The ever-increasing heavy traffic congestion potentially impedes the accessibility of emergency vehicles (EVs), resulting in detrimental impacts on critical services and even safety of people's lives. Hence, it is significant to propose an efficient scheduling approach to help EVs arrive faster. Existing vehicle-centric scheduling approaches aim to recommend the optimal paths for EVs based on the current traffic status while the road-centric scheduling approaches aim to improve the traffic condition and assign a higher priority for EVs to pass an intersection. With the intuition that real-time vehicle-road information interaction and strategy coordination can bring more benefits, we propose LEVID, a LEarning-based cooperative VehIcle-roaD scheduling approach including a real-time route planning module and a collaborative traffic signal control module, which interact with each other and make decisions iteratively. The real-time route planning module adapts the artificial potential field method to address the real-time changes of traffic signals and avoid falling into a local optimum. The collaborative traffic signal control module leverages a graph attention reinforcement learning framework to extract the latent features of different intersections and abstract their interplay to learn cooperative policies. Extensive experiments based on multiple real-world datasets show that our approach outperforms the state-of-the-art baselines.
翻译:不断加剧的交通拥堵可能阻碍紧急车辆(EV)的无障碍性,从而对关键服务乃至人们生活的安全产生有害影响,因此,提出高效的日程安排方法,以帮助EV更快地到达,因此具有重要意义,现有的以车辆为中心的日程安排方法旨在根据目前的交通状况建议EV的最佳路径,而以道路为中心的日程安排方法则旨在改善交通状况,为EV通过一个交叉点确定更高的优先度。鉴于实时车辆-公路信息互动和战略协调能够带来更多好处的直觉,我们建议LEVID,即基于LEVID的合作性VehIcle-roaD时间安排方法,包括实时路线规划模块和协作交通信号控制模块,这些模块彼此互动,并作出迭接的决定。实时日程安排模块调整人造潜在实地方法,以应对交通信号的实时变化,避免跌入一个地方最佳状态。协作性交通信号控制模块利用一个图形式的注意力强化学习框架,以提取不同交叉点的潜在特征和抽象的相互影响来学习合作政策。基于多种现实式基线式方法进行的广泛实验。