃气轮机保护,深度学习(DL)模型的引入并不多。本文提出的CAE通过结合卷积神经网络(CNN)和自编码器(AE)来检测无监督学习中的不规则信号。CNN通过对空间输入数据中基本特征的提取能力,成倍地降低了计算成本,减少了训练数据的数量。CAE通过调整AE的特征来识别异常,AE可以识别比通常的预训练重构误差更大的错误。利用Keras库,我们开发了一维卷积层网络中的AE结构。我们使用传统机器学习(ML)模型的实际工厂运行数据集进行性能评估。与隔离森林(forest)、k-means聚类(k-means)和一类支持向量机(OCSVM)相比,我们的模型比传统的ML模型更准确地预测了实际操作中识别的异常信号模式。
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Unsupervised anomaly detection of the gas turbine operation via convolutional auto-encoder
This paper proposes a combination of convolutional neural network and auto-encoder (CAE) for unsupervised anomaly detection of industrial gas turbines. Autonomous monitoring systems protect the gas turbines, with the settings unchanged in their lifetime. Those systems can not detect any abnormal operation patterns which potentially risk the equipment after long-term exposure. Recently, machine learning and deep learning models are applied for industries to detect those anomalies under the nominal working range. However, for gas turbine protection, not much deep learning (DL) models are introduced. The proposed CAE detects irregular signals in unsupervised learning by combining a convolutional neural network (CNN) and auto-encoder (AE). CNN exponentially reduces the computational cost and decrease the amount of training data, by its extraction capabilities of essential features in spatial input data. A CAE identifies the anomalies by adapting characteristics of an AE, which identifies any errors larger than usual pre-trained, reconstructed errors. Using the Keras library, we developed an AE structure in one-dimensional convolution layer networks. We used actual plant operation data set for performance evaluation with conventional machine learning (ML) models. Compared to the isolation forest (iforest), k-means clustering (k-means), and one-class support vector machine (OCSVM), our model accurately predicts unusual signal patterns identified in the actual operation than conventional ML models.
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