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http://dx.doi.org/10.1016/j.net.2022.05.011

Optimization of preventive maintenance of nuclear safety-class DCS based on reliability modeling  

Peng, Hao (Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China)
Wang, Yuanbing (Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China)
Zhang, Xu (Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China)
Hu, Qingren (Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China)
Xu, Biao (Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China)
Publication Information
Nuclear Engineering and Technology / v.54, no.10, 2022 , pp. 3595-3603 More about this Journal
Abstract
Nuclear safety-class DCS is used for nuclear reactor protection function, which is one of the key facilities to ensure nuclear power plant safety, the maintenance for DCS to keep system in a high reliability is significant. In this paper, Nuclear safety-class DCS system developed by the Nuclear Power Institute of China is investigated, the model of reliability estimation considering nuclear power plant emergency trip control process is carried out using Markov transfer process. According to the System-Subgroup-Module hierarchical iteration calculation, the evolution curve of failure probability is established, and the preventive maintenance optimization strategy is constructed combining reliability numerical calculation and periodic overhaul interval of nuclear power plant, which could provide a quantitative basis for the maintenance decision of DCS system.
Keywords
Preventive maintenance; Maintenance period; Safety-class DCS;
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Times Cited By KSCI : 3  (Citation Analysis)
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