With the emerging technologies in Intelligent Transportation System (ITS), the adaptive operation of road space is likely to be realised within decades. An intelligent street can learn and improve its decision-making on the right-of-way (ROW) for road users, liberating more active pedestrian space while maintaining traffic safety and efficiency. However, there is a lack of effective controlling techniques for these adaptive street infrastructures. To fill this gap in existing studies, we formulate this control problem as a Markov Game and develop a solution based on the multi-agent Deep Deterministic Policy Gradient (MADDPG) algorithm. The proposed model can dynamically assign ROW for sidewalks, autonomous vehicles (AVs) driving lanes and on-street parking areas in real-time. Integrated with the SUMO traffic simulator, this model was evaluated using the road network of the South Kensington District against three cases of divergent traffic conditions: pedestrian flow rates, AVs traffic flow rates and parking demands. Results reveal that our model can achieve an average reduction of 3.87% and 6.26% in street space assigned for on-street parking and vehicular operations. Combined with space gained by limiting the number of driving lanes, the average proportion of sidewalks to total widths of streets can significantly increase by 10.13%.
翻译:智能交通系统(ITS)的新兴技术使道路空间的适应性操作有可能在几十年内实现。智能街道可以为道路使用者实时学习并改进其在路右(ROW)的决策,同时释放更加活跃的行人空间,同时保持交通安全和效率。然而,缺乏对这些适应性街道基础设施的有效控制技术。为了填补现有研究中的这一空白,我们将这一控制问题发展成一个Markov游戏,并根据多媒介深海决定政策梯度(MADDPG)算法制定解决方案。拟议的模型可以动态地为人行道、自主车辆驾驶道和街道停车场分配ROW,实时地进行学习并改进其决策。与SUMO交通模拟器整合后,利用南Kensington区的道路网络评估这一模式,以三种不同的交通条件:行人流率、AVs交通流量率和停车要求。结果显示,我们的模式可以实现平均减少3.87 %和6.26%的街道空间,分配给街道停车场和街道停车场停车场和街道停车场停车场的停车区段面积可大幅增长。通过限制的车道总行距增加10.13%的车位和平均行车道的行距增加空间。