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Autonomous operation algorithm for safety systems of nuclear power plants by using long-short term memory and function-based hierarchical framework

机译:基于长短期记忆和基于功能的层次框架的核电厂安全系统自主运行算法

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摘要

With the improvement of computer performance and the emergence of cutting-edge artificial intelligence (Al) algorithms, an autonomous operation based on Al is being applied to many industries. An autonomous algorithm is a higher-level concept than conventional automatic operation in nuclear power plants (NPPs). In order to achieve autonomous operation, the autonomous algorithm needs to include superior functions to monitor, control and diagnose automated subsystems. This study suggests an autonomous operation algorithm for NPP safety systems using a function-based hierarchical framework (FHF) and a long short-term memory (LSTM). The FHF hierarchically models the safety goals, functions, systems, and components in the NPP. Then, the hierarchical structure is transformed into an LSTM network that is an evolutionary version of a recurrent neural network. This approach is applied to a reference NPP, a Westinghouse 930 MWe, three-loop pressurized water reactor. This LSTM network has been trained and validated using a compact nuclear simulator. (C) 2018 Elsevier Ltd. All rights reserved.
机译:随着计算机性能的提高和尖端人工智能(Al)算法的出现,基于Al的自主操作已应用于许多行业。自主算法比核电厂(NPP)中的常规自动操作具有更高的概念。为了实现自主操作,自主算法需要包括高级功能来监视,控制和诊断自动化子系统。这项研究提出了使用基于功能的层次框架(FHF)和长短期记忆(LSTM)的NPP安全系统自主操作算法。 FHF对NPP中的安全目标,功能,系统和组件进行分层建模。然后,将层次结构转换为LSTM网络,该网络是递归神经网络的进化版本。该方法适用于参考核电厂,西屋930 MWe,三回路加压水反应堆。该LSTM网络已使用紧凑型核模拟器进行了培训和验证。 (C)2018 Elsevier Ltd.保留所有权利。

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