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Evaluation of Analysis by Cross-Validation. Part I: Using Verification Metrics

机译:通过交叉验证评估分析。第一部分:使用验证指标

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We examine how passive and active observations are useful to evaluate an air quality analysis. By leaving out observations from the analysis, we form passive observations, and the observations used in the analysis are called active observations. We evaluated the surface air quality analysis of O 3 and PM 2.5 against passive and active observations using standard model verification metrics such as bias, fractional bias, fraction of correct within a factor of 2, correlation and variance. The results show that verification of analyses against active observations always give an overestimation of the correlation and an underestimation of the variance. Evaluation against passive or any independent observations display a minimum of variance and maximum of correlation as we vary the observation weight, thus providing a mean to obtain the optimal observation weight. For the time and dates considered, the correlation between (independent) observations and the model is 0.55 for O 3 and 0.3 for PM 2.5 and for the analysis, with optimal observation weight, increases to 0.74 for O 3 and 0.54 for PM 2.5 . We show that bias can be a misleading measure of evaluation and recommend the use of a fractional bias such as the modified normalized mean bias (MNMB). An evaluation of the model bias and variance as a function of model values also show a clear linear dependence with the model values for both O 3 and PM 2.5 .
机译:我们研究了被动和主动观测如何用于评估空气质量分析。通过从分析中省略观察,我们形成被动观察,并且在分析中使用的观察称为主动观察。我们使用标准模型验证指标(例如偏差,分数偏差,2之内的正确率和相关度和方差)评估了被动和主动观测对O 3和PM 2.5的地面空气质量分析。结果表明,针对主动观测进行的分析验证始终会高估相关性,而会低估方差。当我们改变观测权重时,对被动观测或任何独立观测的评估显示出方差的最小和相关性的最大值,从而提供了获得最佳观测权的平均值。对于所考虑的时间和日期,(独立的)观测值与模型之间的相关性对于O 3为0.55,对于PM 2.5为0.3,对于分析,在最佳观测权重下,对于O 3为0.74,对于PM 2.5为0.54。我们显示偏倚可能是评估的一种误导性度量,并建议使用分数偏倚,例如修改后的归一化平均偏倚(MNMB)。对模型偏差和方差作为模型值的函数的评估也显示出与O 3和PM 2.5的模型值都有明显的线性相关性。

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