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An emission-weighted proximity model for air pollution exposure assessment

机译:用于空气污染暴露评估的排放加权近似模型

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Background: Among the most common spatial models for estimating personal exposure are Traditional Proximity Models (TPMs). Though TPMs are straightforward to configure and interpret, they are prone to extensive errors in exposure estimates and do not provide prospective estimates.rnMethod: To resolve these inherent problems with TPMs, we introduce here a novel Emission Weighted Proximity Model (EWPM) to improve the TPM, which takes into consideration the emissions from all sources potentially influencing the receptors. EWPM performance was evaluated by comparing the normalized exposure risk values of sulfur dioxide (SO_2) calculated by EWPM with those calculated by TPM and monitored observations over a one-year period in two large Texas counties. In order to investigate whether the limitations of TPM in potential exposure risk prediction without recorded incidence can be overcome, we also introduce a hybrid framework, a 'Geo-statistical EWPM'. Geo-statistical EWPM is a synthesis of Ordinary Kriging Geo-statistical interpolation and EWPM. The prediction results are presented as two potential exposure risk prediction maps. The performance of these two exposure maps in predicting individual SO_2 exposure risk was validated with 10 virtual cases in prospective exposure scenarios. Results: Risk values for EWPM were clearly more agreeable with the observed concentrations than those from TPM. Over the entire study area, the mean SO_2 exposure risk from EWPM was higher relative to TPM (1.00 vs. 0.91). The mean bias of the exposure risk values of 10 virtual cases between EWPM and 'Geo-statistical EWPM' are much smaller than those between TPM and 'Geo-statistical TPM' (5.12 vs. 24.63). Conclusion: EWPM appears to more accurately portray individual exposure relative to TPM. The 'Geo-statistical EWPM' effectively augments the role of the standard proximity model and makes it possible to predict individual risk in future exposure scenarios resulting in adverse health effects from environmental pollution.
机译:背景:传统的接近模型(TPM)是用于估计个人暴露的最常见的空间模型。尽管TPM易于配置和解释,但它们在暴露估算中容易出现大量错误,并且不能提供预期的估算。方法:为了解决TPM的这些固有问题,我们在这里介绍一种新颖的排放加权接近模型(EWPM),以改善排放风险。 TPM,它考虑了可能影响受体的所有来源的排放。通过将EWPM计算出的二氧化硫(SO_2)的标准化暴露风险值与TPM计算出的二氧化硫(SO_2)的标准化暴露风险值进行比较,并评估了德克萨斯州两个大县在一年中的观测值,从而评估了EWPM的性能。为了研究是否可以克服TPM在没有记录发病率的潜在暴露风险预测中的局限性,我们还引入了一种混合框架,即“地统计EWPM”。地统计EWPM是普通Kriging地统计插值和EWPM的综合。预测结果显示为两个潜在的暴露风险预测图。在预期暴露场景中,使用10个虚拟案例验证了这两个暴露图在预测单个SO_2暴露风险中的性能。结果:与TPM相比,EWPM的风险值与观察到的浓度明显更合意。在整个研究区域中,EWPM的平均SO_2暴露风险相对于TPM更高(1.00比0.91)。 EWPM和“地统计学EWPM”之间10个虚拟案例的暴露风险值的平均偏差远小于TPM和“地统计学TPM”之间的风险偏差(5.12对24.63)。结论:相对于TPM,EWPM似乎更准确地描绘了个人暴露情况。 “地统计学EWPM”有效地增强了标准接近度模型的作用,并有可能在未来的暴露场景中预测个人风险,从而导致环境污染对健康的不利影响。

著录项

  • 来源
    《Science of the total environment》 |2009年第17期|4939-4945|共7页
  • 作者单位

    Central South University, School of Info-Physics and Ceomatics Engineering, Changsha, Hunan 410086, China Texas State University, Texas Center for Geographic Information Science, Department of Geography, 601 University Drive, San Marcos, TX 78666, USA;

    University of Texas at Brownsville, Department of Chemistry and Environmental Sciences, Brownsville, TX 78520, USA;

    Wuhan University, School of Resource and Environmental Science, Wuhan, Hubei, 430079, China Texas State University, Texas Center for Geographic Information Science, Department of Geography, 601 University Drive, San Marcos, TX 78666, USA;

    Central South University, School of Info-Physics and Ceomatics Engineering, Changsha, Hunan 410086, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    hybrid model; exposure assessment; kriging interpolation; epidemiology; GIS;

    机译:混合模型暴露评估;克里格插值;流行病学地理信息系统;
  • 入库时间 2022-08-17 13:57:34

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