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Inversion methods to determine two-dimensional aerosol mass-mobility distributions II: Existing and novel Bayesian methods

机译:反演方法确定二维气溶胶大规模迁移率分布II:现有和新型贝叶斯方法

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Moving towards two-dimensional distributions of particle properties is important to the study of aerosol formation, aerosol climate impacts, and aerosols in material science. This paper builds on existing work to examine Bayesian or statistical approaches to inverting tandem particle mass analyzer (PMA) and differential mobility analyzer (DMA) data to retrieve the two-dimensional mass-mobility distribution. We first consider the Bayesian representation of derivative-based Tikhonov regularization, focusing on the first-order case. We demonstrate a new Bayesian model selection scheme to choose the regularization parameter, which generally outperforms the L-curve approach for derivative-based Tikhonov regularization. We also perform a Bayesian-based uncertainty analysis to evaluate the quality of the reconstructions, noting that uncertainties are lowest in regions close to device setpoints. We then present a new exponential distance prior, a variant of generalized Tikhonov regularization that provides a natural approach to regularizing the two-dimensional aerosol size distribution problem by allowing smoothing preferentially along the length of the distribution. The exponential distance approach is observed to reduce errors in the reconstructions by up to 60%, with the benefit to using the exponential distance prior increasing as the distributions become increasingly narrow, i.e. more highly correlated. Finally, Bayesian model selection is shown to also be a good candidate to optimize the regularization parameters in the exponential distance prior.
机译:朝向二维颗粒性分布的转向对材料科学的气溶胶形成,气溶胶气候影响和气溶胶的研究非常重要。本文建立了现有的工作来检查贝叶斯或统计方法,以反转串联粒子质量分析仪(PMA)和差分移动分析仪(DMA)数据以检索二维质量迁移率分布。我们首先考虑基于衍生的Tikhonov正规化的贝叶斯代表,重点关注一阶案例。我们展示了一种新的贝叶斯模型选择方案来选择正则化参数,这通常优于基于衍生的Tikhonov正规化的L曲线方法。我们还执行基于贝叶斯的不确定性分析以评估重建的质量,注意到不确定性在靠近设备设定值的区域中最低。然后,我们之前提出了一种新的指数距离,通过允许沿分布的长度优先平滑,提供一种全面的Tikhonov正规规则的变体来提供自然的方法来规则化二维气溶胶尺寸分布问题。观察指数距离方法以将重建中的误差减少到60%,并且在分布变得越来越窄的情况下,使用之前增加的指数距离的益处是更高的。最后,贝叶斯模型选择被证明也是优化在指数距离中的正则化参数的良好候选者。

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