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Employing the shared socioeconomic pathways to predict CO2emissions

机译:利用共享的社会经济途径预测CO 2 排放

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摘要

© 2017 Elsevier Ltd Predicting CO 2 emissions is of significant interest to policymakers and scholars alike. The following article contributes to earlier work by using the recently released “shared socioeconomic pathways” (SSPs) to empirically model CO 2 emissions in the future. To this end, I employ in-sample and out-of-sample techniques to assess the prediction accuracy of the underlying model, before forecasting countries’ emission rates until 2100. This article makes three central contributions to the literature. First, as one of the first studies, I improve upon the Representative Concentration Pathways (RCPs) by incorporating the SSPs, which did not exist when the RCPs have been released. Second, I calculate predictions and forecasts for a global sample in 1960–2100, which circumvents issues of limited time periods and sample selection bias in previous research. Third, I thoroughly assess the prediction accuracy of the model, which contributes to providing a guideline for prediction exercises in general using in-sample and out-of-sample approaches. This research presents findings that crucially inform scholars and policymakers, especially in light of the prominent 2 °C goal: none of the five SSP scenarios is likely to be linked to emission patterns that would suggest achieving the 2 °C goal is realistic.
机译:©2017 Elsevier Ltd.预测CO 2排放量对决策者和学者都非常重要。下一篇文章通过使用最近发布的“共享的社会经济途径”(SSP)对未来的CO 2排放进行经验建模,为早期工作做出了贡献。为此,在预测各国直至2100年的排放率之前,我采用了样本内和样本外技术来评估基础模型的预测准确性。本文对文献进行了三项主要贡献。首先,作为首批研究之一,我通过合并SSP来改进代表浓度路径(RCP),而RSP发行时尚不存在。其次,我计算了1960年至2100年全球样本的预测和预测,这避免了有限的时间周期和样本选择偏见的问题。第三,我彻底评估了模型的预测准确性,这有助于总体上使用样本内和样本外方法为预测演习提供指导。这项研究提出的发现可以为学者和政策制定者提供至关重要的信息,尤其是考虑到2°C的显着目标:五种SSP方案都不可能与表明实现2°C目标是现实的排放模式相关联。

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    Böhmelt, T;

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  • 年度 2017
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