基于POI数据的绵阳商业空间空间格局及其产业分布研究

Dacheng Zheng, Changqiu Li
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引用次数: 3

摘要

城市商业空间的合理布局有利于商业资源在城市内部空间的优化配置。以绵阳市中心区商业兴趣点(POI)数据为基础,运用核密度估计、Getis-Ord、Ripley’s K函数和位置熵等方法,分析了不同尺度下城市商业空间格局特征,研究了城市商业中各行业的空间集聚特征。结果表明:①绵阳市中心城区商业网点空间分布特征显著,呈现多中心分布格局;基于路网单元的商业网点热点区域分布与确定的商业密度中心分布基本一致。2)中心城区整体上已形成商业等级规模结构,基于路网单元的商业网络热点分布与确定的商业密度中心分布基本一致。(3)从商业产业角度看,城市商业空间“中心—边缘”分化明显,不同产业表现出不同的空间集聚模式。4)各行业多尺度空间集聚不同,综合零售、家电等行业区位选择空间规模较大,纺织服装、文化体育等行业区位选择规模较小。5)从行业角度看,专业功能区存在显著差异。成熟地区呈现多功能要素、多优势产业集聚特征,少数发展中地区也呈现多优势产业集聚特征。
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Research on Spatial Pattern and Its Industrial Distribution of Commercial Space in Mianyang Based on POI Data
The rational layout of urban commercial space is conducive to optimizing the allocation of commercial resources in the urban interior space. Based on the commercial POI (Point of Interest) data in the central district of Mianyang, the characteristics of urban commercial spatial pattern under different scales are analyzed by using Kernel Density Estimation, Getis-Ord , Ripley’s K Function and Location Entropy method, and the spatial agglomeration characteristics of various industries in urban commerce are studied. The results show that: 1) The spatial distribution characteristics of commercial outlets in downtown Mianyang are remarkable, and show a multi-center distribution pattern. The hot area distribution of commercial outlets based on road grid unit is generally consistent with the identified commercial density center distribution. 2) The commercial grade scale structure has been formed in the central urban area as a whole, and the distribution of commercial network hot spots based on road grid unit is generally consistent with the identified commercial density center distribution. 3) From the perspective of commercial industry, the differentiation of urban commercial space “center-periphery” is obvious, and different industries show different spatial agglomeration modes. 4) The multi-scale spatial agglomeration of each industry is different, the spatial scale of location choice of comprehensive retail, household appliances and other industries is larger, and the scale of location choice of textile, clothing, culture and sports is small. 5) There are significant differences in specialized functional areas from the perspective of industry. Mature areas show multi-functional elements, multi-advantage industry agglomeration characteristics, and a small number of developing areas also show multi-advantage industry agglomeration characteristics.
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