Demonstrating a Condition Monitoring Process for Axial Piston Pumps with Damaged Valve Plates

IF 0.7 Q4 ENGINEERING, MECHANICAL International Journal of Fluid Power Pub Date : 2022-02-22 DOI:10.13052/ijfp1439-9776.2324
Nathan Keller, A. Sciancalepore, A. Vacca
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引用次数: 5

Abstract

Unexpected pump failures in mobile fluid power systems result in monetary and productivity losses, but these failures can be alleviated by implementing a condition monitoring system. This research aims to find the best condition monitoring (CM) technique for a pump with the fewest number of sensors, to accurately detect a defective condition. The sensors choice in a CM system is a critical decision, and a high number of sensors may result in disadvantages besides additional cost, such as overfitting the CM model and increased maintenance. A variable displacement axial piston pump is used as a reference machine for testing the CM technique. Several valve plates with various magnitudes of quantifiable wear and damage are used to compare “healthy” and “unhealthy” hydraulic pumps. The pump parameters are measured on a stationary test rig. This involves observing and detecting differences in pump performance between the healthy and unhealthy conditions and reducing the number of sensors required to monitor a pump’s condition. Observable differences in drain flow were shown, and machine learning algorithms were able to successfully classify a faulty and healthy pump with accuracies nearing 100%. The number of sensors was reduced by implementing a feature selection process and resulted in only five of the 23 sensors to correctly detect pump failure. These sensors measure outlet pressure, inlet pressure, drain pressure, pump speed, and pump displacement. The resulting reduction of sensors is reasonably affordable and relatively easy to implement on mobile applications.
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演示了阀板损坏的轴向柱塞泵的状态监测过程
在移动流体动力系统中,意外的泵故障会导致经济和生产力损失,但这些故障可以通过实施状态监测系统来减轻。本研究旨在以最少的传感器数量寻找泵的最佳状态监测(CM)技术,以准确检测缺陷状态。在CM系统中,传感器的选择是一个关键的决定,除了额外的成本之外,大量的传感器可能会导致缺点,例如CM模型的过拟合和维护的增加。以可变排量轴向柱塞泵为基准,对该技术进行了试验研究。几个具有不同程度的可量化磨损和损坏的阀板被用来比较“健康”和“不健康”液压泵。在固定试验台上测量了泵的参数。这包括观察和检测泵在健康和不健康状态下的性能差异,并减少监测泵状态所需的传感器数量。可以观察到排水管流量的差异,机器学习算法能够成功地对故障泵和健康泵进行分类,准确率接近100%。通过实施特征选择过程,减少了传感器的数量,导致23个传感器中只有5个能够正确检测泵故障。这些传感器测量出口压力,进口压力,排放压力,泵转速和泵排量。由此产生的传感器的减少是合理的负担得起的,并且相对容易在移动应用程序上实现。
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来源期刊
International Journal of Fluid Power
International Journal of Fluid Power ENGINEERING, MECHANICAL-
CiteScore
1.60
自引率
0.00%
发文量
16
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