Development and Assessment of Data-Driven Digital Twins in a Nearly Autonomous Management and Control System for Advanced Reactors

Linyu Lin, P. Rouxelin, Paridhi Athe, Truc-Nam Dinh, J. Lane
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引用次数: 5

Abstract

A critical component of the autonomous control system is the implementation of digital twin (DT) for diagnosing the conditions and prognosing the future transients of physical components or systems. The objective is to achieve an accurate understanding and prediction of future behaviors of the physical components or systems and to guide operating decisions by an operator or an autonomous control system. With specific requirements in the functional, interface, modeling, and accuracy, DTs are developed based on operational and simulation databases. As one of the modeling methods, data-driven methods have been used for implementing DTs since they have more adaptive forms and are able to capture interdependencies that can be overlooked in model-based DTs. To demonstrate the capabilities of DTs, a case study is designed for the control of the EBR-II sodium-cooled fast reactor during a single loss of flow accident, where either a complete or a partial loss of flow in one of the two primary sodium pumps is considered. Based on the definition of DTs and the design of autonomous control system, DTs for diagnosis and prognosis are implemented by training feedforward neural networks with suggested inputs, training parameters, and knowledge base. Furthermore, inspired by the validation and uncertainty quantification scheme for scientific computing, a list of sources of uncertainty in input variables, training parameters, and knowledge base is formulated. The objective is to assess qualitative impacts of different sources of uncertainty on the DT errors. It is found that the performance of DT for diagnosis and prognosis satisfies the acceptance criteria within the training databases. Meanwhile, the accuracy of DTs for diagnosis and prognosis is highly affected by multiple sources of uncertainty.
先进反应堆近自主管理与控制系统中数据驱动数字孪生的开发与评估
自动控制系统的一个关键组成部分是实施数字孪生(DT),用于诊断物理组件或系统的条件和预测未来的瞬态。目标是实现对物理组件或系统未来行为的准确理解和预测,并指导操作员或自主控制系统的操作决策。由于在功能、界面、建模和精度方面有特定的要求,dt是基于操作和仿真数据库开发的。作为建模方法之一,数据驱动方法已被用于实现dtd,因为它们具有更多的自适应形式,并且能够捕获在基于模型的dtd中可能被忽略的相互依赖性。为了证明DTs的能力,设计了一个案例研究,用于在单次失流事故中控制EBR-II钠冷快堆,其中两个主钠泵中的一个完全或部分失流。在自主控制系统设计的基础上,基于建议输入、训练参数和知识库,通过训练前馈神经网络实现诊断和预测的自主控制。此外,受科学计算的验证和不确定度量化方案的启发,给出了输入变量、训练参数和知识库的不确定度来源列表。目的是评估不同不确定性来源对DT误差的定性影响。结果表明,DT在诊断和预后方面的性能满足训练数据库的可接受标准。同时,诊断和预后的准确性受到多种不确定性来源的高度影响。
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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