Recently, the traffic congestion in modern cities has become a growing worry for the residents. As presented in Baidu traffic report, the commuting stress index has reached surprising 1.973 in Beijing during rush hours, which results in longer trip time and increased vehicular queueing. Previous works have demonstrated that by reasonable scheduling, e.g, rebalancing bike-sharing systems and optimized bus transportation, the traffic efficiency could be significantly improved with little resource consumption. However, there are still two disadvantages that restrict their performance: (1) they only consider single scheduling in a short time, but ignoring the layout after first reposition, and (2) they only focus on the single transport. However, the multi-modal characteristics of urban public transportation are largely under-exploited. In this paper, we propose an efficient and economical multi-modal traffic scheduling scheme named JLRLS based on spatio -temporal prediction, which adopts reinforcement learning to obtain optimal long-term and joint schedule. In JLRLS, we combines multiple transportation to conduct scheduling by their own characteristics, which potentially helps the system to reach the optimal performance. Our implementation of an example by PaddlePaddle is available at https://github.com/bigdata-ustc/Long-term-Joint-Scheduling, with an explaining video at https://youtu.be/t5M2wVPhTyk.
翻译:最近,现代城市的交通拥堵已成为居民日益担忧的一个问题。 正如Baidu交通报告所介绍的,交通压力指数在繁忙时段的北京达到了惊人的1.973,令人惊讶地达到1.973,导致出行时间更长,车辆排队增多。以前的工程表明,通过合理时间安排,例如重新平衡自行车共享系统和优化公共汽车交通交通,交通效率可以因资源消耗少而大大提高。然而,限制其绩效的还有两个不利因素:(1)他们只考虑在短时间内安排,而忽略了第一次重新定位后的布局,以及(2)他们只关注单一交通。然而,城市公共交通的多模式特点基本上没有得到充分利用。在本文件中,我们提出了一个高效而经济的多模式交通调度计划,名为JLRLLS,基于spio-时间预测,采用强化学习,以获得最佳的长期和联合时间表。在JLLLLLLLLS中,我们结合了多种交通,根据自己的特征进行安排,这可能有助于系统达到最佳绩效。我们在AdddledlyPad-Paddledlead/Mimus-GUbuls.