Abstract

Accurate and detailed monitoring of population distribution and evolution is of great significance in formulating a population planning strategy in China. The Defense Meteorological Satellite Program’s Operational Linescan System (DMSP/OLS) nighttime lights time-series (NLT) image products offer a good opportunity for detecting the population distribution owing to its high correlation to human activities. However, their detection capability is greatly limited owing to a lack of in-flight calibration. At present, the synergistic use of systematically-corrected NLT products and population spatialization is rarely applied. This work proposed a methodology to improve the application precision and versatility of NLT products, explored a feasible approach to quantitatively spatialize the population to grid units of 1 km × 1 km , and revealed the spatio-temporal characteristics of population distribution from 2000 to 2010. Results indicated that, (1) after inter-calibration, geometric, incompatibility and discontinuity corrections, and adjustment based on vegetation information, the incompatibility and discontinuity of NTL products were successfully solved. Accordingly, detailed actual residential areas and luminance differences between the urban core and the peripheral regions could be obtained. (2) The population spatialization method could effectively acquire population information at per km 2 with high accuracy and exhibit more details in the evolution of population distribution. (3) Obvious differences in spatio-temporal characteristics existed in four economic regions, from the aspects of population distribution and dynamics, as well as population-weighted centroids. The eastern region was the most populous with the largest increased magnitude, followed by the central, northeastern, and western regions. The population-weighted centroids of the eastern, western, and northeastern regions moved along the southwest direction, while the population-weighted centroid of the central region moved along the southeast direction. (4) The population distribution and dynamics in nine-level population density types were significantly different. In the period of 2000–2010, the population in the basic no-man and high concentration types presented a net decrease. The population in seven other regions all increased with a net increase ranging from 25 km 2 (the moderate concentration type) to 245,668 km 2 (the general transition type). Except those in the core concentration and extremely sparse types, the population-weighted centroids in all other population density types moved along the southwest direction.

Highlights

  • Population growth is an important indicator for evaluating socio-economic development, environmental protection, sustainable utilization of resources, and urban planning [1]

  • The population-weighted centroids of the eastern, western, and northeastern regions moved along the southwest direction, while the population-weighted centroid of the central region moved along the southeast direction

  • To further explore the accuracy of the corrected nighttime lights time-series (NLT) products after the adjustment based on vegetation information, three sample cities (Wuhan, Xi’an, and Urumchi) were selected for normalization and comparison in this work

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Summary

Introduction

Population growth is an important indicator for evaluating socio-economic development, environmental protection, sustainable utilization of resources, and urban planning [1]. China is the largest developing and most populous country in the world, with 18.82% of the population of the world (United Nations, 2017). The urbanization rate of the country increased dramatically from. The National Bureau of Statistics of the People’s Republic of China predicted that the rate will exceed 60% in 2020. The rapid increase in population increases the demand of food supplies [2,3], construction lands [4], energy consumption [5], and domestic water use [6], as well as the emission of household garbage [7], and generates far-reaching negative influences on food safety [8], sustainable development of cities [9], and the ecological environment [9,10]. Monitoring the Chinese population distribution and its evolution scientifically and accurately is of great significance [11]

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