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Anomaly detection in power generation plants using similarity-based modeling and multivariate analysis

机译:使用基于相似性的建模和多元分析对发电厂中的异常进行检测

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This paper introduces an anomaly detection method based on a combination of nonparametric models of the process and multivariate analysis of residuals. This method basically intends to recognize abnormal conditions in the operation of a monitored system, considering for this purpose the definition of “baseline” operation through historical datasets. In particular, the proposed anomaly detector utilizes similarity-based modeling (SBM) techniques to represent the process behavior and principal component analysis (PCA) for the study of model residuals. The methodology not only helps to detect changes in the operation of the system, but also provides a structured algorithm for the inclusion of representative samples in the data set that is used to define the baseline of the system. The method is validated using data from a power generation plant.
机译:本文介绍了一种基于过程的非参数模型和残差的多元分析相结合的异常检测方法。此方法主要用于识别受监视系统运行中的异常情况,为此目的,要考虑通过历史数据集定义“基准”运行。特别地,提出的异常检测器利用基于相似性的建模(SBM)技术来表示过程行为和主成分分析(PCA),以研究模型残差。该方法不仅有助于检测系统运行中的变化,而且还提供了一种结构化算法,用于在数据集中包含代表性样本,以定义系统基线。使用来自发电厂的数据验证了该方法。

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