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结合类NPP-VIIRS数据集和哨兵-2号影像对建成区GDP进行精确空间化与分析

Precise GDP Spatialization and Analysis in Built-Up Area by Combining the NPP-VIIRS-like Dataset and Sentinel-2 Images.

作者信息

Chen Zijun, Wang Wanning, Zong Haolin, Yu Xinyang

机构信息

College of Resources and Environment, Shandong Agricultural University, Tai'an 271018, China.

Department of Real Estate Appraisal, Royal Agricultural College, Cirencester, Gloucestershire GL7 6JS, UK.

出版信息

Sensors (Basel). 2024 May 25;24(11):3405. doi: 10.3390/s24113405.

Abstract

Spatialization and analysis of the gross domestic product of second and tertiary industries (GDP) can effectively depict the socioeconomic status of regional development. However, existing studies mainly conduct GDP spatialization using nighttime light data; few studies specifically concentrated on the spatialization and analysis of GDP in a built-up area by combining multi-source remote sensing images. In this study, the NPP-VIIRS-like dataset and Sentinel-2 multi-spectral remote sensing images in six years were combined to precisely spatialize and analyze the variation patterns of the GDP in the built-up area of Zibo city, China. Sentinel-2 images and the random forest (RF) classification method based on PIE-Engine cloud platform were employed to extract built-up areas, in which the NPP-VIIRS-like dataset and comprehensive nighttime light index were used to indicate the nighttime light magnitudes to construct models to spatialize GDP and analyze their change patterns during the study period. The results found that (1) the RF classification method can accurately extract the built-up area with an overall accuracy higher than 0.90; the change patterns of built-up areas varied among districts and counties, with Yiyuan county being the only administrative region with an annual expansion rate of more than 1%. (2) The comprehensive nighttime light index is a viable indicator of GDP in the built-up area; the fitted model exhibited an R value of 0.82, and the overall relative errors of simulated GDP and statistical GDP were below 1%. (3) The year 2018 marked a significant turning point in the trajectory of GDP development in the study area; in 2018, Zhoucun district had the largest decrease in GDP at -52.36%. (4) GDP gradation results found that Zhangdian district exhibited the highest proportion of high GDP (>9%), while the proportions of low GDP regions in the remaining seven districts and counties all exceeded 60%. The innovation of this study is that the GDP in built-up areas were first precisely spatialized and analyzed using the NPP-VIIRS-like dataset and Sentinel-2 images. The findings of this study can serve as references for formulating improved city planning strategies and sustainable development policies.

摘要

第二和第三产业国内生产总值(GDP)的空间化与分析能够有效描绘区域发展的社会经济状况。然而,现有研究主要利用夜间灯光数据进行GDP空间化;很少有研究专门结合多源遥感影像对建成区的GDP进行空间化与分析。在本研究中,将类似NPP-VIIRS的数据集与六年的哨兵-2多光谱遥感影像相结合,对中国淄博市建成区的GDP变化模式进行精确空间化与分析。利用哨兵-2影像和基于PIE-Engine云平台的随机森林(RF)分类方法提取建成区,其中使用类似NPP-VIIRS的数据集和综合夜间灯光指数来表示夜间灯光强度,构建模型对GDP进行空间化并分析其在研究期间的变化模式。结果发现:(1)RF分类方法能够准确提取建成区,总体精度高于0.90;各区县建成区的变化模式各不相同,沂源县是唯一年扩张率超过1%的行政区。(2)综合夜间灯光指数是建成区GDP的一个可行指标;拟合模型的R值为0.82,模拟GDP与统计GDP的总体相对误差低于1%。(3)2018年是研究区域GDP发展轨迹的一个重要转折点;2018年,周村区GDP下降幅度最大,为-52.36%。(4)GDP等级划分结果显示,张店区高GDP(>9%)所占比例最高,而其余七个区县低GDP区域的比例均超过60%。本研究的创新之处在于首次利用类似NPP-VIIRS的数据集和哨兵-2影像对建成区的GDP进行精确空间化与分析。本研究结果可为制定改进的城市规划策略和可持续发展政策提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cea8/11175025/e66272ca52c5/sensors-24-03405-g001.jpg

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