首页> 外国专利> IDENTIFYING MULTIPLE CAUSAL ANOMALIES IN POWER PLANT SYSTEMS BY MODELING LOCAL PROPAGATIONS

IDENTIFYING MULTIPLE CAUSAL ANOMALIES IN POWER PLANT SYSTEMS BY MODELING LOCAL PROPAGATIONS

机译:通过对局部传播进行建模来识别电厂系统中的多个因果异常

摘要

A system identifies multiple causal anomalies in a power plant having multiple system components. The system includes a processor. The processor constructs an invariant network model having (i) nodes, each representing a respective system component and (ii) invariant links, each representing a stable component interaction. The processor constructs a broken network model having (i) the invariant network model nodes and (ii) broken links, each representing an unstable component interaction. The processor ranks causal anomalies in node clusters in the invariant network model to obtain anomaly score results. The processor generates, using a joint optimization clustering process applied to the models, (i) a model clustering structure and (ii) broken cluster scores. The processor performs weighted fusion ranking on the anomaly score results and broken cluster scores, based on the clustering structure and implicated degrees of severity of any abnormal system components, to identify the multiple causal anomalies in the power plant.
机译:系统识别具有多个系统组件的电厂中的多个因果异常。该系统包括处理器。处理器构造具有一个不变的网络模型,该模型具有(i)个节点(每个代表一个各自的系统组件)和(ii)个不变链路(每个代表一个稳定的组件交互)。处理器构建具有(i)不变网络模型节点和(ii)断开链接的断开的网络模型,每个节点代表不稳定的组件交互。处理器在不变网络模型的节点群集中对因果异常进行排名,以获得异常评分结果。处理器使用应用于模型的联合优化聚类过程生成(i)模型聚类结构和(ii)破碎聚类得分。处理器基于聚类结构和任何异常系统组件的严重程度的相关性,对异常评分结果和破碎的群集评分执行加权融合排序,以识别发电厂中的多个因果异常。

著录项

  • 公开/公告号US2018307994A1

    专利类型

  • 公开/公告日2018-10-25

    原文格式PDF

  • 申请/专利权人 NEC LABORATORIES AMERICA INC.;

    申请/专利号US201815888472

  • 发明设计人 WEI CHENG;HAIFENG CHEN;

    申请日2018-02-05

  • 分类号G06N5/04;G06F17/16;G06N99;G06F17/30;

  • 国家 US

  • 入库时间 2022-08-21 12:59:49

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