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2次生成対応大気モデルADMER-PROの開発と検証

机译:开发和验证ADMER-PRO,这是用于二次发电的大气模型

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We developed and released an atmospheric dispersion model, ADMER-PRO, which was applicable for secondary gaseous pollutants, such as ozone of high public concern, which was easy for non-modeling experts such as public administrators to use. The ADMER-PRO has the following features; 1) it can estimate the concentrations of both primary pollutants including any individual hazardous VOC components and secondary gaseous pollutants, 2) the ADMER-PRO can estimate easily the concentrations of multiple chemical species because it contains the necessary data,such as an emission inventory for some chemical species, 3) it can estimate long-term (e.g., annual) mean concentrations often necessary for chemical risk assessments, and 4) it can work on Windows PCs with simple operations. We used the ADMER-PRO to estimate the annual mean concentrations of multiple chemical species over the Kanto and Kinki areas, and tested the predictive performance of the model by comparing the calculated results with observations. The results showed that the ADMER-PRO can approximately reproduce observations of both primary pollutants, such as NOx and individual hazardous VOC components, and secondary gaseous pollutants within a factor of two and the model has a comparatively good predictive performance. With the release of the ADMER-PRO, the chemical risk assessment and management considering both primary and secondary gaseous pollutants will be significantly enhanced.
机译:我们开发并发布了一种大气扩散模型ADMER-PRO,该模型适用于二次气体污染物(例如,公众高度关注的臭氧),易于非建模专家(如公共管理人员)使用。 ADMER-PRO具有以下功能; 1)它可以估算包括任何单个VOC危险成分在内的主要污染物和次级气体污染物的浓度,2)ADMER-PRO可以轻松估算多种化学物质的浓度,因为它包含必要的数据,例如排放清单一些化学物质,3)它可以估计经常(例如,年度)化学浓度评估所必需的平均浓度,以及4)它可以通过简单的操作在Windows PC上运行。我们使用ADMER-PRO估算了关东和近畿地区多种化学物种的年平均浓度,并通过将计算结果与观测值进行比较,测试了该模型的预测性能。结果表明,ADMER-PRO可以近似再现关于主要污染物(例如NOx和单个有害VOC组分)和次要气体污染物的观测值,并且均在两倍之内,并且该模型具有相对较好的预测性能。随着ADMER-PRO的发布,考虑到主要和次要气体污染物的化学风险评估和管理将大大提高。

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