Land subdivision in the law's shadow: Unraveling the drivers and spatial patterns of land subdivision with geospatial analysis and machine learning techniques in complex landscapes

IF 7.9 1区 环境科学与生态学 Q1 ECOLOGY
Jorge Herrera-Benavides , Marco Pfeiffer , Mauricio Galleguillos
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Abstract

Land subdivisions, especially in rural areas, pose a significant threat to sustainable development in many regions of the world. This issue is particularly challenging to understand in complex landscapes, where many biophysical and anthropic drivers interact without the necessary land regulatory guidance. We combined kernel density analysis and machine learning modeling to unravel the spatial patterns of land subdivisions and the complex relationships between their drivers. We used the Los Lagos region in southern Chile as a study case because it is a global biodiversity hotspot where land subdivisions are constantly increasing. We identify a significant increasing trend of subdivisions. Our modeling approach showed robust performance with an R2 of 0.727, RMSE of 5.109, and a bias of −0.009. The proximity to urban areas, to the coast, distance to electric mains, demographic structure, and proximity to protected areas were significant predictors of land subdivision. Fertile lands, particularly those near urban centers, have become prime targets for subdivisions, exacerbating the conflict between urban development and agricultural sustainability. We highlight the increasing number of subdivisions on threatened ecosystems and highly productive soils. We discuss the interrelationship between the drivers and conclude that subdivision is primarily associated with conventional urban sprawl, although other urbanization phenomena could also be observed in some areas. These findings provide challenges and opportunities for global spatial planning and harmony with biodiversity conservation.

法律阴影下的土地细分:在复杂地貌中利用地理空间分析和机器学习技术揭示土地细分的驱动因素和空间模式
土地细分,尤其是在农村地区,对世界许多地区的可持续发展构成了重大威胁。在复杂地貌中,这一问题的理解尤其具有挑战性,因为在复杂地貌中,许多生物物理和人为因素相互作用,却没有必要的土地监管指导。我们结合核密度分析和机器学习建模,揭示了土地细分的空间模式及其驱动因素之间的复杂关系。我们将智利南部的洛斯拉戈斯地区作为研究案例,因为该地区是全球生物多样性热点地区,土地细分不断增加。我们发现土地细分呈显著增长趋势。我们的建模方法表现稳健,R2 为 0.727,RMSE 为 5.109,偏差为 -0.009。与城市地区、海岸线的距离、与电力干线的距离、人口结构以及与保护区的距离都是土地细分的重要预测因素。肥沃的土地,尤其是靠近城市中心的土地,已成为土地细分的主要目标,加剧了城市发展与农业可持续发展之间的矛盾。我们强调了在受威胁的生态系统和高产土壤上越来越多的土地细分。我们讨论了各种驱动因素之间的相互关系,并得出结论,细分主要与传统的城市扩张有关,尽管在某些地区也可以观察到其他城市化现象。这些发现为全球空间规划与生物多样性保护的协调提供了挑战和机遇。
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来源期刊
Landscape and Urban Planning
Landscape and Urban Planning 环境科学-生态学
CiteScore
15.20
自引率
6.60%
发文量
232
审稿时长
6 months
期刊介绍: Landscape and Urban Planning is an international journal that aims to enhance our understanding of landscapes and promote sustainable solutions for landscape change. The journal focuses on landscapes as complex social-ecological systems that encompass various spatial and temporal dimensions. These landscapes possess aesthetic, natural, and cultural qualities that are valued by individuals in different ways, leading to actions that alter the landscape. With increasing urbanization and the need for ecological and cultural sensitivity at various scales, a multidisciplinary approach is necessary to comprehend and align social and ecological values for landscape sustainability. The journal believes that combining landscape science with planning and design can yield positive outcomes for both people and nature.
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