Development of an Artificial Immune System for Power Plant Abnormal Condition Detection, Identification, and Evaluation

Q1 Mathematics
Ghassan Al-Sinbol, M. Perhinschi
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引用次数: 6

Abstract

In this paper, the artificial immune system paradigm is used to develop a computational scheme for the detection, identification, and evaluation of abnormal operation of advanced power plants. The self/non-self generation relies on a novel approach consisting of partitioning the Universe and representing clusters as integer strings that can be produced and used with reduced computational effort. The design of the proposed scheme utilizes a positive-selection-type approach combined with a dendritic cell mechanism. The methodology is demonstrated using a high performance model of the acid gas removal unit implemented in Dynsim® that is part of the power plant simulation environment available at West Virginia University AVESTAR Center. Fourteen different abnormal conditions have been considered including solid deposits and leakages occurring at typical locations throughout the system. The proposed monitoring scheme provides excellent performance in terms of false alarm and detection, identification, and evaluation rates.
电厂异常状态检测、识别和评估人工免疫系统的研制
本文采用人工免疫系统范式,建立了先进电厂异常运行检测、识别和评估的计算方案。自我/非自我生成依赖于一种新的方法,该方法包括划分Universe和将集群表示为整数字符串,可以通过减少计算工作量来生成和使用。该方案的设计利用了一种正选择型方法结合树突状细胞机制。该方法使用Dynsim®实现的酸性气体去除装置的高性能模型进行了演示,该模型是西弗吉尼亚大学AVESTAR中心提供的电厂模拟环境的一部分。考虑了14种不同的异常情况,包括在整个系统的典型位置发生的固体沉积和泄漏。所提出的监控方案在虚警检测、识别和评估率方面具有优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Review of Automatic Control
International Review of Automatic Control Engineering-Control and Systems Engineering
CiteScore
2.70
自引率
0.00%
发文量
17
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