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Inverse modelling of cloud-aerosol interactions -Part 2: Sensitivity tests on liquid phase clouds using a Markov chain Monte Carlo based simulation approach

机译:云与气溶胶相互作用的逆建模-第2部分:使用基于马尔可夫链基于蒙特卡洛的仿真方法对液相云进行敏感性测试

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This paper presents a novel approach to investigate cloud-aerosol interactions by coupling a Markov chain Monte Carlo (MCMC) algorithm to an adiabatic cloud parcel model. Despite the number of numerical cloud-aerosol sensitivity studies previously conducted few have used statistical analysis tools to investigate the global sensitivity of a cloud model to input aerosol physiochemical parameters. Using numerically generated cloud droplet number concentration (CDNC) distributions (i.e. synthetic data) as cloud observations, this inverse modelling framework is shown to successfully estimate the correct calibration parameters, and their underlying posterior probability distribution. The employed analysis method provides a new, integrative framework to evaluate the global sensitivity of the derived CDNC distribution to the input parameters describing the lognormal properties of the accumulation mode aerosol and the particle chemistry. To a large extent, results from prior studies are confirmed, but the present study also provides some additional insights. There is a transition in relative sensitivity from very clean marine Arctic conditions where the lognormal aerosol parameters representing the accumulation mode aerosol number concentration and mean radius and are found to be most important for determining the CDNC distribution to very polluted continental environments (aerosol concentration in the accumulation mode >1000 cm~(?3)) where particle chemistry is more important than both number concentration and size of the accumulation mode. The competition and compensation between the cloud model input parameters illustrates that if the soluble mass fraction is reduced, the aerosol number concentration, geometric standard deviation and mean radius of the accumulation mode must increase in order to achieve the same CDNC distribution. This study demonstrates that inverse modelling provides a flexible, transparent and integrative method for efficiently exploring cloud-aerosol interactions with respect to parameter sensitivity and correlation.
机译:本文提出了一种新方法,通过将马尔可夫链蒙特卡罗(MCMC)算法耦合到绝热云包裹模型来研究云气溶胶相互作用。尽管先前进行过大量的数字云气溶胶敏感性研究,但很少使用统计分析工具来研究云模型对气溶胶理化参数输入的整体敏感性。使用数字生成的云滴数浓度(CDNC)分布(即合成数据)作为云观测资料,该逆建模框架显示成功地估计了正确的校准参数及其潜在的后验概率分布。所采用的分析方法提供了一个新的综合框架,以评估导出的CDNC分布对描述累积模式气溶胶和颗粒化学性质的对数正态性质的输入参数的整体敏感性。在很大程度上,先前研究的结果得到了证实,但本研究也提供了一些其他见解。在非常干净的海洋北极条件下,相对灵敏度有一个转变,对数正态气溶胶参数代表累积模式气溶胶数浓度和平均半径,并且被发现对于确定CDNC分布到极度污染的大陆环境(在大气中的气溶胶浓度)最为重要。积聚模式> 1000 cm〜(?3)),其中粒子化学比积聚模式的数量浓度和尺寸更重要。云模型输入参数之间的竞争和补偿表明,如果降低可溶性质量分数,则必须增加气溶胶数量浓度,几何标准偏差和累积模式的平均半径,以实现相同的CDNC分布。这项研究表明,逆向建模提供了一种灵活,透明和集成的方法,可以有效地探索关于参数敏感性和相关性的云气溶胶相互作用。

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