Population, GDP, and Carbon Emissions as Revealed by SNPP-VIIRS Nighttime Light Data in China With Different Scales
Kaifang Shi, Yizhen Wu, Deren Li, Xi Li
Abstract
Satellite-based artificial nighttime brightness observations are typically considered proxy measures of socioeconomic indicators at large scales, such as population, gross domestic product (GDP), and carbon emissions. However, few studies have explored and compared the correlations between SNPP-VIIRS nighttime light data and socioeconomic indicators from administrative scale to grid scale, and further analyzed the potential mechanisms for the dissimilar correlations at different grid scales. Using regression model, dissimilarity index, and relief amplitude, the quantitative relationship and potential influence mechanism across different scales was investigated in this letter. Results show that the finer the scale is, the lower the correlations between total nighttime lights (NTL) and socioeconomic indicators when comparing 1 km, town, and county scales. The R<sup>2</sup> values of the NTL-socioeconomic indicator correlations increase sharply with the increase of grid scale at 1–10 km scale. The R<sup>2</sup> values increase volatilely between 10–30 km but are relatively stable above 30 km. The differences in R<sup>2</sup> values may be attributed to the diversity and distribution balance of industrial types and relief amplitude at different scales. This letter provides new insights into estimating and predicting population, GDP, and carbon emissions by using SNPP-VIIRS data.