Abstract

Accurate data on gross domestic product (GDP) at pixel level are needed to understand the dynamics of regional economies. GDP spatialization is the basis of quantitative analysis on economic diversities of different administrative divisions and areas with different natural or humanistic attributes. Data from the Visible Infrared Imaging Radiometer Suite (VIIRS), carried by the Suomi National Polar-orbiting Partnership (NPP) satellite, are capable of estimating GDP, but few studies have been conducted for mapping GDP at pixel level and further pattern analysis of economic differences in different regions using the VIIRS data. This paper produced a pixel-level (500 m × 500 m) GDP map for South China in 2014 and quantitatively analyzed economic differences among diverse geomorphological types. Based on a regression analysis, the total nighttime light (TNL) of corrected VIIRS data were found to exhibit R2 values of 0.8935 and 0.9243 for prefecture GDP and county GDP, respectively. This demonstrated that TNL showed a more significant capability in reflecting economic status (R2 > 0.88) than other nighttime light indices (R2 < 0.52), and showed quadratic polynomial relationships with GDP rather than simple linear correlations at both prefecture and county levels. The corrected NPP-VIIRS data showed a better fit than the original data, and the estimation at the county level was better than at the prefecture level. The pixel-level GDP map indicated that: (a) economic development in coastal areas was higher than that in inland areas; (b) low altitude plains were the most developed areas, followed by low altitude platforms and low altitude hills; and (c) economic development in middle altitude areas, and low altitude hills and mountains remained to be strengthened.

Highlights

  • Gross domestic product (GDP) is an important indicator of the economic performance of a country or region

  • Figure shows the pixel-level map, which was simulated from the Figure 9 shows the pixel-level (500 m × 500 m) GDP map, which was simulated from the regression regression model firstly at county-level corrected by formula

  • When analyzing the economic spatial distribution of South China, we mainly focused on the economic differences among diverse geomorphological types

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Summary

Introduction

Gross domestic product (GDP) is an important indicator of the economic performance of a country or region. There are many problems to measure GDP using socioeconomic statistics, such as the inconsistency of statistical scales and the uniformity of Remote Sens. 2017, 9, 673 data within the statistical unit, which make it difficult to reflect differences in regional economic development at fine scales. There are problems with inconsistent borders during overlay analysis between the statistical data based on administrative units, and vegetation patterns and natural disaster data based on geographic units. Identifying how to accurately measure GDP at fine scales is of great importance to understanding the dynamic changes in regional economies and meeting the needs of interdisciplinary research. Compared with traditional socioeconomic census, remote sensing imagery has obvious advantages in describing the spatial distribution of GDP. Nighttime light data are frequently used to describe the intensity of economic activities on the earth surface, and have been widely used in the estimation of socioeconomic parameters

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