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Error apportionment for atmospheric chemistry-transport models a new approach to model evaluation

机译:大气化学传输模型的误差分摊采用模拟评价的新方法

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In this study, methods are proposed to diagnose the causes of errors in air quality (AQ) modelling systems. We investigate the deviation between modelled and observed time series of surface ozone through a revised formulation for breaking down the mean square error (MSE) into bias, variance and the minimum achievable MSE (mMSE). The bias measures the accuracy and implies the existence of systematic errors and poor representation of data complexity, the variance measures the precision and provides an estimate of the variability of the modelling results in relation to the observed data, and the mMSE reflects unsystematic errors and provides a measure of the associativity between the modelled and the observed fields through the correlation coefficient. Each of the error components is analysed independently and apportioned to resolved processes based on the corresponding timescale (long scale, synoptic, diurnal, and intra-day) and as a function of model complexity.The apportionment of the error is applied to the AQMEII (Air Quality Model Evaluation International Initiative) group of models, which embrace the majority of regional AQ modelling systems currently used in Europe and North America.The proposed technique has proven to be a compact estimator of the operational metrics commonly used for model evaluation (bias, variance, and correlation coefficient), and has the further benefit of apportioning the error to the originating timescale, thus allowing for a clearer diagnosis of the processes that caused the error.
机译:在该研究中,提出了方法来诊断空气质量(AQ)建模系统中的误差的原因。我们通过修改的制定来调查所建模和观察时间序列的偏差,通过修改的制定来分解平均方误差(MSE)进入偏置,方差和最小可实现的MSE(MMSE)。偏差测量准确性并意味着存在系统错误和数据复杂性差的表现不佳,方差测量精度,并提供了与观察到的数据相关的建模的可变性的估计,并且MMSE反映了不系统的错误并提供了通过相关系数测量建模和观察字段之间的关联性。独立分析每个错误组件,并基于相应的时间尺度(长刻度,概要,昼夜和日期)和模型复杂性的函数分析到解析的进程。将错误分配给AQMEII(空气质量模型评估国际倡议)模型集团,拥抱目前在欧洲和北美使用的区域AQ建模系统。已被证明是常用于模型评估的操作指标的紧凑估计(偏见,方差和相关系数),并且具有将误差分配给原始时间尺度的进一步益处,从而允许更清楚地诊断导致误差的过程。

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