In recent years, there has been an increasing need for Nuclear Power Plants (NPPs) to improve flexibility in order to match the rapid growth of renewable energies. The Operator Assistance Predictive System (OAPS) developed by Framatome addresses this problem through Model Predictive Control (MPC). In this work, we aim to improve MPC methods through data-driven simulation schemes. Thus, from a set of nonlinear stiff ordinary differential equations (ODEs), this paper introduces two surrogate models acting as alternative simulation schemes to enhance nuclear reactor core simulation. We show that both data-driven and physics-informed models can rapidly integrate complex dynamics, with a very low computational time (up to 1000x time reduction).
翻译:近年来,核电站(NPPs)日益需要提升运行灵活性以适应可再生能源的快速增长。法马通公司开发的运行辅助预测系统(OAPS)通过模型预测控制(MPC)应对这一挑战。本研究旨在通过数据驱动的模拟方案改进MPC方法。基于一组非线性刚性常微分方程(ODEs),本文提出了两种代理模型作为替代模拟方案以增强核反应堆堆芯模拟。研究表明,数据驱动模型与物理信息模型均能快速整合复杂动力学过程,且计算时间显著降低(最高可达1000倍加速)。