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Minimization of model representativity errors in identification of point source emission from atmospheric concentration measurements

机译:从大气浓度测量中识别点源发射时,模型表示误差最小化

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Estimation of an unknown atmospheric release from a finite set of concentration measurements is considered an ill-posed inverse problem. Besides ill-posedness, the estimation process is influenced by the instrumental errors in the measured concentrations and model representativity errors. The study highlights the effect of minimizing model representativity errors on the source estimation. This is described in an adjoint modelling framework and followed in three steps. First, an estimation of point source parameters (location and intensity) is carried out using an inversion technique. Second, a linear regression relationship is established between the measured concentrations and corresponding predicted using the retrieved source parameters. Third, this relationship is utilized to modify the adjoint functions. Further, source estimation is carried out using these modified adjoint functions to analyse the effect of such modifications. The process is tested for two well known inversion techniques, called renormalization and least-square. The proposed methodology and inversion techniques are evaluated for a real scenario by using concentrations measurements from the Idaho diffusion experiment in low wind stable conditions. With both the inversion techniques, a significant improvement is observed in the retrieval of source estimation after minimizing the representativity errors. (C) 2017 Elsevier Ltd. All rights reserved.
机译:从有限的一组浓度测量值中估算未知的大气释放被认为是一个不适定的逆问题。除了不适,估计过程还受测量浓度和模型表征误差的仪器误差的影响。该研究强调了将模型代表性误差最小化对源估计的影响。这在伴随建模框架中进行了描述,并分三个步骤进行。首先,使用反演技术估算点源参数(位置和强度)。其次,使用获取的源参数在测得的浓度和相应的预测值之间建立线性回归关系。第三,利用这种关系来修改伴随功能。此外,使用这些修改后的伴随函数执行源估计,以分析此类修改的效果。该过程已针对两种众所周知的反演技术(称为重归一化和最小二乘)进行了测试。通过在低风稳定条件下使用爱达荷州扩散实验的浓度测量值,对所提出的方法和反演技术进行了实际评估。使用这两种反演技术,在将代表性误差最小化之后,在源估计的检索中观察到了显着的改进。 (C)2017 Elsevier Ltd.保留所有权利。

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