植物行为异常检测和状态监测的学习模型

A.J. Brown, V. Catterson, M. Fox, D. Long, S. Mcarthur
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引用次数: 25

摘要

为工程师和资产管理人员提供一种可以诊断变压器故障的工具,可以极大地帮助他们在维护、性能和安全等问题上做出决策。然而,准确判断问题有多严重以及需要多紧急的维修一直是人员的责任。在处理涉及的大量数据时,有可能在发生严重损坏时才注意到故障。本文提出了一种新开发的异常检测技术与现有诊断系统的集成。通过学习健康变压器行为的隐马尔可夫模型,可以标记出意外操作,例如当故障发生时,以引起注意。然后,可以使用现有系统诊断故障,并根据需要安排维护计划,所有这些都比以前可能在更早的阶段进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Models of Plant Behavior for Anomaly Detection and Condition Monitoring
Providing engineers and asset managers with a tool which can diagnose faults within transformers can greatly assist decision making on such issues as maintenance, performance and safety. However, the onus has always been on personnel to accurately decide how serious a problem is and how urgently maintenance is required. In dealing with the large volumes of data involved, it is possible that faults may not be noticed until serious damage has occurred. This paper proposes the integration of a newly developed anomaly detection technique with an existing diagnosis system. By learning a hidden Markov model of healthy transformer behavior, unexpected operation, such as when a fault develops, can be flagged for attention. Faults can then be diagnosed using the existing system and maintenance scheduled as required, all at a much earlier stage than would previously have been possible.
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