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首页> 外文期刊>Journal of Computing and Information Science in Engineering >Monitoring the Degradation in the Switching Behavior of a Hydraulic Valve Using Recurrence Quantification Analysis and Fractal Dimensions
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Monitoring the Degradation in the Switching Behavior of a Hydraulic Valve Using Recurrence Quantification Analysis and Fractal Dimensions

机译:使用复制量化分析和分形尺寸监测液压阀的开关行为中的降解

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Valves are crucial components of a hydraulic system that enable reliable fluid management. Hydraulic valves actuated by a solenoid are prone to degradation in their switching behavior, which may induce undesirable fluctuations in the fluid pressure and flow rate, thereby impairing the system performance and limiting its predictability and reliability. Therefore, it is imperative to monitor the switching behavior of solenoid-actuated hydraulic valves. First, recurrence quantification analysis (RQA) has been applied to the experimental flow signals from a hydraulic circuit to understand the complex switching behavior of the valve. Using RQA, the monotonicity of six recurrence-based parameters has been assessed. In addition, two more nonlinear features, namely, Higuchi and Katz fractal dimensions have been extracted from the flow signals. Based on these eight features (six RQA-derived features and two nonlinear features) a feature matrix is formulated. Second, in a parallel approach, eight different statistical features are extracted from the flow signal to construct another feature matrix. Subsequently, different machine learning methods namely Ensemble learning, K-Nearest Neighbor (KNN), and support vector machine (SVM) have been trained on these two feature sets to predict the valve switching characteristics. A comparison between two feature sets shows that ensemble learning gives better prediction accuracy (99.95% versus 92.2% using statistical features) when fed with RQA features combined with fractal dimensions. Therefore, this study demonstrates that by utilizing the recurrence plots and machine learning techniques on the flow rate signals, the degradation in the switching behavior of hydraulic valves can be monitored effectively, with a high-prediction accuracy.
机译:阀门是液压系统的关键部件,可实现可靠的流体管理。由螺线管致动的液压阀容易发生在其开关行为中降解,这可能会引起流体压力和流速的不希望的波动,从而损害系统性能并限制其可预测性和可靠性。因此,必须监测螺线管致动液压阀的开关行为。首先,复制量化分析(RQA)已应用于来自液压回路的实验流量信号,以了解阀的复杂切换行为。使用RQA,已经评估了六个复发的参数的单调性。另外,从流量信号中提取了两个更多的非线性特征,即Higuchi和Katz分形尺寸。基于这八个特征(六个RQA导出的功能和两个非线性功能),配制了一个特征矩阵。其次,在平行方法中,从流量信号提取八种不同的统计特征以构建另一个特征矩阵。随后,不同的机器学习方法即集合学习,K最近邻居(KNN)和支持向量机(SVM)已经在这两个特征组上​​培训,以预测阀门切换特性。两个特征集之间的比较显示,当使用RQA功能与分形尺寸相结合时,集合学习提供了更好的预测准确性(使用统计特征92.2%)。因此,本研究表明,通过利用在流量信号上的复发图和机器学习技术,可以有效地监测液压阀的切换行为中的劣化,具有高预测精度。

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