摘要
相比于大城市,中小城市在新型城镇化中至关重要,具有独特的居民出行行为特征,但以往的研究并没有得到足够的关注。目前研究主要使用浮动车数据分析特大城市居民的出行行为,但考虑到小城市土地开发强度低、公共交通不发达、研究空间尺度精细等特点,这些研究方法不能完全适用于针对小城市的研究。因此,本文使用小城市出租车GPS轨迹数据识别上下客事件,沿道路生成随机样点采样得到了分时段的上下客密度,并对其时空动态进行描述和表达;筛选出显著影响上下客密度时空分布的9类设施,建立出租车上下客事件的地理加权回归模型;分析了小城市出租车上下客时空动态与各类城市设施的时空关系,发现在工作日与双休日和一天中不同时段中,不同城市设施对上下客事件的影响具有不同的分布规律及其驱动机制。研究结果可为小城市的城市规划和交通需求精细化管理提供参考。
Taxi is an indispensable urban traffic mode in small cities, However, there are limited efforts focusing on explaining traffic congestion or resident commuting from a perspective of land use in small cities. This study attempts to reveal the spatio-temporal dynamics of resident trip activities from the aspect of urban functional features. Based on the GPS taxi data, we build a set of temporal GWR models on an hourly basis, which indicates that urban facilities have various effects on the pick-up and drop-off events during different daytime periods. Nine facilities, including coach station, supermarket, restaurant, residential area, karaoke, hotel, hospital, bank and administrative center, have been observed to be the critical elements to explain the ridership variations. A spatio-temporal mechanism has been proposed based on the discovery that facilities with different urban functions have different impacts on resident trip demands. In contrast to the large cities, the trip activities of residents are spatially and temporally various in the small cities. The primary traffic demands are commuting activities, commerce, entertairtment and intercity transfers. More rush hours, especially the "noon rush" and "midnight rush", are revealed in small cities. The results provide valuable insights for quantitatively predicting the taxi demand as a function of the spatio-temporal variables, which may have implications on the traffic demand management and the urban planning of small cities.
作者
吴健生
李博
黄秀兰
WU Jiansheng LI Bo HUANG Xiulan(Key Laboratory for Urban Habitant Environmental Science and Technology, School of Urban Planning & Design, Peking University, Shenzhen 518055, China Laboratory for Earth Surface Processes, Ministry of Education, College of Urban and Environmental Sciences, Peking University, Beijing 100871, China)
出处
《地球信息科学学报》
CSCD
北大核心
2017年第2期176-184,共9页
Journal of Geo-information Science
基金
国家自然科学基金项目(41271101)