基于人工智能的核反应堆安全预测异常检测与风险评估方法

Qureshi Sethu Russell, Nichols Peng Linzi
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引用次数: 0

摘要

核电在满足全球能源需求方面发挥着至关重要的作用,但确保核反应堆的安全仍然是一项重大挑战。近年来,人工智能(AI)技术的出现为通过预测性异常检测和风险评估显着提高核反应堆安全性开辟了新的途径。本研究提出了一种创新的人工智能驱动方法,该方法集成了机器学习技术和数据分析,以监测、检测和评估核反应堆中的潜在异常。研究首先对核反应堆安全和人工智能在各个工业领域的应用进行了全面的文献综述,重点介绍了预测性维护和异常检测。它强调需要人工智能驱动的方法来主动提高核反应堆安全。总之,本研究确立了人工智能在提高核反应堆安全方面的变革潜力。拟议的人工智能驱动方法赋予运营商强大的工具,以确保核电站的安全高效运行。随着人工智能技术的不断进步,这项研究为进一步的探索和开发打开了大门,为核能生产的更可持续和更安全的未来铺平了道路。
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AI-Driven approach for enhancing nuclear reactor safety predictive anomaly detection and risk assessment
Nuclear power plays a vital role in meeting global energy demands, but ensuring the safety of nuclear reactors remains a paramount challenge. In recent years, the emergence of artificial intelligence (AI) technologies has opened new avenues to significantly enhance nuclear reactor safety through predictive anomaly detection and risk assessment. This research proposes an innovative AI-driven approach that integrates machine learning techniques and data analytics to monitor, detect, and assess potential anomalies in nuclear reactors. The research begins with a comprehensive literature review on nuclear reactor safety and the application of AI in various industrial domains, emphasizing predictive maintenance and anomaly detection. It highlights the need for an AI-driven approach to enhance nuclear reactor safety proactively. In conclusion, this research establishes the transformative potential of AI in enhancing nuclear reactor safety. The proposed AI-driven approach empowers operators with powerful tools to ensure the safe and efficient operation of nuclear power plants. As AI technologies continue to advance, the research opens doors for further exploration and development, paving the way for a more sustainable and secure future in nuclear energy production.
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