LSTM based data driven fault detection and isolation in small modular reactors

Swetha Rajkumar, Jayaprasanth Devakumar
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引用次数: 1

Abstract

Nuclear power stations revealed their value in the power sector by supplying reliable, emission-free power for many years. The highest standards of safety must be attained since a nuclear power station is a nonlinear, intricate, time-varying system that has the probability of leaking radiations. Pr edominantly, it is challenging for operators to quickly and precisely extract critical data about the real plant variables as a result of the vast monitoring data obtained in modern NPPs. However, current developments in machine learning techniques have made it conceivable for operators to interpret these vast amounts of data and take appropriate action. Thermal hydraulic analysis using the RELAP5 algorithm was done on the IP-200 NPP. A long short-term memory architecture was trained to categorize six different simulated IP-200 circumstances. The outcomes improved the accuracy and dependability of nuclear power plant fault monitoring systems.
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基于LSTM的小型模块化电抗器故障检测与隔离
核电站通过多年提供可靠、无排放的电力,显示了其在电力领域的价值。必须达到最高的安全标准,因为核电站是一个非线性的、复杂的、时变的系统,有可能发生辐射泄漏。最重要的是,由于现代核电站获得了大量的监测数据,因此对运营商来说,快速准确地提取有关真实工厂变量的关键数据是一个挑战。然而,目前机器学习技术的发展使得操作员可以解释这些大量的数据并采取适当的行动。利用RELAP5算法对IP-200 NPP进行了热水力分析。我们训练了一个长短期记忆架构来对六种不同的模拟IP-200环境进行分类。研究结果提高了核电站故障监测系统的准确性和可靠性。
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