基于SIS数据的火电厂引风机正常行为模型早期异常识别

Di Hu, Sheng Guo, Gang Chen, Cheng Zhang, Dongzhen Lv, Bing Li, Chen Qianming
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引用次数: 1

摘要

本文提出了一种新的思想,即基于主成分分析,为每个特定设备建立多输入多输出的正常行为模型——非线性自回归外生模型(PCA-NARX)。从SIS中选择对状态监测感兴趣的运行参数作为某一设备的一个集合,并根据参数之间的相关关系和各参数之间的自相关关系构建相应的NBM。该方法可以实时确定各运行参数的合理范围,比传统的固定阈值法更快地检测出异常运行参数。结合中国沙角C电厂3号机组1号引风机历史运行数据,汇总引风机12个状态监测感兴趣的运行参数。本工作使用MATLAB对所提出的方法进行了验证和分析。研究发现,建立的引风机早期异常识别NBM能够实现对故障的快速响应,并在故障早期报警。此外,该方法可方便地应用于火电厂其他机械设备,具有良好的工程应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Induced Draft Fan Early Anomaly Identification Based on SIS Data Using Normal Behavior Model in Thermal Power Plant
In this work, a new idea was proposed that establishes normal behavior model (NBM) with multiple inputs and multiple outputs for each specific equipment based on Principle components analysis — Nonlinear autoregressive exogenous model (PCA-NARX) a kind of ANN. The operating parameters interested in condition monitoring are selected from SIS as an aggregation for a certain equipment, and the corresponding NBM is constructed based on the co-relation among parameters and the autocorrelation in each parameter. Each operating parameter can determine a reasonable range in real time by NBM, so it can detect abnormal operation parameters more quickly than the traditional fixed threshold method. Combining the historical operational data of the No. 1 induced draft fan of No. 3 generating unit in Shajiao C Power Plant in China, and the aggregation for induced draft fan covers 12 operating parameters interested in condition monitoring. This work used MATLAB to verify and analyze the proposed method. It is found that the NBM for induced draft fan early anomaly identification established in this work can achieve rapid response to the fault and give an alarm in the early stage of the fault. Moreover, the method can be easily applied to other mechanical equipment in thermal power plant and has good engineering application value.
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