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Multiobjective Optimization of Lane-Changing Strategy for Intelligent Vehicles in Complex Driving Environments

机译:复杂驾驶环境下智能车辆换道策略的多目标优化

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This paper describes an optimal lane-changing strategy for intelligent vehicles under the constraints of collision avoidance in complex driving environments. The key technique is optimization in a collision-free lane-changing trajectory cluster. To achieve this cluster, a tuning factor is first derived by optimizing a cubic polynomial. Then, a feasible trajectory cluster is generated by adjusting the tuning factor in a stable handling envelope defined from vehicle dynamics limits. Furthermore, considering the motions of surrounding vehicles, a collision avoidance algorithm is employed in the feasible cluster to select the collision-free trajectory cluster. To extract the optimal trajectory from this cluster, the TOPSIS algorithm is utilized to solve a multiobjective optimization problem that is subject to lane change performance indices, i.e., trajectory following, comfort, lateral slip and lane-changing efficiency. In this way, the collision risk is eliminated, and the lane change performance is improved. Simulation results show that the strategy is able to plan suitable lane-changing trajectories while avoiding collisions in complex environments.
机译:本文描述了在复杂驾驶环境下避免碰撞的约束下的智能车辆最佳换道策略。关键技术是在无碰撞变道轨迹簇中进行优化。为了实现这一集群,首先要通过优化三次多项式来得出调整因子。然后,通过在由车辆动力学极限定义的稳定的操纵范围内调整调整因子来生成可行的轨迹簇。此外,考虑到周围车辆的运动,在可行簇中采用避免碰撞算法来选择无碰撞轨迹簇。为了从该集群中提取最优轨迹,TOPSIS算法用于解决多目标优化问题,该问题受车道变化性能指标(即轨迹跟随,舒适度,侧滑和换道效率)的影响。这样,消除了碰撞风险,并改善了换道性能。仿真结果表明,该策略能够规划合适的变道轨迹,同时避免在复杂环境中发生碰撞。

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