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DADICC: Intelligent system for anomaly detection in a combined cycle gas turbine plant

机译:DADICC:联合循环燃气轮机厂中用于异常检测的智能系统

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摘要

DADICC is the abbreviated name for an intelligent system able to detect on-line and diagnose anomalies as soon as possible in the dynamic evolution of the behaviour of a power plant based on a combined cycle gas turbine. In order to reach this objective, a modelling process is required for the characterization of the normal performance when any symptom of a possible fault is present. This will be the reference for early detection of possible anomalies. If a deviation in respect to the normal behaviour predicted is observed, an analysis of its causes is performed in order to diagnose the potential problem, and, if possible, its prevention. A multi-agent system supports the different roles required in DADICC. The detection of anomalies is based on agents that use models elaborated using mainly neural networks techniques. The diagnosis of the anomalies is prepared by agents based on an expert-system structure. This paper describes the main characteristics of DADICC and its operation.
机译:DADICC是智能系统的缩写,该系统能够在基于联合循环燃气轮机的发电厂行为的动态演变过程中尽快在线检测并诊断异常。为了达到这个目的,当可能出现故障的任何症状出现时,需要进行建模过程来表征正常性能。这将是早期发现可能异常的参考。如果观察到相对于预测的正常行为的偏离,则对其原因进行分析,以便诊断潜在问题,并在可能的情况下进行预防。多代理系统支持DADICC中所需的不同角色。异常的检测基于代理,代理使用的模型主要使用神经网络技术进行详细说明。异常的诊断是由代理商根据专家系统的结构来准备的。本文介绍了DADICC的主要特点及其操作。

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