PM pollution has emerged as a global human health risk. The best measure of its impact is a population's PM exposure (PPME), an index that simultaneously considers PM concentrations and population spatial density. The spatiotemporal variation of PPME over the Beijing-Tianjin-Hebei (BTH) region, which is the national capital region of China, was investigated using a Bayesian space-time model, and the influence patterns of the anthropic and geographical factors were identified using the GeoDetector model and Pearson correlation analysis. The spatial pattern of PPME maintained a stable structure over the BTH region's distinct terrain, which has been described as "high in the northwest, low in the southeast". The spatial difference of PPME intensified annually. An overall increase of 6.192 (95% CI 6.186, 6.203) ×10 μg/m ∙ persons/km per year occurred over the BTH region from 1998 to 2017. The evolution of PPME in the region can be described as "high value, high increase" and "low value, low increase", since human activities related to gross domestic product (GDP) and energy consumption (EC) were the main factors in its occurrence. GDP had the strongest explanatory power of 76% (P < 0.01), followed by EC and elevation (EL), which accounted for 61% (P < 0.01) and 40% (P < 0.01), respectively. There were four factors, proportion of secondary industry (PSI), normalized differential vegetation index (NDVI), relief amplitude (RA), and EL, associated negatively with PPME and four factors, GDP, EC, annual precipitation (AP), and annual average temperature (AAT), associated positively with PPME. Remarkably, the interaction of GDP and NDVI, which was 90%, had the greatest explanatory power for PPME ' s diffusion and impact on the BTH region.
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http://dx.doi.org/10.1007/s11356-020-09484-8 | DOI Listing |
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