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人工智能在核反应堆中的应用综述:我们所处的位置及未来发展方向

A review of the application of artificial intelligence to nuclear reactors: Where we are and what's next.

作者信息

Huang Qingyu, Peng Shinian, Deng Jian, Zeng Hui, Zhang Zhuo, Liu Yu, Yuan Peng

机构信息

Science and Technology on Reactor System Design Technology Laboratory, Nuclear Power Institute of China, Chengdu 610213, China.

出版信息

Heliyon. 2023 Feb 22;9(3):e13883. doi: 10.1016/j.heliyon.2023.e13883. eCollection 2023 Mar.

Abstract

As a form of clean energy, nuclear energy has unique advantages compared to other energy sources in the present era, where low-carbon policies are being widely advocated. The exponential growth of artificial intelligence (AI) technology in recent decades has resulted in new opportunities and challenges in terms of improving the safety and economics of nuclear reactors. This study briefly introduces modern AI algorithms such as machine learning, deep learning, and evolutionary computing. Furthermore, several studies on the use of AI techniques for nuclear reactor design optimization as well as operation and maintenance (O&M) are reviewed and discussed. The existing obstacles that prevent the further fusion of AI and nuclear reactor technologies so that they can be scaled to real-world problems are classified into two categories: (1) data issues: insufficient experimental data increases the possibility of data distribution drift and data imbalance; (2) black-box dilemma: methods such as deep learning have poor interpretability. Finally, this study proposes two directions for the future fusion of AI and nuclear reactor technologies: (1) better integration of domain knowledge with data-driven approaches to reduce the high demand for data and improve the model performance and robustness; (2) promoting the use of explainable artificial intelligence (XAI) technologies to enhance the transparency and reliability of the model. In addition, causal learning warrants further attention owing to its inherent ability to solve out-of-distribution generalization (OODG) problems.

摘要

作为一种清洁能源形式,在当前广泛倡导低碳政策的时代,核能与其他能源相比具有独特优势。近几十年来人工智能(AI)技术呈指数级增长,在提高核反应堆安全性和经济性方面带来了新机遇和挑战。本研究简要介绍了机器学习、深度学习和进化计算等现代AI算法。此外,还对一些利用AI技术进行核反应堆设计优化以及运行与维护(O&M)的研究进行了综述和讨论。阻碍AI与核反应堆技术进一步融合以扩大到实际问题的现有障碍分为两类:(1)数据问题:实验数据不足增加了数据分布漂移和数据不平衡的可能性;(2)黑箱困境:深度学习等方法的可解释性较差。最后,本研究提出了AI与核反应堆技术未来融合的两个方向:(1)将领域知识与数据驱动方法更好地整合,以减少对数据的高要求并提高模型性能和稳健性;(2)推动使用可解释人工智能(XAI)技术以提高模型的透明度和可靠性。此外,因果学习因其解决分布外泛化(OODG)问题的内在能力值得进一步关注。

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