Developing an Annual Global Sub-National Scale Economic Data from 1992 to 2021 Using Nighttime Lights and Deep Learning

21 Pages Posted: 15 Feb 2024

See all articles by Hang Zhang

Hang Zhang

Henan University

Guanpeng Dong

Henan University

Fanglin Shi

Henan University

Zunyi Xie

University of Queensland

Fan Yang

Henan University

Yang Gao

Henan University

Xiaoyu Meng

Henan University

Dongyang Yang

Henan University

Yong Liu

Henan University

Hongjuan Zhang

Henan University

Leying Wu

Henan University

Bing Li

Henan University

Yulong Chen

Henan University

Wenjie Wu

Wuhan University

Edyta Laszkiewicz

University of Lodz

Binbin Lu

Wuhan University

Jing Yao

University of Glasgow

Xuecao Li

China Agricultural University

Abstract

The Gross Domestic Product (GDP) per capita is one of the most widely used socioeconomic indicators, serving as an integral component for climate change impact analysis. However, a national scale assessment may induce considerable bias because it conceals any internal variations within a country. The lack of a long-term sub-national scale GDP data is a substantive hinderance. Leveraging the close relationship between nighttime lights and GDP, we address this gap by developing a novel methodological framework in two steps. First, under the modeling philosophy of spatial statistics, we developed a novel approach based on deep and machine learning techniques to establish a complex mapping between two inconsistent nighttime lights (NTL) datasets: the Defense Meteorological Satellite Program's Operational Linescan System (DMSP) and the National Polar-Orbiting Partnership’s Visible Infrared Imaging Radiometer Suite (VIIRS). The models achieve accuracies ranging from 0.945 to 0.980 (correlation coefficients). By taking the estimations ensemble of the two techniques, the time series of DMSP data was extended to 2021. Next, a novel modeling strategy based on multi-layer perceptron was developed to derive the non-linear relationship between NTL and GDP per capita at sub-national scale to alleviate scale effects at this granularity, while explicitly capturing regional heterogeneity effect. The trained models achieve average accuracies of 0.967, 0.959, and 0.959 on the training, validation, and test sets, respectively. We evaluate the developed dataset at the global, national, and sub-national scales from various perspective, and the results offer solid evidence on the reliability of the estimated economic data.

Keywords: GDP per capita, economic assessment, nighttime lights, multi-layer perceptron, spatial spillover, scale effects, light gradient boosting machine

Suggested Citation

Zhang, Hang and Dong, Guanpeng and Shi, Fanglin and Xie, Zunyi and Yang, Fan and Gao, Yang and Meng, Xiaoyu and Yang, Dongyang and Liu, Yong and Zhang, Hongjuan and Wu, Leying and Li, Bing and Chen, Yulong and Wu, Wenjie and Laszkiewicz, Edyta and Lu, Binbin and Yao, Jing and Li, Xuecao, Developing an Annual Global Sub-National Scale Economic Data from 1992 to 2021 Using Nighttime Lights and Deep Learning. Available at SSRN: https://ssrn.com/abstract=4727383 or http://dx.doi.org/10.2139/ssrn.4727383

Hang Zhang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Guanpeng Dong (Contact Author)

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Fanglin Shi

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Zunyi Xie

University of Queensland ( email )

St Lucia
Brisbane, 4072
Australia

Fan Yang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Yang Gao

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Xiaoyu Meng

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Dongyang Yang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Yong Liu

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Hongjuan Zhang

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Leying Wu

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Bing Li

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Yulong Chen

Henan University ( email )

85 Minglun St. Shunhe
Kaifeng, 475001
China

Wenjie Wu

Wuhan University ( email )

Wuhan
China

Edyta Laszkiewicz

University of Lodz ( email )

Ulica Prezydenta Gabriela
Narutowicza 65 str.
Lodz, 90-131
Poland

Binbin Lu

Wuhan University ( email )

Wuhan
China

Jing Yao

University of Glasgow ( email )

Adam Smith Business School
Glasgow, G12 8LE
United Kingdom

Xuecao Li

China Agricultural University ( email )

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