首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Internal leakage identification of hydraulic cylinder based on intrinsic mode functions with random forest
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Internal leakage identification of hydraulic cylinder based on intrinsic mode functions with random forest

机译:基于内在模式功能的随机林的液压缸内泄漏识别

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摘要

Monitoring for internal leakage of hydraulic cylinders is vital to maintain the efficiency and safety of hydraulic systems. An intelligent classifier is proposed to automatically evaluate internal leakage levels based on the newly extracted features and random forest algorithm. The inlet and outlet pressures as well as the pressure differences of two chambers are chosen as the monitoring parameters for leakage identification. The empirical mode decomposition method is used to decompose the raw pressure signals into a series of intrinsic mode functions to obtain the essence in experimental signals. Then, the features extracted from intrinsic mode functions in terms of statistical analysis are formed the input vector to train the leakage detector. The classifier based on random forest is established to categorize internal leakage into proper levels. The accuracy of the internal leakage evaluator is verified by the experimental pressure signals. Moreover, an internal leakage evaluator is established based on the support vector machine algorithm, in which the wavelet transform is applied for feature extraction. The accuracy and efficiency of different classifiers are compared based on leakage experiments. The results show that the classifier trained by the intrinsic mode function features in terms of random forest algorithm may more effectively and accurately identify internal leakage levels of hydraulic cylinders. The leakage evaluator provides probability for online monitoring of the internal leakage of hydraulic cylinders based on the inherent sensors.
机译:液压缸内泄漏监测对于保持液压系统的效率和安全性至关重要。建议基于新提取的特征和随机林算法自动评估内部泄漏水平的智能分类器。选择入口和出口压力以及两个腔室的压力差异作为泄漏识别的监测参数。经验模式分解方法用于将原始压力信号分解为一系列内在模式,以获得实验信号的本质。然后,在统计分析方面从内在模式功能中提取的特征形成为训练泄漏检测器的输入矢量。建立基于随机林的分类器,以将内部泄漏分类为适当的级别。通过实验压力信号验证内部泄漏评估器的准确性。此外,基于支持向量机算法建立内部泄漏评估器,其中施加小波变换用于特征提取。基于泄漏实验比较了不同分类器的准确性和效率。结果表明,在随机林算法方面,由内在模式功能特征训练的分类器可以更有效地识别液压缸的内部泄漏水平。泄漏评估器提供了基于固有传感器在线监测液压缸内泄漏的概率。

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