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首页> 外文期刊>International Journal of Precision Engineering and Manufacturing >A Feedforward Neural Network Fuzzy Grey Predictor-based Controller for Force Control of an Electro-Hydraulic Actuator
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A Feedforward Neural Network Fuzzy Grey Predictor-based Controller for Force Control of an Electro-Hydraulic Actuator

机译:基于前馈神经网络模糊灰色预测器的电液执行器力控制

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Recently, electro-hydraulic actuators (EHAs) have shown significant advantages over conventionally valve-controlled actuators. EHAs have a wide range of applications where force or position control with high accuracy is exceedingly necessary. Besides the benefits, however, EHA is a highly complex nonlinear system which causes challenges for both modeling and control tasks. This paper aims to develop an effective control approach for force control of a typical EHA system. This control scheme is considered as an advanced combination of a feedforward neural network - based PID (FNNPID) controller and a fuzzy grey predictor (FGP), shortened as feedforward neural network fuzzy grey predictor (FNNFGP). Here, the FNNPID controller is used to drive the system to desired targets. Additionally, a learning mechanism with robust checking conditions is implemented into the FNNPID in order to optimize online its parameters with respect to the control error minimization. Meanwhile, the FGP predictor with self-tuning ability of the predictor step size takes part in, first, estimating the system output in the near future to optimize the controller parameters in advance and, second, creating a compensating control signal accordingly to the system perturbations and, consequently, improving the control performance. Real-time experiments have been carried out to investigate the effectiveness of the proposed control approach.
机译:近年来,电动液压执行器(EHA)已显示出优于常规阀控执行器的显着优势。 EHA具有广泛的应用,其中非常需要高精度的力或位置控制。然而,除了好处之外,EHA是一个高度复杂的非线性系统,给建模和控制任务带来了挑战。本文旨在开发一种有效的控制方法,用于典型EHA系统的力控制。该控制方案被认为是基于前馈神经网络的PID(FNNPID)控制器和模糊灰色预测器(FGP)的高级组合,简称为前馈神经网络模糊灰色预测器(FNNFGP)。此处,FNNPID控制器用于将系统驱动到所需目标。此外,在FNNPID中实现了具有鲁棒检查条件的学习机制,以便针对控制误差最小化在线优化其参数。同时,具有预测器步长自调整能力的FGP预测器首先参与估算系统输出,以便提前优化控制器参数;其次,根据系统扰动创建补偿控制信号。因此,改善了控制性能。已经进行了实时实验以研究所提出的控制方法的有效性。

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