4.7 Article

Cavitation diagnosis for water distribution pumps: An early-stage approach combing vibration signal-based neural network with high-speed photography

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DOI: 10.1016/j.seta.2022.102919

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Cavitation diagnosis; Water distribution pump; Adaptive neural network; Flow visualization; High-speed photography

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Centrifugal water pumps are crucial for urban sustainability in municipal water distribution systems. Cavitation, a common phenomenon in water pumps, leads to energy inefficiency and mechanical failures. To diagnose cavitation early, a novel approach combining vibration signal-based neural network with high-speed photography was proposed, achieving over 95% diagnosis accuracy in real time.
As an essential component of municipal water distribution systems, centrifugal water pumps are of great sig-nificance to achieve urban sustainability. Cavitation is a common phenomenon in water pumps that cause energy inefficiency and mechanical failures. To prevent cavitation damages, an early-stage cavitation diagnosis approach combing vibration signal-based neural network with high-speed photography was proposed. An adaptive neural network was developed using vibration measurement and cavitation states predefined using high-speed cavitation images collected at an in-house laboratory pump system with transparent casings. The correlation among synchronized cavitation images, vibration signals and pump performance was investigated. Our analysis shows that the head-drop detection method commonly used in the industry greatly underestimated the damage of cavitation with the fact that a 3% head drop corresponded to a cavitation intensity of 42.1%. Both the number of predefined cavitation states for training and the structure of neural networks greatly affected diagnosis accuracy and computing load. A two-stage ANN structure with eight cavitation states displayed the best performance with a much faster training speed compared with common shallow learning methods and consistent diagnosis accuracy of over 95% in real time. A water-energy-carbon nexus model was built to demonstrate provincial energy-saving potentials associated with cavitation prevention in China.

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