Shallow-cloud impact on climate and uncertainty: A simple stochastic model

E. A. Mueller, S. Stechmann
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引用次数: 3

Abstract

Abstract Shallow clouds are a major source of uncertainty in climate predictions. Several different sources of the uncertainty are possible—e.g., from different models of shallow cloud behavior, which could produce differing predictions and ensemble spread within an ensemble of models, or from inherent, natural variability of shallow clouds. Here, the latter (inherent variability) is investigated, using a simple model of radiative statistical equilibrium, with oceanic and atmospheric boundary layer temperatures, To and Ta, and with moisture q and basic cloud processes. Stochastic variability is used to generate a statistical equilibrium with climate variability. The results show that the intrinsic variability of the climate is enhanced due to the presence of shallow clouds. In particular, the on-and-off switching of cloud formation and decay is a source of additional climate variability and uncertainty, beyond the variability of a cloud-free climate. Furthermore, a sharp transition in the mean climate occurs as environmental parameters are changed, and the sharp transition in the mean is also accompanied by a substantial enhancement of climate sensitivity and uncertainty. Two viewpoints of this behavior are described, based on bifurcations and phase transitions/statistical physics. The sharp regime transitions are associated with changes in several parameters, including cloud albedo and longwave absorptivity/carbon dioxide concentration, and the climate state transitions between a partially cloudy state and a state of full cloud cover like closed-cell stratocumulus clouds. Ideas of statistical physics can provide a conceptual perspective to link the climate state transitions, increased climate uncertainty, and other related behavior.
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浅云对气候和不确定性的影响:一个简单的随机模式
在气候预测中,浅云是一个主要的不确定性来源。有几种不同的不确定性来源是可能的。从不同的浅云行为模式,这可能会产生不同的预测和在一个模式集合内的集合传播,或从固有的,浅云的自然变异性。本文利用一个简单的辐射统计平衡模型,研究了后者(固有变率)与海洋和大气边界层温度、To和Ta以及水汽q和基本云过程的关系。随机变率被用来产生与气候变率的统计平衡。结果表明,浅云的存在增强了气候的内在变率。特别是,云的形成和衰减的开关是一个额外的气候变率和不确定性的来源,超出无云气候的变率。此外,随着环境参数的变化,平均气候也会发生急剧转变,而这种急剧转变也伴随着气候敏感性和不确定性的大幅增强。基于分岔和相变/统计物理,描述了这种行为的两种观点。剧烈的状态转变与几个参数的变化有关,包括云反照率和长波吸收率/二氧化碳浓度,以及气候状态在部分多云状态和完全云覆盖状态(如闭细胞层积云)之间的转变。统计物理学的思想可以提供一个概念性的视角来联系气候状态的转变、增加的气候不确定性和其他相关行为。
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