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The role of meteorology on predicting SO2 concentrations around a refinery: A case study from Oman

机译:气象对精炼厂周围SO2浓度预测的作用:阿曼的案例研究

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摘要

In this work, SO2 correlations were developed for the prediction of maximum SO2 values and their locations around the vicinity of a refinery. The proposed correlations are capable of estimating the hourly maximum SO2 concentrations from meteorological conditions. Correlation parameters were calculated by multiple regression analysis, using maximum SO2 concentration as dependent variable and the meteorological parameters as independent variables. The SO2 data used for the development of these correlations were generated from the industrial source complex short-term (ISCST) model. It was found that wind speed and atmospheric stability class had the most effect on the predicted SO2 concentration whereas neither mixing height, nor wind direction, nor temperature had an influence on the maximum SO2 concentration. Therefore, the suggested correlations require only knowledge of the wind speed and stability class parameters. On the other hand, the developed correlations for estimating the locations of these maximum values of SO2 concentrations contained only one term that describes the dependence of the locations on wind direction. The derived correlations were shown to be statistically significant. They are much simpler to use than the ISCST model. Further, they are invaluable for determining locations at risk of exceeding the SO2 standard. (c) 2006 Elsevier B.V. All rights reserved.
机译:在这项工作中,开发了SO2相关性,以预测最大SO2值及其在炼油厂附近的位置。拟议的相关性能够根据气象条件估算每小时最大的SO2浓度。通过使用最大SO 2浓度作为因变量和气象参数作为自变量,通过多元回归分析来计算相关参数。用于开发这些相关性的SO2数据是根据工业来源复杂短期(ISCST)模型生成的。发现风速和大气稳定性等级对预测的SO2浓度影响最大,而混合高度,风向和温度均对最大SO2浓度没有影响。因此,建议的关联仅需要了解风速和稳定性等级参数。另一方面,为估算这些SO2浓度最大值的位置而建立的相关性仅包含一个描述位置对风向依赖性的术语。推导的相关性显示出统计学上的显着性。它们比ISCST模型更容易使用。此外,它们对于确定有可能超过SO2标准的风险的位置非常宝贵。 (c)2006 Elsevier B.V.保留所有权利。

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