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Artificial neural network for predicting nuclear power plant dynamic behaviors

机译:人工神经网络预测核电站动力学行为

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A Nuclear Power Plant (NPP) is a complex dynamic system-of-systems with highly nonlinear behaviors. In order to control the plant operation under both normal and abnormal conditions, the different systems in NPPs (e.g., the reactor core components, primary and secondary coolant systems) are usually monitored continuously, resulting in very large amounts of data. This situation makes it possible to integrate relevant qualitative and quantitative knowledge with artificial intelligence techniques to provide faster and more accurate behavior predictions, leading to more rapid decisions, based on actual NPP operation data. Data-driven models (DDM) rely on artificial intelligence to learn autonomously based on patterns in data, and they represent alternatives to physics-based models that typically require significant computational resources and might not fully represent the actual operation conditions of an NPP. In this study, a feed-forward backpropagation artificial neural network (ANN) model was trained to simulate the interaction between the reactor core and the primary and secondary coolant systems in a pressurized water reactor. The transients used for model training included perturbations in reactivity, steam valve coefficient, reactor core inlet temperature, and steam generator inlet temperature. Uncertainties of the plant physical parameters and operating conditions were also incorporated in these transients. Eight training functions were adopted during the training stage to develop the most efficient network. The developed ANN model predictions were subsequently tested successfully considering different new transients. Overall, through prompt prediction of NPP behavior under different transients, the study aims at demonstrating the potential of artificial intelligence to empower rapid emergency response planning and risk mitigation strategies.
机译:核电站(NPP)是一种具有高度非线性行为的复杂动态系统。为了在正常和异常条件下控制植物操作,通常通常监测NPPS中的不同系统(例如,反应器芯部件,初级冷却剂系统),导致非常大量的数据。这种情况使得可以将相关的定性和定量知识与人工智能技术相结合,以提供更快,更准确的行为预测,导致基于实际的NPP操作数据的更快决策。数据驱动的模型(DDM)依赖于人工智能基于数据的模式自主学习,并且它们代表基于物理的模型的替代方案通常需要大量计算资源,并且可能无法完全代表NPP的实际操作条件。在该研究中,训练了前馈背交人工神经网络(ANN)模型,以模拟压加水反应器中的反应器芯和初级冷却剂系统之间的相互作用。用于模型训练的瞬变包括反应性,蒸汽阀系数,反应堆核心入口温度和蒸汽发生器入口温度的扰动。植物物理参数和操作条件的不确定性也结合在这些瞬态中。在培训阶段采用八项培训职能,以开发最有效的网络。随后考虑不同的新瞬变,随后测试了开发的ANN模型预测。总的来说,通过迅速预测不同瞬变的NPP行为,研究旨在证明人工智能赋予促使快速应急规划和风险缓解策略的潜力。

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