基于深度神经网络的核设备管道系统在正常运行载荷下的状态监测

IF 1 4区 工程技术 Q4 ENGINEERING, MECHANICAL
H. Sandhu, S. Bodda, Serena Sauers, Abhinav Gupta
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引用次数: 0

摘要

工程的各个领域都在探索深度学习在状态监测中的适用性。随着核能因电力和无碳发电需求而死灰复燃,确保核电站的安全运行至关重要。核安全系统可能会因运行负荷(如泵运行、流量诱导等)而发生振动。由于流量加速侵蚀和腐蚀,安全设备管道系统会随着时间的推移而退化。由于操作振动和热循环,某些位置未检测到的退化可能会产生循环疲劳。需要一个状态监测框架来避免疲劳开裂,并早期检测退化位置以及退化的严重程度。本研究旨在通过设计一种新的特征提取技术、探索参数和开发深度神经网络,结合退化严重程度的不确定性,提出一种在正常运行期间受到泵激振动影响的核设备管道的状态监测方法,根据ASME设计标准,对预测结果进行彻底调查,分析错误预测,并提出“安全”泵运行速度的战略建议。即使进行无损检测,管道疲劳检测仍然是一个难题。因此,向操作员提出的这一新颖的战略建议有助于避免管道系统因泵引起的振动而产生疲劳。在与实验增殖反应堆II核反应堆辅助泵相连的Z管道系统上验证了所提出的框架的有效性,并实现了高预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Condition Monitoring of Nuclear Equipment-piping Systems Subjected to Normal Operating Loads Using Deep Neural Networks
Various fields in engineering explore the applicability of deep learning within condition monitoring. With the resurgence of nuclear energy due to electricity and carbon-free power generation demand, ensuring safe operations at nuclear power plants is important. Nuclear safety systems can undergo vibrations due to operating loads such as pump operations, flow-induced, etc. Safety equipment-piping systems experience degradation over the course of time due to flow-accelerated erosion and corrosion. Undetected degradation at certain locations can be subjected to a buildup of cyclic fatigue due to operational vibrations and thermal cycles. A condition monitoring framework is required to avoid fatigue cracking and for early detection of degraded locations along with severity of degradation. This study aims to propose a condition monitoring methodology for nuclear equipment-piping subject to pump-induced vibrations during normal operations by designing a novel feature extraction technique, exploring parameters and developing a deep neural network, incorporating uncertainty in degradation severity, conducting a thorough investigation of predicted results to analyze erroneous predictions, and proposing strategic recommendations for “safe” pump operating speeds, as per ASME design criteria. Even with nondestructive testing, detection of fatigue in pipes continues to be a difficult problem. Thus, this novel strategic recommendation to the operator can be beneficial in avoiding fatigue in piping systems due to pump-induced vibrations. The effectiveness of the proposed framework is demonstrated on a Z-piping system connected to an auxiliary pump from Experimental Breeder Reactor II nuclear reactor and a high prediction accuracy is achieved.
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来源期刊
CiteScore
2.10
自引率
10.00%
发文量
77
审稿时长
4.2 months
期刊介绍: The Journal of Pressure Vessel Technology is the premier publication for the highest-quality research and interpretive reports on the design, analysis, materials, fabrication, construction, inspection, operation, and failure prevention of pressure vessels, piping, pipelines, power and heating boilers, heat exchangers, reaction vessels, pumps, valves, and other pressure and temperature-bearing components, as well as the nondestructive evaluation of critical components in mechanical engineering applications. Not only does the Journal cover all topics dealing with the design and analysis of pressure vessels, piping, and components, but it also contains discussions of their related codes and standards. Applicable pressure technology areas of interest include: Dynamic and seismic analysis; Equipment qualification; Fabrication; Welding processes and integrity; Operation of vessels and piping; Fatigue and fracture prediction; Finite and boundary element methods; Fluid-structure interaction; High pressure engineering; Elevated temperature analysis and design; Inelastic analysis; Life extension; Lifeline earthquake engineering; PVP materials and their property databases; NDE; safety and reliability; Verification and qualification of software.
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