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首页> 外文期刊>Journal of the Air & Waste Management Association >Statistical evaluation of a new air dispersion model against AERMOD using the Prairie Grass data set
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Statistical evaluation of a new air dispersion model against AERMOD using the Prairie Grass data set

机译:使用草原草数据集针对AERMOD的新空气扩散模型的统计评估

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In this work, the authors present a statistical assessment of two atmospheric dispersion models. One of them, AERMOD (American Meteorological Society/Environmental Protection Agency Regulatory Model), adopted by the U.S. Environmental Protection Agency, is widely used in many countries and here is taken as a baseline to assess the performance of a newly proposed model, MODELAR (Modelo Regulatorio de Qualidade do Ar). In terms of parameterizations and modeling options, MODELAR is a somewhat simple model. It is currently being considered for adoption as the regulatory model in Parana State, Brazil. The well-known Prairie Grass data set, already used in earlier evaluations of the same version of AERMOD analyzed here, was used to perform model assessment. The evaluations employed well-established statistical performance descriptors and techniques. The results indicate that MODELAR is a slightly better predictor, for the Prairie Grass data set, of concentrations under unstable conditions, whereas AERMOD has a better performance under near-neutral and stable conditions. Moreover, cases of severe overestimation and underestimation, as detected by the Factor of Two index, are clearly associated with extreme stability conditions (both unstable and stable), stressing the need for better parameterizations under these conditions.
机译:在这项工作中,作者提出了两种大气扩散模型的统计评估。其中之一,是美国环境保护署采用的AERMOD(美国气象学会/环境保护署管制模型),已在许多国家/地区广泛使用,此处以此为基准来评估新提议的模型MODELAR(资格认证机构模型)。在参数化和建模选项方面,MODELAR是一个稍微简单的模型。目前正在考虑将其用作巴西巴拉那州的监管模式。已在此处分析的相同版本AERMOD的较早评估中使用的众所周知的草原草数据集用于执行模型评估。评估采用了行之有效的统计绩效指标和技术。结果表明,对于草原草的数据集,MODELAR在不稳定条件下的浓度预测值略好一些,而AERMOD在接近中性和稳定条件下的浓度表现较好。此外,用因子2指数检测到的严重高估和低估的情况显然与极端稳定条件(不稳定和稳定)相关,从而强调了在这些条件下需要更好的参数化的需求。

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