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Coherent approach for modeling and nowcasting hourly near-road Black Carbon concentrations in Seattle, Washington

机译:华盛顿州西雅图市每小时近距离黑碳浓度的建模和临近预报的连贯方法

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摘要

With a growing awareness of the importance of near-road air pollution and an increasing population of near-road pedestrians, it is imperative to "nowcast" near-road air quality conditions to the general public. This necessitates the building hourly predictive models that are both accurate and easy to use. This study demonstrates an approach to model the hourly near-road Black Carbon (BC) concentrations given on-road traffic information and current meteorological conditions using datasets from two urban sites in Seattle, Washington. The optimal set of prediction variables is determined with a Bayesian Model Averaging (BMA) method and three different model structures are further developed and compared by goodness-of-fit. An innovative approach is proposed to translate wind direction from numerical values to categorical variables with statistical significance. By modeling the autocorrelation within the BC time series using an AR(1) component, the model achieves a satisfactory prediction accuracy. The conditional heteroscedasticity and heavy-tailed distribution of the model residuals are successfully identified and modeled by the General Auto Regressive Conditional Heteroscedasticity (GARCH) model, which provides valuable insights to the interpretation of prediction results. The methodological procedure demonstrated in selecting and fine-tuning the model is computationally efficient and valuable for further implementation onto online platforms for near-road BC now-casting. A comparison between the two sites also reveals the effectiveness of local freight regulation for mitigating the environmental impacts from a heavy truck fleet.
机译:随着人们对近路空气污染重要性的认识日益提高,并且近路行人的数量不断增加,必须将“近路空气质量”状况“转嫁给”公众。这就需要精确且易于使用的每小时构建的预测模型。这项研究演示了一种使用来自华盛顿西雅图两个城市站点的数据集,根据道路交通信息和当前气象条件,对小时近距离道路黑碳(BC)浓度进行建模的方法。预测变量的最佳集合由贝叶斯模型平均(BMA)方法确定,并且进一步开发了三种不同的模型结构,并通过拟合优度进行了比较。提出了一种创新的方法来将风向从数值转换为具有统计意义的分类变量。通过使用AR(1)组件对BC时间序列内的自相关建模,该模型可实现令人满意的预测精度。通过通用自动回归条件异方差(GARCH)模型成功识别并建模了模型残差的条件异方差和重尾分布,这为预测结果的解释提供了宝贵的见识。在选择和微调模型中展示的方法学过程在计算上是有效的,并且对于进一步实施到近距离BC现在播报的在线平台上是有价值的。通过对这两个地点的比较,还可以看出当地货运法规对减轻重型卡车车队的环境影响的有效性。

著录项

  • 来源
    《Transportation Research》 |2015年第1期|104-115|共12页
  • 作者单位

    East Asia and Pacific Region, World Bank, 17th Floor, China World Office 2, No. 1 Jianguomenwai Avenue, Beijing 100004, PR China;

    Department of Civil & Environmental Engineering, University of Utah, 110 Central Campus Drive, Suite 2000, Salt Lake City, UT 84112, United States;

    Department of Civil & Environmental Engineering, University of Washington, Box 352700, Seattle, WA 98195, United States;

    Department of Civil & Environmental Engineering, University of Washington, Box 352700, Seattle, WA 98195, United States;

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

    Black Carbon; Time series analysis; Nowcast; Near-road pollution;

    机译:黑炭;时间序列分析;快播近路污染;

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