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Machine Learning Enhances Flood Resilience Measurement in a Coastal Area - Case Study of Morocco

机译:机器学习增强了沿海地区的抗洪能力测量 - 摩洛哥案例研究

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摘要

Understanding the characteristics contributing to enhancing flood resilience is a matter of urgency in managing urban areas, especially for developing countries, given the challenges imposed by climate change, social growth and urbanization. Identifying resilience metrics remains challenging, mainly because the concept is relatively new, methodological approaches are almost absent, and many types of resilience-related data are still unavailable. A number of indices for flood resilience have been introduced in the literature, typically based on clustering algorithms that allow complex behaviors to be mapped to specific levels of resilience. Consequently, the qualitative aspects of such indices are highly sensitive to the availability, quality and heterogeneity of data. Historically, this assessment has often been performed using rather simple algorithms such as Principal Components Analysis (PCA). Whilst they allow reliable resilience metrics in some areas, their use in a complex urban system such as the northern coastal area in Morocco is arguable. In the present study, we introduce an advanced Machine Learning (ML) method, namely the Self-Organizing Map (SOM), to build a Flood Resilience Index (FRI). Compared to classical methodologies, this present technique allows an improved assimilation of the complex relationship between data representing the social, economic and physical status of the area and resilience level. The success of this approach is mainly due to the ability of SOM to deal with complex, heterogeneous and sparse datasets. The results demonstrate great potential for such algorithms to shed light on systems that are too complex for classical techniques.
机译:鉴于气候变化、社会增长和城市化带来的挑战,了解有助于增强抗洪能力的特征是管理城市地区的当务之急,特别是对发展中国家而言。确定弹性指标仍然具有挑战性,主要是因为这个概念相对较新,几乎没有方法论方法,而且许多类型的弹性相关数据仍然不可用。文献中引入了许多抗洪能力指数,这些指数通常基于聚类算法,这些算法允许将复杂行为映射到特定的抗洪能力水平。因此,这些指数的定性方面对数据的可得性、质量和异质性高度敏感。从历史上看,这种评估通常使用相当简单的算法进行,例如主成分分析(PCA)。虽然它们在某些地区允许可靠的弹性指标,但它们在复杂的城市系统中的使用是有争议的,例如摩洛哥的北部沿海地区。在本研究中,我们引入了一种先进的机器学习(ML)方法,即自组织图(SOM),以建立洪水恢复指数(FRI)。与传统方法相比,目前的技术可以更好地吸收代表该地区社会、经济和物理状况的数据与复原力水平之间的复杂关系。这种方法的成功主要归功于 SOM 处理复杂、异构和稀疏数据集的能力。结果表明,这些算法具有巨大的潜力,可以揭示对于经典技术来说过于复杂的系统。

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