基于分类驱动SAE的油品监测数据异常识别

Huimin Gao, Zhijun Chen, Fanhao Zhou, Dayang Li, Kun Yang, Xinfa Shi
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引用次数: 0

摘要

为了准确了解设备的运行状态,及时监测油品状态数据的异常情况,有效提取油品监测数据中的异常数据信息,本文建立了分类驱动的SAE油品监测数据异常识别模型。数据的非线性特性预测了石油数据的状态。将采集到的油品监测数据引入标签信息,然后对数据进行预处理。采用层叠式自编码器(SAE)提取油液监测数据中的深层特征。在编码阶段,利用带标签的油品监测数据训练网络实现异常数据的识别。实验结果表明:与bp神经网络(Back Propagation Neural Network, BPNN)和支持向量机(Support Vector Machine, SVM)分类器相比,分类驱动的堆叠式自编码器具有更高的异常识别精度,能够有效地检测出油品监测数据中的异常数据,从而识别出设备状态的异常监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abnormal Identification of Oil monitoring Data Based on Classification-Driven SAE
In order to accurately understand the operating state of the equipment, monitor the abnormality of the oil state data in time, and effectively extract the abnormal data information in the oil monitoring data, this paper established a classification-driven SAE oil monitoring data abnormality recognition model. The nonlinear characteristics of the data predicted the state of the oil data. The label information is introduced into the collected oil monitoring data, and then the data is preprocessed. The deep features in the oil monitoring data are extracted by the stacked autoencoder (SAE). In the coding stage, the oil monitoring data training network with labels is used to realize the identification of abnormal data. The experimental results showed that: Compared with the Back Propagation Neural Network (BPNN) and the Support Vector Machine (SVM) classifier, the classification-driven stacked autoencoder had higher anomaly identification accuracy and could effectively detect abnormal data in oil monitoring data, so as to identified the abnormal monitoring of equipment status.
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