控制理论(社会学)
打滑(空气动力学)
执行机构
车辆动力学
临界制动
防抱死制动系统
稳健性(进化)
模型预测控制
制动器
工程类
扭矩
计算机科学
电子稳定控制
滑移率
汽车工程
制动系统
加速度
非线性系统
控制器(灌溉)
偏航
控制系统
控制工程
鲁棒控制
发动机制动
作者
Hongliang Wang,Zhou Yan,Dawei Pi,Yongjun Yan,Yizhou Wang,Dingge Fan,Chenshuo Zhang,Yongzhi Wang,Hongliang Wang,Zhou Yan,Dawei Pi,Yongjun Yan,Yizhou Wang,Dingge Fan,Chenshuo Zhang,Yongzhi Wang
标识
DOI:10.1177/09544070251389245
摘要
To address the inherent limitations of conventional Anti-lock Braking Systems (ABS) characterized by time-varying single slip rate characteristics during vehicular deceleration, this study proposes a novel double-layer ABS control strategy integrating Model Predictive Control (MPC)-based slip rate tracking with wheel angular acceleration regulation. The research framework comprises three principal phases: First, we establish a comprehensive dynamic braking system model incorporating single-wheel dynamics, slip rate dynamics, nonlinear tire behavior, and hydraulic brake actuator characteristics. Subsequently, an upper-layer MPC controller is developed to achieve real-time tracking of the predefined optimal slip rate through predictive state estimation and constrained optimization. In parallel, a lower-layer proportional-integral-derivative (PID) controller is implemented to regulate wheel angular acceleration as a secondary control objective. The hierarchical control architecture ensures coordinated operation between the two control layers until braking termination conditions are met. Extensive co-simulations are conducted across three distinct road surfaces (dry asphalt, wet concrete, and snowy road) under 65 km/h initial velocity conditions. Comparative analyses with conventional single-objective ABS control demonstrate that the proposed double-layer control strategy achieves 12.7% reduction in braking distance, 18.3% improvement in slip rate tracking accuracy, and enhanced transient response characteristics during emergency braking scenarios. In the subsequent plan, we will also conduct further verification of the algorithm's real-time performance and robustness in engineering hardware through hardware-in-the-loop experiments
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