利用机器学习了解城市沿海人口在应对洪水时的搬迁驱动因素

A. Ramos‐Valle, Joshua J. Alland, A. Bukvic
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引用次数: 1

摘要

由于海平面加速上升,有时超出了它们保护建筑环境的能力,许多城市沿海社区正在遭受更严重的洪水影响。在这种情况下,重新安置可作为一种更有效的减灾和适应战略。然而,目前尚不清楚生活在洪水易发地区的城市居民如何看待搬迁的可能性,以及在什么情况下他们会考虑搬迁。了解由于沿海洪水而影响个人搬迁意愿的因素对于制定可获得和公平的搬迁政策至关重要。本研究的主要目的是确定促使沿海城市居民考虑因沿海洪水而永久搬迁的关键因素。我们利用从美国东海岸城市地区收集的调查数据,评估人们对搬迁的态度,并设计了一个人工神经网络(ANN)和一个随机森林(RF)模型来发现调查数据中的模式,并指出哪些因素影响了考虑搬迁的决定。我们对模型进行了训练,以预测受访者是否会因社会经济因素、过去的暴露和洪水经历以及他们对洪水相关的担忧而搬迁。对模型进行的分析强调了洪水相关问题对准确预测迁移行为的重要性。在模型分析中,一些共同的因素是对不断增加的犯罪的关注,未来每年经历一次洪水的可能性,以及由于洪水导致的更频繁的商业关闭。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using machine learning to understand relocation drivers of urban coastal populations in response to flooding
Many urban coastal communities are experiencing more profound flood impacts due to accelerated sea level rise that sometimes exceed their capacity to protect the built environment. In such cases, relocation may serve as a more effective hazard mitigation and adaptation strategy. However, it is unclear how urban residents living in flood-prone locations perceive the possibility of relocation and under what circumstances they would consider moving. Understanding the factors affecting an individual’s willingness to relocate due to coastal flooding is vital for developing accessible and equitable relocation policies. The main objective of this study is to identify the key considerations that would prompt urban coastal residents to consider permanent relocation due to coastal flooding. We leverage survey data collected from urban areas along the U.S. East Coast, assessing attitudes towards relocation, and design an artificial neural network (ANN) and a random forest (RF) model to find patterns in the survey data and indicate which considerations impact the decision to consider relocation. We trained the models to predict whether respondents would relocate due to socioeconomic factors, past exposure and experiences with flooding, and their flood-related concerns. Analyses performed on the models highlight the importance of flood-related concerns that accurately predict relocation behavior. Some common factors among the model analyses are concerns with increasing crime, the possibility of experiencing one more flood per year in the future, and more frequent business closures due to flooding.
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