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Simulation and field testing of multiple vehicles collision avoidance algorithms

机译:多车辆碰撞避免算法的仿真与现场测试

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A global planning algorithm for intelligent vehicles is designed based on the A* algorithm, which provides intelligent vehicles with a global path towards their destinations. A distributed real-time multiple vehicle collision avoidance (MVCA) algorithm is proposed by extending the reciprocal n-body collision avoidance method. MVCA enables the intelligent vehicles to choose their destinations and control inputs independently, without needing to negotiate with each other or with the coordinator. Compared to the centralized trajectory-planning algorithm, MVCA reduces computation costs and greatly improves the robustness of the system. Because the destination of each intelligent vehicle can be regarded as private, which can be protected by MVCA, at the same time MVCA can provide a real-time trajectory planning for intelligent vehicles. Therefore, MVCA can better improve the safety of intelligent vehicles. The simulation was conducted in MATLAB, including crossroads scene simulation and circular exchange position simulation. The results show that MVCA behaves safely and reliably. The effects of latency and packet loss on MVCA are also statistically investigated through theoretically formulating broadcasting process based on one-dimensional Markov chain. The results uncover that the tolerant delay should not exceed the half of deciding cycle of trajectory planning, and shortening the sending interval could alleviate the negative effects caused by the packet loss to an extent. The cases of short delay (< 100 ms) and low packet loss (< 5%) can bring little influence to those trajectory planning algorithms that only depend on V2V to sense the context, but the unpredictable collision may occur if the delay and packet loss are further worsened. The MVCA was also tested by a real intelligent vehicle, the test results prove the operability of MVCA.
机译:基于A *算法设计了一种全球智能车辆规划算法,可提供具有朝向其目的地的全球路径的智能车辆。通过延伸互易n身体碰撞避免方法提出了一种分布式实时多车辆碰撞避免(MVCA)算法。 MVCA使智能车辆能够独立选择其目的地和控制输入,而无需互相协商或与协调器进行协商。与集中式轨迹规划算法相比,MVCA降低了计算成本并大大提高了系统的稳健性。因为每个智能车辆的目的地可以被视为私人,这可以通过MVCA保护,同时MVCA可以为智能车辆提供实时轨迹规划。因此,MVCA可以更好地提高智能车辆的安全性。模拟在MATLAB中进行,包括交叉路场景仿真和圆形交换位置模拟。结果表明,MVCA能够安全可靠地表现出来。通过理论上配制基于一维马洛夫链的理论上配制广播过程,还通过理论制定的广播过程统计研究了延迟和丢包对MVCA的影响。结果揭示了容忍延迟不应超过轨迹规划的决定周期的一半,并且缩短发送间隔可以缓解由数据包丢失造成的负面影响。短暂延迟(<100毫秒)和低数据包丢失(<5%)的情况可以对那些只依赖于V2V来感知上下文的轨迹规划算法几乎没有影响,但如果延迟和数据包丢失,可能会发生不可预测的冲突进一步恶化。 MVCA也由真正的智能车辆测试,测试结果证明了MVCA的可操作性。

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