基于小波分解结合深度学习的主汽断线事故蒸汽发生器液位预测

IF 1.9 3区 工程技术 Q1 NUCLEAR SCIENCE & TECHNOLOGY
Biaoxin Wang, Yuang Jiang, Mei Lin, Qiuwang Wang
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引用次数: 0

摘要

液位监测对于维持核电回路的安全运行至关重要。在主蒸汽管线断裂(MSLB)事故中,蒸汽发生器内液位的显著波动对传统测量方法提出了挑战,传统测量方法往往无法准确捕获真实液位。本研究在可控条件下对MSLB事故进行了实验,实验参数为加热功率8 ~ 16kw,破裂压力0.05 ~ 0.1 MPa,相对破裂尺寸20% ~ 100%。在选定的条件下,引入滚动运动来模拟海洋环境。利用小波分解提取不同频率水平的特征,并利用深度学习模型对各分量进行预测。该方法的预测精度为88.3%,优于原始数据直接预测,均方误差(MSE)提高21.9%,平均绝对误差(MAE)提高12.3%,决定系数(R2)提高10.0%。细节分量cD1对整体预测精度的影响最为显著,是进一步优化的关键参数。此外,使用小波分解数据显著降低了计算复杂度,提高了时间效率。结果表明,该方法在提高预测精度和运行效率方面是有效的,为核电系统的安全管理提供了有价值的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of steam generator liquid level under main steam line break accident based on wavelet decomposition combined with deep learning
Liquid level monitoring is essential for maintaining the safe operation of nuclear power circuits. During a Main Steam Line Break (MSLB) accident, significant fluctuations in the liquid level within the steam generator pose challenges for traditional measurement methods, which often fail to accurately capture the true liquid level. This study conducted experiments of MSLB accidents under controlled conditions, with parameters including heating power ranging from 8 to 16 kW, break pressures from 0.05 to 0.1 MPa, and relative break sizes between 20 % and 100 %. In selected conditions, rolling motions were introduced to simulate marine environments. Wavelet decomposition was utilized to extract features at varying frequency levels, and deep learning models were employed to predict each component. The proposed approach achieved a prediction accuracy of 88.3 %, outperforming direct predictions from raw data with improvements of 21.9 % in Mean Squared Error (MSE), 12.3 % in Mean Absolute Error (MAE), and 10.0 % in the coefficient of determination (R2). The detail component cD1 was found to have the most significant impact on overall prediction accuracy, highlighting it as a key parameter for further optimization. Furthermore, the use of wavelet-decomposed data significantly reduced computational complexity, enhancing time efficiency. These results demonstrate the effectiveness of the proposed method in improving prediction accuracy and operational efficiency, offering valuable support for the safe management of nuclear power systems during MSLB accidents.
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来源期刊
Nuclear Engineering and Design
Nuclear Engineering and Design 工程技术-核科学技术
CiteScore
3.40
自引率
11.80%
发文量
377
审稿时长
5 months
期刊介绍: Nuclear Engineering and Design covers the wide range of disciplines involved in the engineering, design, safety and construction of nuclear fission reactors. The Editors welcome papers both on applied and innovative aspects and developments in nuclear science and technology. Fundamentals of Reactor Design include: • Thermal-Hydraulics and Core Physics • Safety Analysis, Risk Assessment (PSA) • Structural and Mechanical Engineering • Materials Science • Fuel Behavior and Design • Structural Plant Design • Engineering of Reactor Components • Experiments Aspects beyond fundamentals of Reactor Design covered: • Accident Mitigation Measures • Reactor Control Systems • Licensing Issues • Safeguard Engineering • Economy of Plants • Reprocessing / Waste Disposal • Applications of Nuclear Energy • Maintenance • Decommissioning Papers on new reactor ideas and developments (Generation IV reactors) such as inherently safe modular HTRs, High Performance LWRs/HWRs and LMFBs/GFR will be considered; Actinide Burners, Accelerator Driven Systems, Energy Amplifiers and other special designs of power and research reactors and their applications are also encouraged.
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