基于轨迹最大相似度的共享自动驾驶汽车动态拼车策略

Shuang Zhang, Kai Zhang
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引用次数: 0

摘要

作为“自动驾驶”和“共享”的融合,共享自动驾驶汽车可以为普通人提供实时拼车服务,并有可能改变当前的交通模式。本文重点研究了一种新的自动驾驶汽车动态共乘策略,包括系统技术框架、服务提供商的工作流程和客户与汽车之间的匹配模型,根据客户与汽车预测轨迹的相似性,服务提供商将使用更少的车辆来满足所有的需求,如果他们有相似的轨迹。计算实验结果表明,该策略可以提高车辆占用率,缓解拥堵。
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Dynamic Ridesharing Strategy for Shared Autonomous Vehicles Based on Maximum Similarity of Trajectories
As a convergence of “self-driving” and “sharing”, shared autonomous vehicles can offer real-time ridesharing service to the common people, and have potential to transform current traffic patterns. This paper focuses on a new dynamic ridesharing strategy for shared self-driving cars, including system technical framework, workflow to operate for service provider and matching model between customers and cars, according to the similarity of their predicted trajectories, service provider would use fewer vehicles to meet all the requests by matching ride demands and cars, if they have similar trajectories. A computational experiment results showed that, this strategy can increase vehicle occupancy and alleviate congestion.
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