基于一对休息分类器的核电厂多异常注意诊断模型

IF 0.5 Q4 NUCLEAR SCIENCE & TECHNOLOGY Journal of Nuclear Engineering and Radiation Science Pub Date : 2023-07-08 DOI:10.3390/jne4030033
Seungyon Cho, Jeonghun Choi, J. Shin, Seung Jun Lee
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引用次数: 0

摘要

多异常事件是指核电站内多个单一异常事件同时发生,由于多异常事件发生的可能性极低,甚至尚未发生,故未纳入考虑范围。然而,与一般的单一异常事件相比,诊断此类事件将更具挑战性,从而加剧了人为错误问题。本文提出了一种基于一对休息分类器的高效异常诊断模型,并与其他人工智能模型进行了比较。多异常注意诊断模型处理多标签分类问题,提出了两种方法。首先,提出了一种基于异常事件预测概率分布的单异常事件和多异常事件有效聚类的方法;其次,采用高精度的1 -vs-rest分类器作为一种有效的方法来获取知识,其中特定的多异常事件最难诊断,因此最需要关注,从而在数据使用方面提高多标签分类性能。所建立的多异常注意诊断模型可以将诊断结果作为操作员支持系统的一部分提供给操作员,从而减少操作员在发生意外多异常事件时由于信息过多和时间有限而造成的人为错误。
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Multi-Abnormality Attention Diagnosis Model Using One-vs-Rest Classifier in a Nuclear Power Plant
Multi-abnormal events, referring to the simultaneous occurrence of multiple single abnormal events in a nuclear power plant, have not been subject to consideration because multi-abnormal events are extremely unlikely to occur and indeed have not yet occurred. Such events, though, would be more challenging to diagnose than general single abnormal events, exacerbating the human error issue. This study introduces an efficient abnormality diagnosis model that covers multi-abnormality diagnosis using a one-vs-rest classifier and compares it with other artificial intelligence models. The multi-abnormality attention diagnosis model deals with multi-label classification problems, for which two methods are proposed. First, a method to effectively cluster single and multi-abnormal events is introduced based on the predicted probability distribution of each abnormal event. Second, a one-vs-rest classifier with high accuracy is employed as an efficient way to obtain knowledge on which particular multi-abnormal events are the most difficult to diagnose and therefore require the most attention to improve the multi-label classification performance in terms of data usage. The developed multi-abnormality attention diagnosis model can reduce human errors of operators due to excessive information and limited time when unexpected multi-abnormal events occur by providing diagnosis results as part of an operator support system.
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
56
期刊介绍: The Journal of Nuclear Engineering and Radiation Science is ASME’s latest title within the energy sector. The publication is for specialists in the nuclear/power engineering areas of industry, academia, and government.
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