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Lee, Seung Jun
Nuclear Safety Assessment and Plant HMI Evolution Lab.
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Strategy to coordinate actions through a plant parameter prediction model during startup operation of a nuclear power plant

Author(s)
Kim, Jae MinBae, JunyongLee, Seung Jun
Issued Date
2023-05
DOI
10.1016/j.net.2022.11.012
URI
https://scholarworks.unist.ac.kr/handle/201301/60169
Citation
NUCLEAR ENGINEERING AND TECHNOLOGY, v.55, no.3, pp.839 - 849
Abstract
The development of automation technology to reduce human error by minimizing human intervention is accelerating with artificial intelligence and big data processing technology, even in the nuclear field. Among nuclear power plant operation modes, the startup and shutdown operations are still performed manually and thus have the potential for human error. As part of the development of an autonomous operation system for startup operation, this paper proposes an action coordinating strategy to obtain the optimal actions. The lower level of the system consists of operating blocks that are created by analyzing the operation tasks to achieve local goals through soft actor-critic algorithms. However, when multiple agents try to perform conflicting actions, a method is needed to coordinate them, and for this, an action coordination strategy was developed in this work as the upper level of the system. Three quantification methods were compared and evaluated based on the future plant state predicted by plant parameter prediction models using long short-term memory networks. Results confirmed that the optimal action to satisfy the limiting conditions for operation can be selected by coordinating the action sets. It is expected that this methodology can be generalized through future research.
Publisher
한국원자력학회
ISSN
1738-5733
Keyword (Author)
Autonomous operationLong short-term memoryNuclear power plantsParameter predictionReinforcement learningSoft actor-critic

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