在新一轮科技革命的浪潮中,各国纷纷把人工智能提升到国家战略层面。本文首先介绍了人工智能概念、发展历史、当前的研究重点和发展态势,阐述推动人工智能与我国核工业融合应用的必要性。接着介绍了当前人工智能的核心技术——基于深度学习的神经网络算法的发展历史、主要的四种网络模型,重点分析它在核领域的典型实例、应用现状和未来趋势,最后为加强我国核工业智能化发展提出几点建议。 In the new wave of scientific and technological revolution, countries have upgraded artificial in-telligence to the level of national strategy. This paper first introduces the concept, development history, current research focus and development trend of AI, and expounds the necessity of pro-moting the integration of AI and China’s nuclear industry. Then it introduces the development history and four main network models of the current core technology of artificial intelligence, which is based on the deep learning neural network algorithm. It focuses on the analysis of its typical examples, application status and future trend in the nuclear field. Finally, it puts forward some suggestions to strengthen the development of the intelligence of China's nuclear industry.
人工智能,核领域,神经网络,深度学习, Artificial Intelligence Nuclear Field Neural Network Deep Learning神经网络算法在我国核领域中的 应用综述
杨红义,王 端,王东东. 神经网络算法在我国核领域中的应用综述An Overview of the Application of Neural Network Algorithm in the Nuclear Field of China[J]. 核科学与技术, 2020, 08(01): 19-34. https://doi.org/10.12677/NST.2020.81003
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