环境和社会经济变化中的南亚移民模式情景预测

IF 8.6 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Sophie de Bruin , Jannis Hoch , Jens de Bruijn , Kathleen Hermans , Amina Maharjan , Matti Kummu , Jasper van Vliet
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引用次数: 0

摘要

由于移民与推动这一进程的社会经济和环境条件之间的关系因具体情况而异,且不连续,因此预测移民具有挑战性。在此,我们研究了机器学习(ML)随机森林(RF)模型的实用性,以根据历史模式(2001-2019 年)制定南亚到 2050 年的三种净移民情景。净移民方向模型的准确率达到 75%,而按百分比计算的移民规模模型的 R2 值为 0.44。两个模型的变量重要性相似:温度和建筑用地在解释净移民方面具有首要作用,这与以往的研究结果一致。在所有情景中,我们都发现印度西北部是人口迁入的热点地区,而印度东部和北部、尼泊尔部分地区和斯里兰卡则是人口迁出的热点地区,但在其他地区,不同情景之间存在差异。这些差异凸显了从不同方法中获得一致结果所面临的挑战,这使得就未来移民轨迹得出确切结论变得更加复杂。我们认为,应用多模型方法是预测未来移民动态的有用途径,并可深入了解这些过程的不确定性和可信结果的范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scenario projections of South Asian migration patterns amidst environmental and socioeconomic change

Projecting migration is challenging, due to the context-specific and discontinuous relations between migration and the socioeconomic and environmental conditions that drive this process. Here, we investigate the usefulness of Machine Learning (ML) Random Forest (RF) models to develop three net migration scenarios in South Asia by 2050 based on historical patterns (2001–2019). The model for the direction of net migration reaches an accuracy of 75%, while the model for the magnitude of migration in percentage reaches an R2 value of 0.44. The variable importance is similar for both models: temperature and built-up land are of primary importance for explaining net migration, aligning with previous research. In all scenarios we find hotspots of in-migration North-western India and hotspots of out-migration in eastern and northern India, parts of Nepal and Sri Lanka, but with disparities across scenarios in other areas. These disparities underscore the challenge of obtaining consistent results from different approaches, which complicates drawing firm conclusions about future migration trajectories. We argue that the application of multi-model approaches is a useful avenue to project future migration dynamics, and to gain insights into the uncertainty and range of plausible outcomes of these processes.

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来源期刊
Global Environmental Change
Global Environmental Change 环境科学-环境科学
CiteScore
18.20
自引率
2.20%
发文量
146
审稿时长
12 months
期刊介绍: Global Environmental Change is a prestigious international journal that publishes articles of high quality, both theoretically and empirically rigorous. The journal aims to contribute to the understanding of global environmental change from the perspectives of human and policy dimensions. Specifically, it considers global environmental change as the result of processes occurring at the local level, but with wide-ranging impacts on various spatial, temporal, and socio-political scales. In terms of content, the journal seeks articles with a strong social science component. This includes research that examines the societal drivers and consequences of environmental change, as well as social and policy processes that aim to address these challenges. While the journal covers a broad range of topics, including biodiversity and ecosystem services, climate, coasts, food systems, land use and land cover, oceans, urban areas, and water resources, it also welcomes contributions that investigate the drivers, consequences, and management of other areas affected by environmental change. Overall, Global Environmental Change encourages research that deepens our understanding of the complex interactions between human activities and the environment, with the goal of informing policy and decision-making.
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