Trajectory control of a hydraulic system using intelligent control approach based on adaptive prediction model

IF 1.8 Q3 AUTOMATION & CONTROL SYSTEMS
Dao Thanh Liem
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引用次数: 1

Abstract

Electro-hydraulic actuators (EHAs) have become a preferred alternative to traditional hydraulic actuators with valve control systems due to their numerous advantages, making them an ideal choice for applications requiring high-precision force or position control. However, the highly complex nonlinear nature of EHAs makes modelling and controlling them a challenging task. To address this challenge, a new position control approach has been proposed for an EHA system using a combination of a feedforward online-tuning PID (FOPID) controller and an adaptive grey predictor (AGP), known as the feedforward online-tuning adaptive grey predictor (FOAGP). The FOPID controller is constructed based on PID controller and fuzzy logic algorithm to control the EHA system towards referred trajectory, while an updating rule that consists of robust checking terms optimizes its parameters online to minimize control error. The AGP predictor is an important aspect of the proposed approach. It consists of a self-tuning step size mechanism, which estimates the performance of the plant to tune the parameters of the controller and create an additive control signal that is used to counteract environment noises and perturbations. This approach significantly improves control performance by reducing the effect of disturbances and sensor noises on the system. The FOAGP approach was tested in simulation to investigate its effectiveness. The results showed that the proposed approach outperformed other existing control methods, with a higher accuracy and better control performance. One of the significant advantages of the FOAGP approach is its ability to learn and adapt to changing system dynamics. The learning mechanism used in the FOPID controller allows the system to optimize its parameters online, which is especially useful in systems with varying operating conditions. The AGP predictor also continuously adjusts its parameters to accurately estimate the system output, making it an effective tool for controlling EHAs. The proposed approach offers a significant improvement in control performance, making it a better alternative to traditional control methods. This approach can be applied to various EHA systems, including those used in aerospace, automobile, and robotic applications, among others.

基于自适应预测模型的液压系统轨迹智能控制方法
电液执行器(EHAs)由于其众多优点,已成为传统液压执行器与阀门控制系统的首选替代品,使其成为需要高精度力或位置控制的应用的理想选择。然而,eha高度复杂的非线性特性使其建模和控制成为一项具有挑战性的任务。为了解决这一挑战,提出了一种新的EHA系统位置控制方法,该方法使用前馈在线调谐PID (FOPID)控制器和自适应灰色预测器(AGP)的组合,称为前馈在线调谐自适应灰色预测器(FOAGP)。在PID控制器和模糊逻辑算法的基础上构建FOPID控制器,控制EHA系统向参考轨迹移动,同时采用由鲁棒校验项组成的更新规则对其参数进行在线优化,使控制误差最小化。AGP预测器是该方法的一个重要方面。它由一个自调整步长机制组成,该机制估计对象的性能以调整控制器的参数并创建用于抵消环境噪声和扰动的加性控制信号。该方法通过减少干扰和传感器噪声对系统的影响,显著提高了控制性能。仿真验证了FOAGP方法的有效性。结果表明,该方法优于现有的控制方法,具有更高的精度和更好的控制性能。FOAGP方法的一个显著优点是它能够学习和适应不断变化的系统动力学。在FOPID控制器中使用的学习机制允许系统在线优化其参数,这在具有不同运行条件的系统中特别有用。AGP预测器还可以不断调整其参数以准确估计系统输出,使其成为控制eha的有效工具。该方法显著提高了控制性能,是传统控制方法的更好替代方案。这种方法可以应用于各种EHA系统,包括用于航空航天、汽车和机器人等应用的系统。
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来源期刊
IFAC Journal of Systems and Control
IFAC Journal of Systems and Control AUTOMATION & CONTROL SYSTEMS-
CiteScore
3.70
自引率
5.30%
发文量
17
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