国内生产总值
人口
城市群
中国
地理
实际国内生产总值
时间序列
计量经济学
经济
环境科学
统计
经济
数学
经济增长
人口学
社会学
考古
作者
Naizhuo Zhao,Ying Liu,Guofeng Cao,E. Samson,Jingqi Zhang
标识
DOI:10.1080/15481603.2016.1276705
摘要
China's rapid economic development greatly affected not only the global economy but also the entire environment of the Earth. Forecasting China's economic growth has become a popular and essential issue but at present, such forecasts are nearly all conducted at the national scale. In this study, we use nighttime light images and the gridded Landscan population dataset to disaggregate gross domestic product (GDP) reported at the province scale on a per pixel level for 2000–2013. Using the disaggregated GDP time series data and the statistical tool of Holt–Winters smoothing, we predict changes of GDP at each 1 km × 1 km grid area from 2014 to 2020 and then aggregate the pixel-level GDP to forecast economic growth in 23 major urban agglomerations of China. We elaborate and demonstrate that lit population (brightness of nighttime lights × population) is a better indicator than brightness of nighttime lights to estimate and disaggregate GDP. We also show that our forecast GDP has high agreement with the National Bureau of Statistics of China's demographic data and the International Monetary Fund's predictions. Finally, we display uncertainties and analyze potential errors of this disaggregation and forecast method.
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