论文标题
通过Stackelberg策略,由于城市交通流量而对大气污染的最佳控制
Optimal control of atmospheric pollution because of urban traffic flow by means of Stackelberg strategies
论文作者
论文摘要
现代城市中的两个主要问题是空气污染和道路交通拥堵。它们密切相关,并具有类似的起源:交通流量。为了面对这些问题,地方政府施加了交通限制,以防止车辆进入敏感地区,最终目的是降低空气污染水平。但是,这些限制迫使驾驶员寻找通常会产生交通拥堵的替代路线,这意味着较长的旅行时间和更高的空气污染。在这项工作中,结合了对部分微分方程和计算建模的最佳控制,我们将一个多目标控制问题与空气污染和驱动程序的旅行时间作为目标,并从Stackelberg的意义上寻找其最佳解决方案。在这个问题中,地方政府(领导者)实施交通限制,同时,一组驾驶员(追随者)行动选择了针对领导者限制的旅行偏好。从数值上讲,通过结合遗传 - 精通主义算法和内点方法来解决离散的问题,并显示了瓜达拉哈拉大都会区(墨西哥)中现实情况的计算结果。
Two major problems in modern cities are air contamination and road congestion. They are closely related and present a similar origin: traffic flow. To face these problems, local governments impose traffic restrictions to prevent the entry of vehicles into sensitive areas, with the final aim of dropping down air pollution levels. However, these restrictions force drivers to look for alternative routes that usually generate congestions, implying both longer travel times and higher levels of air pollution. In this work, combining optimal control of partial differential equations and computational modelling, we formulate a multi-objective control problem with air pollution and drivers' travel time as objectives and look for its optimal solutions in the sense of Stackelberg. In this problem, local government (the leader) implements traffic restrictions meanwhile the set of drivers (the follower) acts choosing travel preferences against leader constraints. Numerically, the discretized problem is solved by combining genetic-elitist algorithms and interior-point methods, and computational results for a realistic case posed in the Guadalajara Metropolitan Area (Mexico) are shown.