A long-term dependable and reliable method for reactor accident prognosis using temporal fusion transformer

Chengyuan Li, Mei-Jiu Li, Zhifang Qiu
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引用次数: 0

Abstract

Introduction: The accurate prognosis of reactor accidents is essential for deploying effective strategies that prevent radioactive releases. However, research in the nuclear sector is limited. This paper introduces a novel Temporal Fusion Transformer (TFT) model-based method for accident prognosis that incorporates multi-headed self-attention and gating mechanisms.Methods: Our proposed method combines multi-headed self-attention and gating mechanisms of TFT with multiple covariates to enhance prediction accuracy. Additionally, we employ quantile regression for uncertainty assessment. We apply this method to the HPR1000 reactor to predict outcomes following loss of coolant accidents (LOCAs).Results: The experimental results reveal that our proposed method outperforms existing deep learning-based prediction models in both prediction accuracy and confidence intervals. We also demonstrate increased robustness through interference experiments with varying signal-to-noise ratios and ablation studies on static covariates.Discussion: Our method contributes to the development of intelligent and reduced-staff maintenance methods for reactor systems, showcasing its ability to effectively extract and utilize features of static and historical covariates for improved predictive performance.
利用时态融合变压器进行反应堆事故预报的长期可靠方法
导言:反应堆事故的准确预报对于部署防止放射性释放的有效策略至关重要。然而,核领域的研究十分有限。本文介绍了一种基于时态融合变压器(TFT)模型的新型事故预报方法,该方法结合了多头自注意和门控机制:我们提出的方法将 TFT 的多头自我注意和门控机制与多个协变量相结合,以提高预测精度。此外,我们还采用了量子回归进行不确定性评估。我们将该方法应用于 HPR1000 反应堆,以预测冷却剂损失事故(LOCA)后的结果:实验结果表明,我们提出的方法在预测精度和置信区间方面都优于现有的基于深度学习的预测模型。我们还通过不同信噪比的干扰实验和对静态协变量的烧蚀研究证明了更强的鲁棒性:我们的方法有助于开发反应堆系统的智能化和减员维护方法,展示了其有效提取和利用静态和历史协变量特征以提高预测性能的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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