Controlling a vehicle braking and longitudinal acceleration using a seeking control approach

S. A. Salman, A. Shallal, Ahmad H. Sabry
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Abstract

Traditional methods for tracking the paths of driverless vehicles use plant models to determine the corresponding control laws. Due to the intricate interactions between the road and the tires, time-varying characteristics, and unidentified disturbances. It is challenging to create an accurate vehicle model. As a result, data-driven controllers, which are independent of a predetermined plant model are becoming more and more well-liked. This work implements adaptive cruise control (ACC) by employing a control approach called extremum seeking technique (EST), which is a model-free control (MFC), to control a vehicle braking and longitudinal acceleration. The main aim here is to create an ego vehicle that travels at a specific speed with maintaining a secure space with respect to a guide vehicle. A car including an ACC technique called ego car, exploits radar to determine relative velocity and relative space relating to the guiding car. The ACC technique is considered to keep maintain a relatively secure space or a preferred cruising velocity concerning the guiding vehicle. The developed model succeeded to determine the relative velocity and relative space according for the ego car to another guiding car with acceleration not more than ±2 m/s2 and spacing error less than 6 m.
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利用寻的控制方法控制车辆制动和纵向加速度
追踪无人驾驶车辆路径的传统方法使用植物模型来确定相应的控制法则。由于路面和轮胎之间存在错综复杂的相互作用、时变特性以及无法识别的干扰。创建精确的车辆模型具有挑战性。因此,独立于预定工厂模型的数据驱动控制器越来越受到青睐。这项研究通过采用一种名为极值寻优技术(EST)的控制方法来实现自适应巡航控制(ACC),这是一种无模型控制(MFC),用于控制车辆制动和纵向加速。其主要目的是创造一种自我车辆,以特定速度行驶,并与引导车辆保持安全空间。包含自动控制技术的汽车被称为 "自我汽车",它利用雷达来确定与引导车的相对速度和相对空间。ACC 技术被认为能保持与引导车之间的相对安全空间或优先巡航速度。所开发的模型成功地确定了自我车与另一辆引导车的相对速度和相对空间,加速度不超过±2 m/s2,间距误差小于 6 m。
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