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A Bayesian statistical approach for the evaluation of CMAQ

机译:贝叶斯统计方法评估CMAQ

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Bayesian statistical methods are used to evaluate Community Multiscale Air Quality (CMAQ) model simulations of sulfate aerosol over a section of the eastern US for 4-week periods in summer and winter 2001. The observed data come from two U.S. Environmental Protection Agency data collection networks. The statistical methods used here address two problems that arise in model evaluation: the sparseness of the observational data which is to be compared to the model output fields and the comparison of model-generated grid cell averages with point-referenced monitoring data. A Bayesian hierarchical model is used to estimate the true values of the sulfate concentration field. Emphasis is placed on modeling the spatial dependence of sulfate over the study region, and then using this dependence structure to estimate average grid cell values for comparison with CMAQ. For the winter period, CMAQ tends to underpredict the sulfate concentrations over a large portion of the region. The CMAQ simulations for the summer period do not show this systematic underprediction of sulfate concentrations.
机译:贝叶斯统计方法用于评估2001年夏季和冬季在美国东部某地区进行为期4周的硫酸盐气溶胶的社区多尺度空气质量(CMAQ)模型模拟​​。观察到的数据来自两个美国环境保护局的数据收集网络。此处使用的统计方法解决了模型评估中出现的两个问题:要与模型输出字段进行比较的观测数据的稀疏性,以及将模型生成的网格单元平均值与以点为参考的监视数据进行比较。贝叶斯层次模型用于估计硫酸盐浓度场的真实值。重点放在建模研究区域内硫酸盐的空间依赖性上,然后使用这种依赖性结构来估计平均网格单元值以与CMAQ进行比较。在冬季,CMAQ往往会低估该地区大部分地区的硫酸盐浓度。夏季的CMAQ模拟并未显示出硫酸盐浓度的这种系统的低估。

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