Abstract

Advanced developments have been achieved in urban human population estimation, however, there is still a considerable research gap for the mapping of remote rural populations. In this study, based on demographic data at the town-level, multi-temporal high-resolution remote sensing data, and local population-sensitive point-of-interest (POI) data, we tailored a random forest-based dasymetric approach to map population distribution on the Qinghai–Tibet Plateau (QTP) for 2000, 2010, and 2016 with a spatial resolution of 1000 m. We then analyzed the temporal and spatial change of this distribution. The results showed that the QTP has a sparse population distribution overall; in large areas of the northern QTP, the population density is zero, accounting for about 14% of the total area of the QTP. About half of the QTP showed a rapid increase in population density between 2000 and 2016, mainly located in the eastern and southern parts of Qinghai Province and the central-eastern parts of the Tibet Autonomous Region. Regarding the relative importance of variables in explaining population density, the variables “Distance to Temples” is the most important, followed by “Density of Villages” and “Elevation”. Furthermore, our new products exhibited higher accuracy compared with five recently released gridded population density datasets, namely WorldPop, Gridded Population of the World version 4, and three national gridded population datasets for China. Both the root-mean-square error (RMSE) and mean absolute error (MAE) for our products were about half of those of the compared products except for WorldPop. This study provides a reference for using fine-scale demographic count and local population-sensitive POIs to model changing population distribution in remote rural areas.

Highlights

  • The spatial distribution of the human population and its change are critical components in studies focusing on the relationships between humans and the environment [1,2]

  • We investigated the spatio-temporal change of human population density on the Qinghai–Tibet Plateau (QTP) from 2000 to 2016

  • According to previous studies [11,29,46], the random forest (RF) model was used for each census year (2000, 2010, and 2016) to generate multi-temporal gridded datasets of the population density on the QTP, which were subsequently used to detect the changes in population density

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Summary

Introduction

The spatial distribution of the human population and its change are critical components in studies focusing on the relationships between humans and the environment [1,2]. The advancement of remote sensing and GIS technologies has provided unparalleled opportunities to produce high-quality maps of human population density at fine spatial resolutions [8,9,10]. Many efforts have been made to generate high-resolution human population density maps ranging from regional to global scales using different mapping approaches and ancillary input variables [1,7,11,12]. Recent studies have shown that the hybrid dasymetric approach can generate accurate products of human population density and outperform conventional approaches such as areal weighting [7,13,14]. The reliability of existing datasets of human population density at national and global scales remains limited in remote rural areas, especially in mountainous regions [1]

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