论文标题
反应堆功率多维回归的深层替代模型
Deep Surrogate Models for Multi-dimensional Regression of Reactor Power
论文作者
论文摘要
人们对开发小型模块化反应堆和微反应器的兴趣有了新的兴趣。在这些反应堆的建筑和操作方法中,创新都是有吸引力的。为了操作,感兴趣的领域是完全自主反应堆控制的发展。在遵守确定的安全标准的同时,必须进行重大努力,以证明核系统的自主控制框架。我们的小组提出并获得了支持亚临界系统上的自主框架的支持:麻省理工学院石墨指数桩。为了快速响应(按MILISECONDS的顺序),我们必须将通用系统代码的特定功能提取到替代模型。因此,我们采用了当前最新的神经网络库来构建替代模型。 这项工作着重于建立神经网络的能力,以提供核反应堆功率分布的准确,精确的多维回归。我们使用神经网络替代替代了先前验证的模型:MIT反应器的MCNP5模型。结果表明,神经网络是替代模型在自主反应堆控制框架中实现的合适选择。所有测试数据集的MAPE均<1.16%,相应的标准偏差<0.77%。考虑到节点的裂变功率可以从核心上方的7 kW到30 kW,误差很低。
There is renewed interest in developing small modular reactors and micro-reactors. Innovation is necessary in both construction and operation methods of these reactors to be financially attractive. For operation, an area of interest is the development of fully autonomous reactor control. Significant efforts are necessary to demonstrate an autonomous control framework for a nuclear system, while adhering to established safety criteria. Our group has proposed and received support for demonstration of an autonomous framework on a subcritical system: the MIT Graphite Exponential Pile. In order to have a fast response (on the order of miliseconds), we must extract specific capabilities of general-purpose system codes to a surrogate model. Thus, we have adopted current state-of-the-art neural network libraries to build surrogate models. This work focuses on establishing the capability of neural networks to provide an accurate and precise multi-dimensional regression of a nuclear reactor's power distribution. We assess using a neural network surrogate against a previously validated model: an MCNP5 model of the MIT reactor. The results indicate that neural networks are an appropriate choice for surrogate models to implement in an autonomous reactor control framework. The MAPE across all test datasets was < 1.16 % with a corresponding standard deviation of < 0.77 %. The error is low, considering that the node-wise fission power can vary from 7 kW to 30 kW across the core.