Predicting Land Use Changes under Shared Socioeconomic Pathway–Representative Concentration Pathway Scenarios to Support Sustainable Planning in High-Density Urban Areas: A Case Study of Hangzhou, Southeastern China

Song Yao, Yonghua Li, Hezhou Jiang, Xiaohan Wang, Qinchuan Ran, Xinyi Ding, Huarong Wang, Anqi Ding
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Abstract

Amidst the challenges posed by global climate change and accelerated urbanization, the structure and distribution of land use are shifting dramatically, exacerbating ecological and land-use conflicts, particularly in China. Effective land resource management requires accurate forecasts of land use and cover change (LUCC). However, the future trajectory of LUCC, influenced by climate change and urbanization, remains uncertain. This study developed an integrated multi-scenario framework by combining system dynamics and patch-generating land use simulation models to predict future LUCC in high-density urban regions under various Shared Socioeconomic Pathway (SSP)–Representative Concentration Pathway (RCP) scenarios. The results showed the following: (1) From 2020 to 2050, cultivated land, unused land, and water are projected to decrease, while construction land is expected to increase. (2) Future land use patterns exhibit significant spatial heterogeneity across three scenarios. Construction land will expand in all districts of Hangzhou, particularly in the main urban areas. Under the SSP585 scenario, the expansion of construction land is most significant, while it is the least under the SSP126 scenario. (3) Distinct factors drive the expansion of different land use types. The digital elevation model is the predominant factor for the expansion of forest and grassland, contributing 19.25% and 30.76%, respectively. Night light contributes the most to cultivated land and construction land, at 13.94% and 20.35%, respectively. (4) The average land use intensity (LUI) in central urban districts markedly surpasses that in the surrounding suburban areas, with Xiacheng having the highest LUI and Chun’an the lowest. Under the SSP126 scenario, the area with increased LUI is significantly smaller than under the SSP245 and SSP585 scenarios. These findings offer valuable guidance for sustainable planning and built environment management in Hangzhou and similarly situated urban centers worldwide.
预测共同社会经济路径-代表性浓度路径情景下的土地利用变化,支持高密度城市地区的可持续规划:中国东南部杭州案例研究
在全球气候变化和加速城市化带来的挑战中,土地利用的结构和分布正在发生巨大变化,加剧了生态和土地利用冲突,在中国尤其如此。有效的土地资源管理需要对土地利用和植被变化(LUCC)进行准确预测。然而,受气候变化和城市化的影响,土地利用和植被变化的未来轨迹仍不确定。本研究结合系统动力学和斑块生成土地利用模拟模型,建立了一个多情景综合框架,以预测高密度城市地区在各种共享社会经济路径(SSP)-代表性浓度路径(RCP)情景下的未来土地利用和植被变化。结果显示如下(1)从 2020 年到 2050 年,预计耕地、未利用地和水域将减少,而建设用地将增加。(2)未来土地利用模式在三种情景下呈现出显著的空间异质性。杭州各区的建设用地都将扩大,尤其是主城区。在 SSP585 情景下,建设用地扩张最为显著,而在 SSP126 情景下,建设用地扩张最小。(3)不同土地利用类型扩张的驱动因素不同。数字高程模型是森林和草地扩展的主要因素,分别占 19.25% 和 30.76%。夜光对耕地和建设用地的影响最大,分别占 13.94% 和 20.35%。(4) 中心城区的平均土地利用强度(LUI)明显高于周边郊区,其中霞城最高,淳安最低。在 SSP126 方案中,土地利用强度增加的区域明显小于 SSP245 和 SSP585 方案。这些发现为杭州以及全球类似城市中心的可持续规划和建筑环境管理提供了宝贵的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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