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MPC-BASED CONTROL OF AUTONOMOUS VEHICLES WITH LOCALIZED PATH PLANNING FOR OBSTACLE AVOIDANCE UNDER UNCERTAINTIES

机译:基于MPC的具有局部路径规划的自主车辆的不确定性避障控制。

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This paper presents a Model Predictive Control (MPC) approach for longitudinal and lateral control of autonomous vehicles with a real-time local path planning algorithm. A heuristic graph search method (A* algorithm) combined with piecewise Bezier curve generation is implemented for obstacle avoidance in autonomous driving applications. Constant time headway control is implemented for a longitudinal motion to track lead vehicles and maintain a constant time gap. MPC is used to control the steering angle and the tractive force of the autonomous vehicle. Furthermore, a new method of developing Advanced Driver Assistance Systems (ADAS) algorithms and vehicle controllers using Model-In-the-Loop (MIL) testing is explored with the use of PreScan®. With PreScan®, various traffic scenarios are modeled and the sensor data are simulated by using physics-based sensor models, which are fed to the controller for data processing and motion planning. Obstacle detection and collision avoidance are demonstrated using the presented MPC controller.
机译:本文提出了一种模型预测控制(MPC)方法,通过实时局部路径规划算法对自动驾驶汽车进行纵向和横向控制。结合启发式图搜索方法(A *算法)和分段贝塞尔曲线生成,实现了自动驾驶应用中的避障。对纵向运动实施恒定时间车距控制,以跟踪领先的车辆并保持恒定的时间间隔。 MPC用于控制自动驾驶汽车的转向角和牵引力。此外,还通过使用PreScan®探索了一种使用在车模型(MIL)测试开发高级驾驶员辅助系统(ADAS)算法和车辆控制器的新方法。使用PreScan®,可以对各种交通场景进行建模,并使用基于物理的传感器模型对传感器数据进行仿真,然后将其馈送到控制器进行数据处理和运动计划。使用提供的MPC控制器演示了障碍物检测和避免碰撞。

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