预测温度异常对东南亚水稻生产影响的数据驱动模型

Sabrina De Nardi, C. Carnevale, Sara Raccagni, L. Sangiorgi
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引用次数: 0

摘要

模型是对气候变化输入进行本地估算的核心要素。在这项工作中,提出了一种在区域层面对全球温度异常进行快速降尺度的新方法。该方法基于一套数据驱动模型,将全球气温异常、区域和全球排放与区域气温异常联系起来。特别是,由于可用数据数量有限,考虑了具有外生输入(ARX)的线性自回归结构。为了证明其与现有文献和背景的相关性,我们采用了所提出的 ARX 模型来评估气温异常对东南亚等社会、经济和气候脆弱地区水稻生产的影响。结果表明,气温异常对该地区的影响很大,其估算结果与不同来源和科学领域的文献资料十分吻合。这项工作标志着向开发快速、数据驱动、全面的气候变化影响评估方法迈出了第一步。所提出的 ARX 数据驱动模型揭示了一种将全球温度异常降级到区域水平的新颖可行的方法,显示了其在理解全球温度异常、排放和区域气候条件方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Models to Forecast the Impact of Temperature Anomalies on Rice Production in Southeast Asia
Models are a core element in performing local estimation of the climate change input. In this work, a novel approach to perform a fast downscaling of global temperature anomalies on a regional level is presented. The approach is based on a set of data-driven models linking global temperature anomalies and regional and global emissions to regional temperature anomalies. In particular, due to the limited number of available data, a linear autoregressive structure with exogenous input (ARX) has been considered. To demonstrate their relevance to the existing literature and context, the proposed ARX models have been employed to evaluate the impact of temperature anomalies on rice production in a socially, economically, and climatologically fragile area like Southeast Asia. The results show a significant impact on this region, with estimations strongly in accordance with information presented in the literature from different sources and scientific fields. The work represents a first step towards the development of a fast, data-driven, holistic approach to the climate change impact evaluation problem. The proposed ARX data-driven models reveal a novel and feasible way to downscale global temperature anomalies to regional levels, showing their importance in comprehending global temperature anomalies, emissions, and regional climatic conditions.
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