期刊论文详细信息
Frontiers in Energy Research
Prognostics and Health Management in Nuclear Power Plants: An Updated Method-Centric Review With Special Focus on Data-Driven Methods
Xinyan Wang1  Michael Golay1  Pradeep Ramuhalli2  Sacit Cetiner2  Xingang Zhao2  Kyle Warns3  Junyung Kim3  Hyun Gook Kang3 
[1] Cambridge, MA, United States;Oak Ridge, TN, United States;Troy, NY, United States;
关键词: prognostics and health management;    planning and decision-making;    condition-based maintenance;    artificial intelligence;    machine learning;    data-driven methods;    nuclear power plant;   
DOI  :  10.3389/fenrg.2021.696785
来源: Frontiers
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【 摘 要 】

In a carbon-constrained world, future uses of nuclear power technologies can contribute to climate change mitigation as the installed electricity generating capacity and range of applications could be much greater and more diverse than with the current plants. To preserve the nuclear industry competitiveness in the global energy market, prognostics and health management (PHM) of plant assets is expected to be important for supporting and sustaining improvements in the economics associated with operating nuclear power plants (NPPs) while maintaining their high availability. Of interest are long-term operation of the legacy fleet to 80 years through subsequent license renewals and economic operation of new builds of either light water reactors or advanced reactor designs. Recent advances in data-driven analysis methods—largely represented by those in artificial intelligence and machine learning—have enhanced applications ranging from robust anomaly detection to automated control and autonomous operation of complex systems. The NPP equipment PHM is one area where the application of these algorithmic advances can significantly improve the ability to perform asset management. This paper provides an updated method-centric review of the full PHM suite in NPPs focusing on data-driven methods and advances since the last major survey article was published in 2015. The main approaches and the state of practice are described, including those for the tasks of data acquisition, condition monitoring, diagnostics, prognostics, and planning and decision-making. Research advances in non-nuclear power applications are also included to assess findings that may be applicable to the nuclear industry, along with the opportunities and challenges when adapting these developments to NPPs. Finally, this paper identifies key research needs in regard to data availability and quality, verification and validation, and uncertainty quantification.

【 授权许可】

CC BY   

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