The mobility of people is at the center of transportation planning and decision-making of the cities of the future. In order to accelerate the transition to zero-emissions and to maximize air quality benefits, smart cities are prioritizing walking, cycling, shared mobility services and public transport over the use of private cars. Extensive progress has been made in autonomous and electric cars. Autonomous Vehicles (AV) are increasingly capable of moving without full control of humans, automating some aspects of driving, such as steering or braking. For these reasons, cities are investing in the infrastructure and technology needed to support connected, multi-modal transit networks that include shared electric Autonomous Vehicles (AV). The relationship between traditional public transport and new mobility services is in the spotlight and need to be rethought. This paper proposes an agent-based simulation framework that allows for the creation and simulation of mobility scenarios to investigate the impact of new mobility modes on a city daily life. It lets traffic planners explore the cooperative integration of AV using a decentralized control approach. A prototype has been implemented and validated with data of the city of Trento.
翻译:人的流动是未来城市交通规划和决策的中心,为了加速向零排放过渡和尽量扩大空气质量效益,智能城市将步行、骑自行车、共享流动服务和公共交通作为使用私家车的优先事项,自主汽车和电动汽车取得了广泛进展,自主车辆越来越能够在没有完全控制的情况下移动,使驾驶的某些方面自动化,如方向或制动,因此,城市正在投资于支持连接的多式过境网络所需的基础设施和技术,其中包括共用电动自主车辆(AV)。传统公共交通和新的流动服务之间的关系受到关注,需要重新思考。本文提出一个基于代理的模拟框架,允许创建和模拟流动情景,以调查新的流动模式对城市日常生活的影响。它让交通规划人员利用分散控制办法探索AV的合作整合。一个原型已经实施,并用特雷托市的数据验证。