A map spectrum-based spatiotemporal clustering method for gdp variation pattern analysis using nighttime light images of thewuhan urban agglomeration

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Abstract

Estimates of gross domestic product (GDP) play a significant role in evaluating the economic performance of a country or region. Understanding the spatiotemporal process of GDP growth is important for estimating or monitoring the economic state of a region. Various GDP studies have been reported, and several studies have focused on spatiotemporal GDP variations. This study presents a map spectrum-based clustering approach to analyze the spatiotemporal variation patterns of GDP growth. First, a sequence of nighttime light images (from the Defense Meteorological Satellite Program-Operational Linescan System (DMSP-OLS)) is used to support the spatial distribution of statistical GDP data. Subsequently, the time spectrum of each spatial unit is generated using a time series of dasymetric GDP maps, and then the spatial units with similar time spectra are clustered into one class. Each category has a similar spatiotemporal GDP variation pattern. Finally, the proposed approach is applied to analyze the spatiotemporal patterns of GDP growth in the Wuhan urban agglomeration. The experimental results illustrated regional discrepancies of GDP growth existed in the study area.

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Zhang, P., Liu, S., & Du, J. (2017). A map spectrum-based spatiotemporal clustering method for gdp variation pattern analysis using nighttime light images of thewuhan urban agglomeration. ISPRS International Journal of Geo-Information, 6(6). https://doi.org/10.3390/ijgi6060160

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