Near-surface high-density monitoring sensor network-based dispersion pattern of urban-scale particulate matter:taking central urban area of Xiangyang City as an example
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1.School of Digital Construction and Blasting Engineering/State Key Laboratory of Precision Blasting, Jianghan University,Wuhan 430056,China;2.School of Architecture,Southeast University,Nanjing 210096,China;3.School of Architecture,Chang′an University,Xi′an 710064,China;4.School of Public Administration/Institute for Territorial Spatial Governance and Green Development of the Yangtze River Basin,China University of Geosciences (Wuhan),Wuhan 430074,China;5.Xiangyang Ecological Environment Monitoring Center,Hubei Province Department of Ecology and Environment,Xiangyang 441021,China;6.Wuhan Natural Resources Protection and Utilization Center,Wuhan 430014,China;7.School of Architecture and Planning,Yunnan University,Kunming 650500,China;8.School of Urban Design/Digital City Research Center,Wuhan University,Wuhan 430072,China

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X513

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    Abstract:

    A near-surface high-density sensor network with 146 sites in the central urban area of Xiangyang City,Hubei Province,China,was established to collect high-resolution data on PM2.5,PM10,wind speed,and wind direction to solve the problem of difficulty in identifying the dispersion patterns of urban-scale particulate-matter (PM) and the lack of planning feasibility. On this basis,a method of identifying pollution that balances the interpretability of mechanism and the efficiency of computation was proposed.Multi-scale continuous characterization of affecting factors including industrial emissions,fugitive dust,and blue-green spaces was conducted under the constraints of Gaussian diffusion mechanism.A dual-precision nested strategy was proposed to screen key factors.The geographically weighted regression (GWR) was used to analyze the spatial heterogeneity effects of various factors on particulate matter.The results showed that industrial sources clustered in a 1.2-4 km area around thermal power plants and industrial parks,and intensified along the “park-logistics corridor” pathways.The construction sites and freight logistics formed banded high-impact zones along the major transportation axes,and the effect of logistics activities on PM10 was significantly higher than that on PM2.5.The blue spaces formed about 2-kilometer-wide mitigation belts at the coupling point between the area with low-intensity of development and the main ventilation corridors,while the high-intensity of development weakened its effect.The green spaces generally reduced PM,especially PM10,but short-term benefits was offset by construction disturbances.Based on this,a translation path with a “zone-corridor-node” priority scheme,targeted greening configurations along logistics corridors and park edges,pocket-scale multilayer planting at key nodes,and continuity of low-density layouts and ventilation corridors for planning practice was proposed.It is indicated that the established method achieves a better balance between the interpretability,accuracy,and the computational power compared to the traditional methods of spatial statistics,and can identify key segments of homologous heterogeneity and exogenous overlap.

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薛维,肖景轩,朱宇赫,马轩,范域立,孔红,吴中华,孙志豪,许亘昱,詹庆明. Near-surface high-density monitoring sensor network-based dispersion pattern of urban-scale particulate matter:taking central urban area of Xiangyang City as an example[J]. Jorunal of Huazhong Agricultural University,2026,45(1):37-51.

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  • Received:August 29,2025
  • Revised:
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  • Online: February 09,2026
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