Aerosol-cloud interactions constitute the largest source of uncertainty in assessments of the anthropogenic climate change. This uncertainty arises in part from the difficulty in measuring the vertical distributions of aerosols, and only sporadic vertically resolved observations are available. We often have to settle for less informative vertically aggregated proxies such as aerosol optical depth (AOD). In this work, we develop a framework for the vertical disaggregation of AOD into extinction profiles, i.e. the measure of light extinction throughout an atmospheric column, using readily available vertically resolved meteorological predictors such as temperature, pressure or relative humidity. Using Bayesian nonparametric modelling, we devise a simple Gaussian process prior over aerosol vertical profiles and update it with AOD observations to infer a distribution over vertical extinction profiles. To validate our approach, we use ECHAM-HAM aerosol-climate model data which offers self-consistent simulations of meteorological covariates, AOD and extinction profiles. Our results show that, while very simple, our model is able to reconstruct realistic extinction profiles with well-calibrated uncertainty, outperforming by an order of magnitude the idealized baseline which is typically used in satellite AOD retrieval algorithms. In particular, the model demonstrates a faithful reconstruction of extinction patterns arising from aerosol water uptake in the boundary layer. Observations however suggest that other extinction patterns, due to aerosol mass concentration, particle size and radiative properties, might be more challenging to capture and require additional vertically resolved predictors.
翻译:气溶胶-气溶胶-气溶胶-气溶胶-气溶胶互动是评估人为气候变化的最大不确定性来源。这种不确定性的部分原因是测量气溶胶垂直分布的困难,只有零星的垂直溶解观测才能得到。我们常常不得不满足于诸如气溶胶光学深度(AOD)等信息较少的纵向聚合类似物;在这项工作中,我们开发了一个框架,将AOD垂直分解成灭绝剖面,即测量大气柱中的浅度,使用诸如温度、压力或相对湿度等容易获得的垂直溶解气象预报器。我们利用巴耶斯非参数建模,在气溶胶垂直剖面图上设计一个简单的高空进程,并以AOD观测法更新该过程,以推断垂直消散分布图上的分布。为了验证我们的方法,我们使用ECHAM-HAM气溶胶-气溶胶-气候模型数据,对气象变异性、AOD和消化图进行自我一致的模拟。我们的研究结果表明,虽然非常简单,但我们的模型能够重建现实化的消亡状况和精确的消化图,但以不同程度的精确的不确定性,以不同程度的深度的基线为标准,通常需要从卫星的深度观测。