气候作用力的有条件多步骤归因

Christopher R. Wentland, Michael Weylandt, Laura P. Swiler, Thomas S. Ehrmann, Diana Bull
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摘要

将气候影响归因于源强迫对于理解、交流和解决人类对气候的影响至关重要。虽然标准的归因方法,如最优指纹法,已成功应用于长期、广泛的影响,如全球地表温度变暖,但在低信噪比情况下,即典型的短期气候强迫或与强迫关系松散的气候变量中,这些方法往往难以奏效。单步方法直接将源强迫与最终影响联系起来,无法利用额外的气候信息来提高归因的确定性。为了解决这个问题,本文提出了一种新颖的多步骤归因方法,能够对多个变量进行条件分析。一系列相关的气候效应被视为从属效应,在因果路径的中间步骤中发现的关系被用来更好地描述强迫影响。这样就能确定造成观测到的影响的作用力水平,而单步方法则无法做到这一点。利用描述作用力影响的特征、简单的作用力响应模型和条件贝叶斯公式,这种方法可以结合多个因果途径来确定正确的作用力大小。我们以 1991 年皮纳图博火山爆发为例,演示了这种短期高变异强迫方法。结果表明,与仅从温度测量得出的分析结果相比,包括平流层和地表温度及辐射通量测量在内的分析结果增加了气候归因的确定性。
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Conditional multi-step attribution for climate forcings
Attribution of climate impacts to a source forcing is critical to understanding, communicating, and addressing the effects of human influence on the climate. While standard attribution methods, such as optimal fingerprinting, have been successfully applied to long-term, widespread effects such as global surface temperature warming, they often struggle in low signal-to-noise regimes, typical of short-term climate forcings or climate variables which are loosely related to the forcing. Single-step approaches, which directly relate a source forcing and final impact, are unable to utilize additional climate information to improve attribution certainty. To address this shortcoming, this paper presents a novel multi-step attribution approach which is capable of analyzing multiple variables conditionally. A connected series of climate effects are treated as dependent, and relationships found in intermediary steps of a causal pathway are leveraged to better characterize the forcing impact. This enables attribution of the forcing level responsible for the observed impacts, while equivalent single-step approaches fail. Utilizing a scalar feature describing the forcing impact, simple forcing response models, and a conditional Bayesian formulation, this method can incorporate several causal pathways to identify the correct forcing magnitude. As an exemplar of a short-term, high-variance forcing, we demonstrate this method for the 1991 eruption of Mt. Pinatubo. Results indicate that including stratospheric and surface temperature and radiative flux measurements increases attribution certainty compared to analyses derived solely from temperature measurements. This framework has potential to improve climate attribution assessments for both geoengineering projects and long-term climate change, for which standard attribution methods may fail.
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