The movement of humans and goods in cities can be represented by constrained flow, which is defined as the movement of objects between origin and destination in road networks. Flow aggregation, namely origins and destinations aggregated simultaneously, is one of the most common patterns, say the aggregated origin-to-destination flows between two transport hubs may indicate the great traffic demand between two sites. Developing a clustering method for constrained flows is crucial for determining urban flow aggregation. Among existing methods about identifying flow aggregation, L-function of flows is the major one. Nevertheless, this method depends on the aggregation scale, the key parameter detected by Euclidean L-function, it does not adapt to road network. The extracted aggregation may be overestimated and dispersed. Therefore, we propose a clustering method based on L-function of Manhattan space, which consists of three major steps. The first is to detect aggregation scales by Manhattan L-function. The second is to determine core flows possessing highest local L-function values at different scales. The final step is to take the intersection of core flows neighbourhoods, the extent of which depends on corresponding scale. By setting the number of core flows, we could concentrate the aggregation and thus highlight Aggregation Artery Architecture (AAA), which depicts road sections that contain the projection of key flow cluster on the road networks. Experiment using taxi flows showed that AAA could clarify resident movement type of identified aggregated flows. Our method also helps selecting locations for distribution sites, thereby supporting accurate analysis of urban interactions.
翻译:城市中人和货物的流动可被限制流动所代表,这种流动的定义是道路网络中原产地和目的地之间的物体流动。流动总量,即来源地和目的地同时合并,是最常见的模式之一,即两个运输枢纽之间的从来源到目的地的汇总流动可能表明两个地点之间的交通需求巨大。为限制流动制定集群方法对于确定城市流动总量至关重要。在确定流动总量的现有方法中,流动的功能是主要的。然而,这一方法取决于总规模,即Euclidean L功能所发现的关键参数,它不适应公路网络。提取的集合可能被高估和分散。因此,我们提议基于曼哈顿空间L功能的集群方法,这包括三个主要步骤。第一个是检测曼哈顿L功能的集合规模。第二是确定核心流动的核心流动,在不同规模的本地功能值最高。最后一步是取核心流动街区的交叉点,其程度取决于相应的规模。通过确定核心流动数量,我们可以将准确的汇总和分散的汇总数据汇总,从而强调基于曼哈顿空间的集合的集群流流,从而显示一个核心结构结构。