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自然资源遥感  2024, Vol. 36 Issue (2): 239-247    DOI: 10.6046/zrzyyg.2023013
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彩钢板建筑群视角下的西宁市产业园区时空分布研究
李玉清1(), 杨树文1,2,3(), 洪卫丽1, 苏航1, 雒亚文1
1.兰州交通大学测绘与地理信息学院,兰州 730700
2.地理国情监测技术应用国家地方联合工程研究中心,兰州 730070
3.甘肃省地理国情监测工程实验室,兰州 730070
Exploring the spatio-temporal distributions of industrial parks in Xining City from the perspective of buildings made of color steel plates
LI Yuqing1(), YANG Shuwen1,2,3(), HONG Weili1, SU Hang1, LUO Yawen1
1. Faculty of Geomatics, Lanzhou Jiaotong University, Lanzhou 730700, China
2. National - Local Joint Engineering Research Center for Application of Technologies and Applications for National Geographic State Monitoring, Lanzhou 730070, China
3. Gansu Provincial Engineering Laboratory for National Geographic State Monitoring, Lanzhou 730070, China
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摘要 

产业园区作为城市经济发展的引擎,其时空格局分布的研究对于掌握城市空间结构以及园区可持续发展具有重要意义。为了客观表征产业园的时空分布特征,该文引入彩钢板建筑群数据作为研究产业园区的辅助数据,结合青海省西宁市主城区2005—2020年产业园区部分信息和路网等数据,采用网络核密度分析、标准差椭圆和等扇分析法,长时序探析了西宁市产业园区时空分布特征。研究结果表明: ①2005—2020年西宁市产业园数量持续增长,增长率达73%,其中城北区增长速率最快; ②园区高度聚集区域由单一区域向多区域发展,从彩钢板建筑群的密度变化来看,新增园区多分布在城市边缘,聚集区呈南北交叉带状分布,与城市空间结构吻合; ③产业园区在2005—2020年间均呈现“西北-东南”向分布,集聚方向趋势越来越不明显; ④产业园区的扩张有分阶段分区域发展特征,且扩张强度逐渐减小,园区发展逐渐趋于稳定。研究结果将为西宁市城市化发展研究或园区结构转型等提供客观时空数据支持和方法参考。

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雒亚文
关键词 产业园区彩钢板建筑群时空分布网络核密度    
Abstract

Industrial parks are like the engine of urban economic development. Exploring their spatio-temporal distributions holds critical significance for ascertaining urban spatial structures and sustaining the development of industrial parks. To objectively characterize the spatio-temporal distributions of industrial parks, this study employed the data of buildings made of color steel plates as auxiliary data for investigating industrial parks in Xining City, Qinghai Province. Combined with some information and road network data of industrial parks in the main urban area of Xining City from 2005 to 2020, this study delved into the spatio-temporal distributions of industrial parks over a long period in Xining City using network kernel density analysis, standard deviational ellipse, and equal sector analysis. The results show that: ① From 2005 to 2020, industrial parks in Xining City continued to increase at a growth rate of 73%, with the fastest growth rate observed in Chengbei District; ② Highly clustered industrial parks developed from single to multiple zones. Concerning the changes in the density of buildings made of color steel plates, newly built industrial parks were mostly distributed on the urban edge, and the cluster areas exhibited north-south crossing banded distributions, aligning with the urban spatial structure. Additionally, all industrial parks showed a northwest-southeast distribution and a less significant clustering trend from 2005 to 2020; ③ The expansion of industrial parks manifested phased and zonal development, with a gradually decreased expansion intensity, suggesting the tendency of stable development. The results of this study will provide objective spatio-temporal data support and methodology for the urbanization development research or structural transformation of industrial parks in Xining.

Key wordsindustrial park    buildings made of color steel plates    spatio-temporal distribution    network kernel density
收稿日期: 2023-01-16      出版日期: 2024-06-14
ZTFLH:  P208  
  TP79  
基金资助:国家自然科学基金项目“西北重点城市彩钢板建筑群与产业园区时空关联关系”(42161069);兰州交通大学优秀平台
通讯作者: 杨树文(1975-),男,博士,教授,主要研究方向为遥感数字图像处理及信息自动提取、灾害遥感。Email: 825198827@qq.com
作者简介: 李玉清(1998-),女,硕士研究生,主要研究方向为城市遥感。Email: 2386292581@qq.com
引用本文:   
李玉清, 杨树文, 洪卫丽, 苏航, 雒亚文. 彩钢板建筑群视角下的西宁市产业园区时空分布研究[J]. 自然资源遥感, 2024, 36(2): 239-247.
LI Yuqing, YANG Shuwen, HONG Weili, SU Hang, LUO Yawen. Exploring the spatio-temporal distributions of industrial parks in Xining City from the perspective of buildings made of color steel plates. Remote Sensing for Natural Resources, 2024, 36(2): 239-247.
链接本文:  
https://www.gtzyyg.com/CN/10.6046/zrzyyg.2023013      或      https://www.gtzyyg.com/CN/Y2024/V36/I2/239
Fig.1  研究区概况图
Fig.2  产业园数量变化图
Fig.3  西宁市南川工业园(局部)彩钢板建筑群
Fig.4  彩钢板建筑与产业园耦合度
Fig.5  西宁市产业园网络核密度图
Fig.6  西宁市彩钢板网络核密度图
Fig.7  西宁市产业园重心迁移
Fig.8  西宁市彩钢板重心迁移
扇面 2005—2010年 2010—2015年 2015—2020年
N 0.001 2 0.084 4 0.001 0
NE 0.016 5 0.045 7 0.014 1
NEE 0.023 3 0.033 5 0.019 6
NNE 0.009 3 0.059 9 0.008 1
E 0.032 8 0.008 5 0.027 0
ES 0.050 3 0.018 1 0.036 3
EES 0.179 6 0.008 5 0.026 9
ESS 0.293 9 0.008 4 0.019 7
S 0.531 5 0.006 0 0.014 1
SSW 1.550 4 0.004 0 0.007 7
SW 3.218 1 0.000 0 0.000 8
SWW 2.072 6 0.000 0 0.000 0
W 1.026 4 0.000 0 0.000 0
WN 0.000 0 0.043 0 0.000 0
WWN 0.000 0 0.073 1 0.000 0
WNN 0.181 8 0.000 5 0.000 0
Tab.1  西宁市2005—2020年产业园扩张指数
Fig.9  西宁市产业园扩张变化雷达图
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