Application of Deep Neural Network to an Accelerated Prediction of a Severe Accident in Nuclear Power Plants

IF 4.3 3区 工程技术 Q2 ENERGY & FUELS
Semin Joo, Yeonha Lee, Seok Ho Song, Kyusang Song, Mi Ro Seo, Sung Joong Kim, Jeong Ik Lee
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引用次数: 0

Abstract

Recent nuclear severe accidents have spurred interest in the development of advanced accident management support tools (AMSTs) to enhance decision-making during crises. This study examines the efficacy of deep neural networks (DNNs) in accelerating severe accident predictions within nuclear power plants (NPPs), focusing on a loss-of-component-cooling-water (LOCCW) accident scenario. Through analysis of 10,780 simulated LOCCW accident scenarios across varied component failures and mitigation strategy implementations, time series datasets were synthesized at 15, 30, and 60-min intervals. The evaluation demonstrated that convolutional neural network (CNN)-integrated models outperformed standalone architectures in prediction accuracy across all temporal resolutions. Notably, higher temporal resolutions in training datasets significantly improved mean absolute error (MAE) and root mean squared error (RMSE), thereby enhancing prediction precision for immediate subsequent time steps. However, the augmentation of temporal resolution did not uniformly improve overall scenario prediction performance, as assessed by dynamic time warping (DTW) distance, due to cumulative prediction error in higher resolution models. These findings elucidate the nuanced relationship between temporal resolution and predictive accuracy, offering valuable insights for the development of sophisticated AMSTs aimed at bolstering nuclear safety and accident management strategies.

Abstract Image

深度神经网络在核电厂重大事故加速预测中的应用
最近的核严重事故激发了人们对开发先进事故管理支持工具(AMSTs)的兴趣,以提高危机期间的决策能力。本研究考察了深度神经网络(dnn)在加速核电厂(NPPs)严重事故预测方面的有效性,重点研究了组件冷却水损失(LOCCW)事故情景。通过分析10,780个模拟LOCCW事故场景,包括不同组件故障和缓解策略的实施,以15、30和60分钟的间隔合成时间序列数据集。评估表明,卷积神经网络(CNN)集成模型在所有时间分辨率下的预测精度优于独立架构。值得注意的是,训练数据集的高时间分辨率显著提高了平均绝对误差(MAE)和均方根误差(RMSE),从而提高了对直接后续时间步的预测精度。然而,由于高分辨率模型的累积预测误差,时间分辨率的提高并没有统一地提高总体情景预测性能,正如动态时间规整(DTW)距离所评估的那样。这些发现阐明了时间分辨率和预测准确性之间的微妙关系,为旨在加强核安全和事故管理策略的复杂amst的发展提供了有价值的见解。
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来源期刊
International Journal of Energy Research
International Journal of Energy Research 工程技术-核科学技术
CiteScore
9.80
自引率
8.70%
发文量
1170
审稿时长
3.1 months
期刊介绍: The International Journal of Energy Research (IJER) is dedicated to providing a multidisciplinary, unique platform for researchers, scientists, engineers, technology developers, planners, and policy makers to present their research results and findings in a compelling manner on novel energy systems and applications. IJER covers the entire spectrum of energy from production to conversion, conservation, management, systems, technologies, etc. We encourage papers submissions aiming at better efficiency, cost improvements, more effective resource use, improved design and analysis, reduced environmental impact, and hence leading to better sustainability. IJER is concerned with the development and exploitation of both advanced traditional and new energy sources, systems, technologies and applications. Interdisciplinary subjects in the area of novel energy systems and applications are also encouraged. High-quality research papers are solicited in, but are not limited to, the following areas with innovative and novel contents: -Biofuels and alternatives -Carbon capturing and storage technologies -Clean coal technologies -Energy conversion, conservation and management -Energy storage -Energy systems -Hybrid/combined/integrated energy systems for multi-generation -Hydrogen energy and fuel cells -Hydrogen production technologies -Micro- and nano-energy systems and technologies -Nuclear energy -Renewable energies (e.g. geothermal, solar, wind, hydro, tidal, wave, biomass) -Smart energy system
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