一种基于人工智能的热极限偏差可预测性方法 / A Methodology for Thermal Limit Bias Predictability Through Artificial Intelligence
1️⃣ 一句话总结
本研究提出了一种基于深度学习的创新方法,能够有效预测和修正沸水堆核电站中离线与在线热极限之间的偏差,从而显著降低运营成本并提高效率。
Nuclear power plant operators face significant challenges due to unpredictable deviations between offline and online thermal limits, a phenomenon known as thermal limit bias, which leads to conservative design margins, increased fuel costs, and operational inefficiencies. This work presents a deep learning based methodology to predict and correct this bias for Boiling Water Reactors (BWRs), focusing on the Maximum Fraction of Limiting Power Density (MFLPD) metric used to track the Linear Heat Generation Rate (LHGR) limit. The proposed model employs a fully convolutional encoder decoder architecture, incorporating a feature fusion network to predict corrected MFLPD values closer to online measurements. Evaluated across five independent fuel cycles, the model reduces the mean nodal array error by 74 percent, the mean absolute deviation in limiting values by 72 percent, and the maximum bias by 52 percent compared to offline methods. These results demonstrate the model's potential to meaningfully improve fuel cycle economics and operational planning, and a commercial variant has been deployed at multiple operating BWRs.
一种基于人工智能的热极限偏差可预测性方法 / A Methodology for Thermal Limit Bias Predictability Through Artificial Intelligence
本研究提出了一种基于深度学习的创新方法,能够有效预测和修正沸水堆核电站中离线与在线热极限之间的偏差,从而显著降低运营成本并提高效率。
源自 arXiv: 2603.14648