Early Fault Detection in Nuclear Systems: A Digital Engineering Approach

Maria Coelho;Kaleb Houck;Logan Browning;Piyush Sabharwall;Christopher Folmar;Jack Cavaluzzi;Patrick McClure;Jack Dunker
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Abstract

Nuclear energy systems present unique challenges in terms of ensuring safety, reliability, and efficiency during their design and operation. Early fault detection is critical for mitigating risks and fostering system resilience. However, current methods often fall short at identifying faults during early stages, potentially leading to costly delays and safety risks. The present work proposes a comprehensive digital engineering approach that leverages digital twins, digital threads, model-based systems engineering, artificial intelligence, and immersive extended reality to support early fault detection in nuclear systems. Through a series of case studies, we highlight specific gaps in the fault detection mechanisms of traditional nuclear design and operation processes, then demonstrate a suite of solutions we are working to implement to address these shortcomings in similar projects. Our findings suggest that a digital engineering approach to design and operation can significantly improve fault detection, ultimately leading to reductions in risk.
核系统早期故障检测:数字工程方法
核能系统在其设计和运行过程中,在确保安全性、可靠性和效率方面提出了独特的挑战。早期故障检测对于降低风险和培养系统弹性至关重要。然而,目前的方法往往无法在早期阶段识别故障,从而可能导致代价高昂的延误和安全风险。目前的工作提出了一种综合的数字工程方法,利用数字双胞胎、数字线程、基于模型的系统工程、人工智能和沉浸式扩展现实来支持核系统的早期故障检测。通过一系列案例研究,我们强调了传统核设计和运行过程中故障检测机制的具体差距,然后展示了我们正在努力实施的一套解决方案,以解决类似项目中的这些缺陷。我们的研究结果表明,设计和操作的数字化工程方法可以显著提高故障检测,最终降低风险。
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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