离心泵空化检测的机器学习算法技术

Nabanita Dutta, S. Umashankar, V. K. A. Shankar, Sanjeevikumar Padmanaban, Zbigniew Leonowicz, P. Wheeler
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引用次数: 22

摘要

气蚀现象是泵送系统的主要弊端之一,气蚀现象加剧了管道内气泡的形成,降低了泵的效率。因此,应及时识别并采取预防措施。机器学习是一种快速的计算方法,可以很容易地检测到泵送系统中的任何故障。目前在泵送系统故障检测方面已经做了大量的工作,但这些工作主要是基于振动细节和转速变化。本文介绍了如何利用机器学习算法通过改变速度和压力来识别空化。它是振动和速度对空化结果的共同影响以及速度和压力的变化对空化的影响的对比研究。支持向量机是机器学习算法中的一种分类方法,它可以很容易地对空化问题进行分类。因此,本文分析了支持向量机方法如何更有效地检测离心水泵汽蚀问题。
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Centrifugal Pump Cavitation Detection Using Machine Learning Algorithm Technique
Cavitation is one of the major disadvantages in pumping system, which enhance to form bubbles in the pipeline and it reduces the efficiency of the pump. So it should be identified and take the preventive measure. Machine Learning is a fast and computational method which can easily detect any faults in the pumping system. Still now lots of work has been done on a detection of fault in the pumping system, but mainly those work has done based on vibration details and variation of speed. The paper presents how by the help of machine learning algorithm by varying the speed and pressure cavitation can be identified. It is the comparative study between how the vibration and speed together affects the cavitation result and variation of speed and pressure affects the cavitation. Support Vector Machine is one of the classification methods in machine learning algorithm where it can be easily classified the cavitation problem. So this paper analyses how the method of SVM can more efficiently detect the cavitation problem with the centrifugal water pump.
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