The intercity freight trips of heavy trucks are important data for transportation system planning and urban agglomeration management. In recent decades, the extraction of freight trips from GPS data has gradually become the main alternative to traditional surveys. Identifying the trip ends (origin and destination, OD) is the first task in trip extraction. In previous trip end identification methods, some key parameters, such as speed and time thresholds, have mostly been defined on the basis of empirical knowledge, which inevitably lacks universality. Here, we propose a data-driven trip end identification method. First, we define a speed threshold by analyzing the speed distribution of heavy trucks and identify all truck stops from raw GPS data. Second, we define minimum and maximum time thresholds by analyzing the distribution of the dwell times of heavy trucks at stop location and classify truck stops into three types based on these time thresholds. Third, we use highway network GIS data and freight-related points-of-interest (POIs) data to identify valid trip ends from among the three types of truck stops. In this step, we detect POI boundaries to determine whether a heavy truck is stopping at a freight-related location. We further analyze the spatiotemporal characteristics of intercity freight trips of heavy trucks and discuss their potential applications in practice.
翻译:重型卡车的跨城市货运旅行是运输系统规划和城市聚居管理的重要数据。近几十年来,从全球定位系统数据中提取货运旅行逐渐成为传统调查的主要替代办法。查明出行终点(原地和目的地,OD)是出行的第一项任务。在前一次出行终点识别方法中,一些关键参数,如速度和时间阈值,大多是根据经验知识确定的,这不可避免地缺乏普遍性。在这里,我们提议了一个数据驱动的出行终点识别方法。首先,我们通过分析重型卡车的速度分布和从原始全球定位系统数据中查明所有卡车停留点来确定一个速度阈值。第二,我们通过分析停靠地点的重型卡车停留时间分布,并根据这些时间阈值将卡车停留点分为三种类型。第三,我们使用公路网络地理信息系统数据和货运相关点数据,从三种类型的卡车站中找出有效的出行终点。在这一步骤中,我们检测了POI边界,以确定重型卡车是否停靠货运相关地点。我们进一步分析卡车和潜在货运旅行的重型做法。