扰动(地质)
自抗扰控制
人工神经网络
主动悬架
悬挂(拓扑)
控制工程
工程类
控制(管理)
控制理论(社会学)
计算机科学
人工智能
地质学
执行机构
数学
物理
古生物学
量子力学
非线性系统
同伦
纯数学
国家观察员
作者
Yunshi Wu,Donghai Su,Hao Chang,Feihong Liu,Weiping Wang
标识
DOI:10.1177/09544070251340210
摘要
To enhance the ride comfort of the active hydro-pneumatic suspension and ensure system stability during an engineering vehicle’s operation, this study focuses on a dual-chamber hydro-pneumatic spring. It derives the relationship between the nonlinearity of the damping force and stiffness characteristics of the hydro-pneumatic spring and the vehicle body displacement. A control strategy is proposed to optimize the active disturbance rejection controller (ADRC) using a BP neural network. The neural network’s self-learning capability is employed for dynamic tuning of the ADRC parameters, thereby dampening body vibrations and achieving a stable condition. A two-degree-of-freedom dynamics model for a hydro-pneumatic suspension, along with a road input model, is constructed using MATLAB/Simulink. An optimized ADRC, leveraging a BP neural network, is integrated into the hydro-pneumatic suspension system. The vertical acceleration of the vehicle body and the dynamic load of the tire are adopted as evaluation indices. Through simulation analysis, the performance of the optimized algorithm is compared with that of an active suspension system controlled by both passive control and ADRC control. It is demonstrated that this optimization algorithm effectively reduces the vehicle body’s vertical acceleration and the tire’s dynamic load, thereby validating the efficacy of the control strategy.
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