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Emulation of a complex global aerosol model to quantify sensitivity to uncertain parameters

机译:复杂全球气溶胶模型的仿真,以量化对不确定参数的敏感性

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Sensitivity analysis of atmospheric models is necessary to identify the processes that lead to uncertainty in model predictions, to help understand model diversity through comparison of driving processes, and to prioritise research. Assessing the effect of parameter uncertainty in complex models is challenging and often limited by CPU constraints. Here we present a cost-effective application of variance-based sensitivity analysis to quantify the sensitivity of a 3-D global aerosol model to uncertain parameters. A Gaussian process emulator is used to estimate the model output across multi-dimensional parameter space, using information from a small number of model runs at points chosen using a Latin hypercube space-filling design. Gaussian process emulation is a Bayesian approach that uses information from the model runs along with some prior assumptions about the model behaviour to predict model output everywhere in the uncertainty space. We use the Gaussian process emulator to calculate the percentage of expected output variance explained by uncertainty in global aerosol model parameters and their interactions. To demonstrate the technique, we show examples of cloud condensation nuclei (CCN) sensitivity to 8 model parameters in polluted and remote marine environments as a function of altitude. In the polluted environment 95 % of the variance of CCN concentration is described by uncertainty in the 8 parameters (excluding their interaction effects) and is dominated by the uncertainty in the sulphur emissions, which explains 80 % of the variance. However, in the remote region parameter interaction effects become important, accounting for up to 40 % of the total variance. Some parameters are shown to have a negligible individual effect but a substantial interaction effect. Such sensitivities would not be detected in the commonly used single parameter perturbation experiments, which would therefore underpredict total uncertainty. Gaussian process emulation is shown to be an efficient and useful technique for quantifying parameter sensitivity in complex global atmospheric models.
机译:大气模型的敏感性分析是必要的,以确定在模型预测中导致不确定性的过程,以通过驾驶过程的比较来帮助理解模型多样性,并优先考虑研究。评估复杂模型中参数不确定性的影响是挑战性的,并且通常受CPU限制的限制。在这里,我们提出了一种经济高效地应用基于方差的敏感性分析,以量化3-D全球气溶胶模型对不确定参数的敏感性。高斯工艺模拟器用于估计多维参数空间跨多维参数空间的模型输出,使用来自使用拉丁超级空间填充设计所选择的点的少量模型运行。高斯流程仿真是一种贝叶斯方法,它使用模型的信息以及关于模型行为的一些先验假设,以预测不确定性空间中的任何地方的模型输出。我们使用高斯过程仿真器来计算全球气溶胶模型参数及其交互中不确定性解释的预期输出方差百分比。为了证明该技术,显示云冷凝核(CCN)敏感度的敏感性敏感性的敏感性和远程海洋环境中的8个模型参数的例子。在污染环境中,通过8个参数中的不确定性(不包括它们的相互作用效应)来描述CCN浓度的95%,并且由硫排放中的不确定性主导,这解释了80%的变化。但是,在远程区域参数交互效果中变得重要,占总方差的高达40%。一些参数显示出可忽略不计的个体效果,而是具有实质性的相互作用。因此,在常用的单个参数扰动实验中不会检测到这种敏感性,因此将削弱总不确定性。高斯工艺仿真被证明是用于量化复杂全球大气模型中的参数灵敏度的有效和有用的技术。

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