Review of the Uses of Acoustic Emissions in Monitoring Cavitation Erosion and Crack Propagation

Ismael Fernández-Osete, David Bermejo, Xavier Ayneto-Gubert, X. Escaler
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Abstract

Nowadays, hydropower plants are being used to compensate for the variable power produced by the new fluctuating renewable energy sources, such as wind and solar power, and to stabilise the grid. Consequently, hydraulic turbines are forced to work more often in off-design conditions, far from their best efficiency point. This new operation strategy increases the probability of erosive cavitation and of hydraulic instabilities and pressure fluctuations that increase the risk of fatigue damage and reduce the life expectancy of the units. To monitor erosive cavitation and fatigue damage, acoustic emissions induced by very-high-frequency elastic waves within the solid have been traditionally used. Therefore, acoustic emissions are becoming an important tool for hydraulic turbine failure detection and troubleshooting. In particular, artificial intelligence is a promising signal analysis research hotspot, and it has a great potential in the condition monitoring of hydraulic turbines using acoustic emissions as a key factor in the digitalisation process. In this paper, a brief introduction of acoustic emissions and a description of their main applications are presented. Then, the research works carried out for cavitation and fracture detection using acoustic emissions are summarised, and the different levels of development are compared and discussed. Finally, the role of artificial intelligence is reviewed, and expected directions for future works are suggested.
声发射在监测气蚀和裂缝扩展中的应用综述
如今,水力发电厂被用来补偿风能和太阳能等新的可再生能源产生的可变功率,并稳定电网。因此,水轮机被迫更频繁地在非设计条件下工作,远离其最佳效率点。这种新的运行策略增加了侵蚀气蚀、水力不稳定性和压力波动的可能性,从而增加了疲劳损坏的风险,缩短了机组的预期寿命。为了监测侵蚀空化和疲劳损坏,传统上使用固体内部极高频弹性波引起的声发射。因此,声发射正成为水轮机故障检测和故障排除的重要工具。其中,人工智能是一个前景广阔的信号分析研究热点,在水轮机的状态监测中,声发射作为数字化过程中的一个关键因素,具有巨大的潜力。本文简要介绍了声发射及其主要应用。然后,总结了利用声发射进行空化和断裂检测的研究工作,并对不同的发展水平进行了比较和讨论。最后,回顾了人工智能的作用,并提出了未来工作的预期方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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