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Comparative interpretations of renormalization inversion technique for reconstructing unknown emissions from measured atmospheric concentrations

机译:从归一化大气浓度重构未知排放物的归一化反演技术的比较解释

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The study highlights a theoretical comparison and various interpretations of a recent inversion technique, called renormalization, developed for the reconstruction of unknown tracer emissions from their measured concentrations. The comparative interpretations are presented in relation to the other inversion techniques based on principle of regularization, Bayesian, minimum norm, maximum entropy on mean, and model resolution optimization. It is shown that the renormalization technique can be interpreted in a similar manner to other techniques, with a practical choice of a priori information and error statistics, while eliminating the need of additional constraints. The study shows that the proposed weight matrix and weighted Gram matrix offer a suitable deterministic choice to the background error and measurement covariance matrices, respectively, in the absence of statistical knowledge about background and measurement errors. The technique is advantageous since it (i) utilizes weights representing a priori information apparent to the monitoring network, (ii) avoids dependence on background source estimates, (iii) improves on alternative choices for the error statistics, (iv) overcomes the colocalization problem in a natural manner, and (v) provides an optimally resolved source reconstruction. A comparative illustration of source retrieval is made by using the real measurements from a continuous point release conducted in Fusion Field Trials, Dugway Proving Ground, Utah.
机译:这项研究着重介绍了一种理论上的比较,以及对一种最新的反演技术(重新归一化)的各种解释,该反演技术用于从其测量浓度重建未知示踪剂的排放。根据正则化,贝叶斯,最小范数,均值的最大熵和模型分辨率优化等原理,与其他反演技术进行了比较解释。结果表明,可以通过对先验信息和错误统计信息的实际选择,以消除其他约束条件的同时,以与其他技术类似的方式来解释重归一化技术。研究表明,在缺乏有关背景误差和测量误差的统计知识的情况下,建议的权重矩阵和加权Gram矩阵分别为背景误差和测量协方差矩阵提供了合适的确定性选择。该技术是有利的,因为它(i)利用表示监视网络显而易见的先验信息的权重;(ii)避免了对背景源估计的依赖;(iii)改进了误差统计的替代选择;(iv)克服了共定位问题(v)提供最佳解析的源重构。通过使用在犹他州Dugway试验场的Fusion Field Trial中进行的连续点释放的真实测量结果,对源检索进行了比较说明。

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