Distribution patterns and influencing factors of population exposure risk to particulate matters based on cell phone signaling data
            
                编号:4054
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                更新:2024-05-08 14:00:26
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                张贴报告
            
            
            
                摘要
                In this study, spatial-temporal characteristics of particular matter (PM) exposure risk in Shenyang were analyzed with landscape patterns using data from land use, cell phone signaling, and PM mobile monitoring. Pollution surfaces were established with geographically weighted regression models and impact factors analysis was implemented by boosted regression tree models. The results showed that weekdays and weekends had different spatial distributions of PM, and the exposure risk was lower on weekends. High exposure risks of PM10 were concentrated in the first ring zone (76.53 people⋅m-2⋅μg⋅m-3) and residential-commercial land (292.34 people⋅m-2⋅μg⋅m-3). Exposure risks of PM2.5 were most affected by residential-commercial land and fourth-class (relative contribution: 59.69 and 8.88, respectively). However, the exposure risks of PM10 were more influenced by first-class roads (relative contribution: 2.01). The results indicated that independent modeling analysis of different types of PM and periods contribute to more detailed studies of spatial-temporal variation of PM. For human activity studies, cell phone signaling data can effectively distinguish spatial-temporal distribution characteristics of the population on weekdays and weekends. Multi-source big data combined with mobile monitoring and model simulations were used to make population exposure risk studies more accessible, real-time, and costeffective for sustainable urban planning and development.
             
            
                关键词
                Mobile monitoring,Geographically weighted regression,Particulate matter,Cell phone signaling data,Exposure risk
             
            
            
                    稿件作者
                    
                        
                                    
                                                                                                                        
                                    张楚宜
                                    中国科学院沈阳应用生态研究所
                                
                                    
                                        
                                                                            
                                    李春林
                                    中国科学院沈阳应用生态研究所
                                
                                             
                          
    
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