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An online data-driven approach for performance prediction of electro-hydrostatic actuator with thermal-hydraulic modeling

机译:基于热力建模的电液静液压执行器性能预测在线数据驱动方法

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The Electro-Hydrostatic Actuator (EHA) plays an essential part in power-by-wire (PBW) systems due to its compact volume and high power density ratio. However, it is fairly usual for the performance of a highly integrated EHA to be adversely affected by heat dissipation. In this paper, taking into account the effect of physical heat characteristics, thermal network model is created to depict the heat dissipation of an EHA system. A dynamic performance degradation model is enhanced to appropriately evaluate the performance of the EHA system. A novel real-time corrected thermal network model based on artificial neural network (RCTN-ANN) is developed, the key idea of the proposed model is to correct parameters by using trained RCTN-ANN model and online data, and simulate the performance deterioration of online EHA, which can then be used for prognostics and health management (PHM) of EHA under actual working conditions. Validated using actual EHA experiment, the results show that the proposed method provides an accurate performance prediction with dynamic data, which is significant for the real-time PHM of the EHA system.
机译:静电执行器 (EHA) 由于其紧凑的体积和高功率密度比,在线控电源 (PBW) 系统中发挥着重要作用。然而,高度集成的EHA的性能通常会受到散热的不利影响。该文综合考虑物理热特性的影响,建立了热网络模型,描绘了EHA系统的散热过程。增强了动态性能下降模型,以适当评估 EHA 系统的性能。该文开发了一种基于人工神经网络的实时校正热网络模型(RCTN-ANN),该模型的主要思想是利用训练好的RCTN-ANN模型和在线数据对参数进行校正,模拟在线EHA的性能劣化,进而用于EHA在实际工况下的预后和健康管理(PHM)。通过实际EHA实验验证,所提方法利用动态数据提供了准确的性能预测,对EHA系统的实时PHM具有重要意义。

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