基于长短期记忆网络的小型压水堆并发故障诊断

IF 3.3 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY Progress in Nuclear Energy Pub Date : 2024-08-28 DOI:10.1016/j.pnucene.2024.105399
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引用次数: 0

摘要

小型压水堆(SPWR)控制系统结构复杂,布局紧凑,运行环境多变,可能会出现各种类型的信号故障和并发故障。并发故障可视为同时发生的两个或多个单一故障,通常会对系统造成更大的破坏,而且比单一故障更难诊断。然而,由于故障类型众多,诊断难度极大,其故障诊断方法很少被研究。本文探讨了 SPWR 控制系统中传感器和执行器的并发故障诊断方法。利用长短期记忆网络开发了一种智能电流故障诊断模型,其训练和测试数据集是基于目标 SPWR 的故障模拟平台生成的。测试结果表明,SPWR 的单个故障和并发故障都能在发生后平均 1.06 秒内得到快速诊断,分类和诊断准确率分别高达 96.61% 和 97.27%。此外,通过在故障数据集上注入不同的噪声信号进行训练和验证,表明所提出的 LSTM 网络具有很强的抗噪声能力。这证明了该模型在单故障和并发故障条件下都具有出色的诊断准确性和效率。这项研究为核电站复杂并发故障的精确诊断提供了宝贵的指导。
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Concurrent fault diagnosis of small pressurized water reactors based on long-short term memory networks

The control systems of small pressurized water reactors (SPWR) with complex structures, compact layouts, and variable operating environment may be involved in various types of signal and concurrent faults. Concurrent faults can be taken as two or more single faults occurring simultaneously, which usually cause much larger damage to the system and are more difficult to be diagnosed than single faults. However, their fault diagnosis methods are rarely studied because of the numerous fault types and tremendous diagnostic difficulty. This paper explores the concurrent fault diagnosis method for sensors and actuators in SPWR control systems. An intelligent current fault diagnosis model is developed using long short-term memory network with the training and test datasets generated based on a fault simulation platform of the target SPWR. The test results show that both single and concurrent faults of the SPWR can be diagnosed rapidly in an average of 1.06 s after their occurrence with the classification and diagnosis accuracies reaching up to 96.61% and 97.27%, respectively. Moreover, by injecting different noise signals on the faulty dataset for training and validation, it is shown that the proposed LSTM network has strong noise immunity. This demonstrate the excellent diagnosis accuracy and efficiency of the model under both single and concurrent fault conditions. This study provides valuable guidance for the accuracy diagnosis of complex concurrent faults of nuclear power plants.

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来源期刊
Progress in Nuclear Energy
Progress in Nuclear Energy 工程技术-核科学技术
CiteScore
5.30
自引率
14.80%
发文量
331
审稿时长
3.5 months
期刊介绍: Progress in Nuclear Energy is an international review journal covering all aspects of nuclear science and engineering. In keeping with the maturity of nuclear power, articles on safety, siting and environmental problems are encouraged, as are those associated with economics and fuel management. However, basic physics and engineering will remain an important aspect of the editorial policy. Articles published are either of a review nature or present new material in more depth. They are aimed at researchers and technically-oriented managers working in the nuclear energy field. Please note the following: 1) PNE seeks high quality research papers which are medium to long in length. Short research papers should be submitted to the journal Annals in Nuclear Energy. 2) PNE reserves the right to reject papers which are based solely on routine application of computer codes used to produce reactor designs or explain existing reactor phenomena. Such papers, although worthy, are best left as laboratory reports whereas Progress in Nuclear Energy seeks papers of originality, which are archival in nature, in the fields of mathematical and experimental nuclear technology, including fission, fusion (blanket physics, radiation damage), safety, materials aspects, economics, etc. 3) Review papers, which may occasionally be invited, are particularly sought by the journal in these fields.
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