The relationship between night-time light and socioeconomic factors in China and India

PLoS One. 2022 Jan 13;17(1):e0262503. doi: 10.1371/journal.pone.0262503. eCollection 2022.

Abstract

This paper re-examines the relationships between night-time light (NTL) and gross domestic product (GDP), population, road networks, and carbon emissions in China and India. Two treatments are carried out to those factors and NTL, which include simple summation in each administrative region (total data), and summation normalized by region area (density data). A series of univariate regression and multiple regression experiments are conducted in different countries and at different scales, in order to find the changes in the relationship between NTL and every parameter in different situations. Several statistical metrics, such as R2, Mean Relative Error (MRE), multiple regression weight coefficient, and Pearson's correlation coefficient are given special attention. We found that GDP, as a comprehensive indicator, is more representative of NTL when the administrative region is relatively comprehensive or highly developed. However, when these regions are unbalanced or undeveloped, the representation of GDP becomes weak and other factors can have a more important influence on the multiple regression. Differences in the relationship between NTL and GDP in China and India can also be reflected in some other factors. In many cases, regression after normalization with the administrative area has a higher R2 value than the total regression. But it is highly influenced by a few highly developed regions like Beijing in China or Chandigarh in India. After the scale of the administrative region becomes fragmented, it is necessary to adjust the model to make the regression more meaningful. The relationship between NTL and carbon emissions shows obvious difference between China and India, and among provinces and counties in China, which may be caused by the different electric power generation and transmission in China and India. From these results, we can know how the NTL is reflected by GDP and other factors in different situations, and then we can make some adjustments.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Carbon / analysis
  • China
  • Electricity
  • Environmental Monitoring / methods
  • Gross Domestic Product / trends*
  • India
  • Light Pollution / adverse effects
  • Light Pollution / economics*
  • Light Pollution / statistics & numerical data
  • Population
  • Socioeconomic Factors
  • Transportation / economics

Substances

  • Carbon

Grants and funding

This work was supported by the General Project of National Social Science Fund of China (17BJY053). Professor Zhou Tao received a salary from the General Project of National Social Science Fund of China (17BJY053).