Nonstationary spatiotemporal Bayesian data fusion for pollutants in the near-road environment

被引:4
|
作者
Gilani, O. [1 ]
Berrocal, V. J. [2 ]
Batterman, S. A. [3 ]
机构
[1] Bucknell Univ, Dept Math, Lewisburg, PA 17837 USA
[2] Univ Michigan, Sch Publ Hlth, Dept Biostat, Ann Arbor, MI 48109 USA
[3] Univ Michigan, Sch Publ Hlth, Dept Environm Hlth Sci, Ann Arbor, MI 48109 USA
关键词
covariates in covariance; data fusion; fine particulate matter; nitrogen oxide; nonstationarity; numerical model output; PROCESS-CONVOLUTION APPROACH; AIR-POLLUTION; COVARIANCE FUNCTIONS; PARTICULATE MATTER; DISPERSION MODEL; SPACE; FIELDS; OUTPUT; ASSOCIATION; DOWNSCALER;
D O I
10.1002/env.2581
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Concentrations of near-road air pollutants (NRAPs) have increased to very high levels in many urban centers around the world, particularly in developing countries. The adverse health effects of exposure to NRAPs are greater when the exposure occurs in the near-road environment as compared to background levels of pollutant concentration. Therefore, there is increasing interest in monitoring pollutant concentrations in the near-road environment. However, due to various practical limitations, monitoring pollutant concentrations near roadways and traffic sources is generally rather difficult and expensive. As an alternative, various deterministic computer models that provide predictions of pollutant concentrations in the near-road environment, such as the research line-source dispersion model (RLINE), have been developed. A common feature of these models is that their outputs typically display systematic biases and need to be calibrated in space and time using observed pollutant data. In this paper, we present a nonstationary Bayesian data fusion model that uses a novel data set on monitored pollutant concentrations (nitrogen oxides or NOx and fine particulate matter or PM2.5) in the near-road environment and, combining it with the RLINE model output, provides predictions at unsampled locations. The model can also be used to evaluate whether including the RLINE model output leads to improved pollutant concentration predictions and whether the RLINE model output captures the spatial dependence structure of NRAP concentrations in the near-road environment. A defining characteristic of the proposed model is that we model the nonstationarity in the pollutant concentrations by using a recently developed approach that includes covariates, postulated to be the driving force behind the nonstationary behavior, in the covariance function.
引用
收藏
页数:18
相关论文
共 44 条
  • [31] Heavy metals in the near-road environment: Results of semi-continuous monitoring of ambient particulate matter in the greater Toronto and Hamilton area
    Sofowote, Uwayemi M.
    Di Federico, Linda M.
    Healy, Robert M.
    Debosz, Jerzy
    Su, Yushan
    Wang, Jonathan
    Munoz, Anthony
    ATMOSPHERIC ENVIRONMENT-X, 2019, 1
  • [32] High level sensor data fusion approaches for object recognition in road environment
    Floudas, Nikos
    Polychronopoulos, Aris
    Aycard, Olivier
    Burlet, Julien
    Ahrholdt, Malte
    2007 IEEE INTELLIGENT VEHICLES SYMPOSIUM, VOLS 1-3, 2007, : 269 - +
  • [33] Bayesian data fusion for space-time prediction of air pollutants: The case of NO2 in Belgium
    Fasbender, D.
    Brasseur, O.
    Bogaert, P.
    ATMOSPHERIC ENVIRONMENT, 2009, 43 (30) : 4632 - 4645
  • [34] A road network traffic flow data imputation method based on the fusion of spatiotemporal features and adversarial networks
    Zhang, Yaofang
    Jian, Chen
    Fu, Zhiyan
    SYSTEMS SCIENCE & CONTROL ENGINEERING, 2024, 12 (01)
  • [35] Performance Evaluation of Water Environment Treatment PPP Projects Based on Multisource Spatiotemporal Data Fusion
    Li, Huimin
    Liang, Mengxuan
    Su, Limin
    Cao, Yongchao
    Zhang, Yu
    JOURNAL OF INFRASTRUCTURE SYSTEMS, 2024, 30 (01)
  • [36] Comparing Mobile and Aerial Laser Scanner point cloud data sets for automating the detection and delimitation procedure of safety-critical near-road slopes
    Nunez-Seoane, Anton
    Martinez-Sanchez, Joaquin
    Rua, Erik
    Arias, Pedro
    MEASUREMENT, 2024, 224
  • [37] Elucidating long-term trends, seasonal variability, and local impacts from thirteen years of near-road particle size data (2006-2019)
    Hilker, Nathan
    Jeong, Cheol-Heon
    Wang, Jonathan M.
    Evans, Greg J.
    SCIENCE OF THE TOTAL ENVIRONMENT, 2021, 774
  • [38] Evaluation of Traffic Density Parameters as an Indicator of Vehicle Emission-Related Near-Road Air Pollution: A Case Study with NEXUS Measurement Data on Black Carbon
    Liu, Shi V.
    Chen, Fu-Lin
    Xue, Jianping
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH, 2017, 14 (12)
  • [39] Near Real-Time Monitoring of Muddy Intertidal Zones Based on Spatiotemporal Fusion of Optical Satellites Data
    Gu, Yan
    Chen, Jianchun
    Chen, Ziyao
    Li, Mingliang
    Zhu, Shibing
    Wang, Ya Ping
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2024, 17 : 1596 - 1609
  • [40] Vehicle Emission and Near-Road Air Quality Modeling for Shanghai, China Based on Global Positioning System Data from Taxis and Revised MOVES Emission Inventory
    Liu, Haobing
    Chen, Xiaohong
    Wang, Yuqin
    Han, Shu
    TRANSPORTATION RESEARCH RECORD, 2013, (2340) : 38 - 48