{"title":"基于SUMO的道路交通分析与建模,优化应急车辆到达时间","authors":"Shamli Soni, K. Weronek","doi":"10.52825/scp.v4i.225","DOIUrl":null,"url":null,"abstract":"Traffic simulation tools are used by city planners and traffic professionals over the years for modelling and analysis of existing and future infrastructural or policy implementations. There are numerous studies on emergency vehicle (EV) prioritization in cities all over the world, but every area is unique and requires the data collection and simulation to be done separately. In this case, the focus area is the Mörfelder Landstraße in Frankfurt am Main, Germany, one of the busiest streets in this city. Thestudy illustrates demand modelling, simulation and evaluation of a traffic improvement strategy for EVs. Vehicular traffic such as passenger cars and trams are simulated microscopically. To perform accurate traffic simulation, input data quality assurance and cleansing of Master Data is required. Therefore, the data is adapted to reproduce the real-world scenario and transformed into the readable format for the simulation model. Vehicular demand is calibrated by traffic count data provided by the Frankfurt Traffic Department. To model road traffic and road network, origin destination matrices using the Gravity Mathematical Model and Open Street Maps are generated, respectively. This process is time-consuming and requires effort. However, this process is critical to get realistic results. In the next step, the road traffic is simulated using SUMO (Simulation of Urban mobility). Finally, EV relevant key performance indicators (KPIs): total trip time and total delay time are derived from simulations. The real-world scenario is compared with five alternative scenarios. The comparison of the KPIs revealed that the real-world scenario results in longer travel times compared to the EV-prioritization scenario. In the least case, the overall travel times for EV has decreased significantly and, as we know, in the case of EVs, even a few seconds saved could prove crucial for a person in need.","PeriodicalId":439794,"journal":{"name":"SUMO Conference Proceedings","volume":"112 6 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-06-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Analysis and Modelling of Road Traffic Using SUMO to Optimize the Arrival Time of Emergency Vehicles\",\"authors\":\"Shamli Soni, K. Weronek\",\"doi\":\"10.52825/scp.v4i.225\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Traffic simulation tools are used by city planners and traffic professionals over the years for modelling and analysis of existing and future infrastructural or policy implementations. There are numerous studies on emergency vehicle (EV) prioritization in cities all over the world, but every area is unique and requires the data collection and simulation to be done separately. In this case, the focus area is the Mörfelder Landstraße in Frankfurt am Main, Germany, one of the busiest streets in this city. Thestudy illustrates demand modelling, simulation and evaluation of a traffic improvement strategy for EVs. Vehicular traffic such as passenger cars and trams are simulated microscopically. To perform accurate traffic simulation, input data quality assurance and cleansing of Master Data is required. Therefore, the data is adapted to reproduce the real-world scenario and transformed into the readable format for the simulation model. Vehicular demand is calibrated by traffic count data provided by the Frankfurt Traffic Department. To model road traffic and road network, origin destination matrices using the Gravity Mathematical Model and Open Street Maps are generated, respectively. This process is time-consuming and requires effort. However, this process is critical to get realistic results. In the next step, the road traffic is simulated using SUMO (Simulation of Urban mobility). Finally, EV relevant key performance indicators (KPIs): total trip time and total delay time are derived from simulations. The real-world scenario is compared with five alternative scenarios. The comparison of the KPIs revealed that the real-world scenario results in longer travel times compared to the EV-prioritization scenario. 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引用次数: 0
摘要
多年来,城市规划者和交通专业人员使用交通模拟工具对现有和未来的基础设施或政策实施进行建模和分析。在世界范围内,关于应急车辆优先级的研究有很多,但每个地区都是独特的,需要分别进行数据收集和仿真。在这种情况下,重点区域是德国法兰克福的Mörfelder Landstraße,这是这个城市最繁忙的街道之一。该研究阐述了电动汽车交通改善策略的需求建模、仿真和评估。车辆交通,如乘用车和有轨电车的微观模拟。为了进行准确的交通模拟,需要保证输入数据的质量和清理主数据。因此,对数据进行调整,以再现现实世界的场景,并将其转换为仿真模型的可读格式。车辆需求根据法兰克福交通局提供的交通统计数据进行校准。为了模拟道路交通和道路网络,分别使用重力数学模型和开放街道地图生成原点和目的地矩阵。这个过程耗时且需要努力。然而,这个过程对于获得现实的结果至关重要。下一步,使用SUMO (Simulation of Urban mobility)对道路交通进行模拟。最后,通过仿真得到电动汽车相关关键性能指标:总行程时间和总延迟时间。将真实世界的场景与五个备选场景进行比较。kpi的比较表明,与电动汽车优先级场景相比,现实场景导致的旅行时间更长。在最小的情况下,电动汽车的整体旅行时间大大减少,正如我们所知,在电动汽车的情况下,即使节省几秒钟对有需要的人来说也是至关重要的。
Analysis and Modelling of Road Traffic Using SUMO to Optimize the Arrival Time of Emergency Vehicles
Traffic simulation tools are used by city planners and traffic professionals over the years for modelling and analysis of existing and future infrastructural or policy implementations. There are numerous studies on emergency vehicle (EV) prioritization in cities all over the world, but every area is unique and requires the data collection and simulation to be done separately. In this case, the focus area is the Mörfelder Landstraße in Frankfurt am Main, Germany, one of the busiest streets in this city. Thestudy illustrates demand modelling, simulation and evaluation of a traffic improvement strategy for EVs. Vehicular traffic such as passenger cars and trams are simulated microscopically. To perform accurate traffic simulation, input data quality assurance and cleansing of Master Data is required. Therefore, the data is adapted to reproduce the real-world scenario and transformed into the readable format for the simulation model. Vehicular demand is calibrated by traffic count data provided by the Frankfurt Traffic Department. To model road traffic and road network, origin destination matrices using the Gravity Mathematical Model and Open Street Maps are generated, respectively. This process is time-consuming and requires effort. However, this process is critical to get realistic results. In the next step, the road traffic is simulated using SUMO (Simulation of Urban mobility). Finally, EV relevant key performance indicators (KPIs): total trip time and total delay time are derived from simulations. The real-world scenario is compared with five alternative scenarios. The comparison of the KPIs revealed that the real-world scenario results in longer travel times compared to the EV-prioritization scenario. In the least case, the overall travel times for EV has decreased significantly and, as we know, in the case of EVs, even a few seconds saved could prove crucial for a person in need.