以低碳为导向的空间规划下快速城市化地区土地利用的预测与低碳绩效:来自中国杭州的证据

IF 2.1 3区 地球科学 Q2 GEOGRAPHY
Weicheng Gu, Weifeng Qi, Mingyu Zhang
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引用次数: 0

摘要

许多国家的中央政府提出了碳峰值和碳中和目标,这使得以低碳为导向的空间规划成为讨论的焦点。然而,很少有研究关注空间规划中碳减排与经济目标的平衡,以及治理对土地利用变化模拟的影响。本研究针对这一空白,在考虑低碳约束和经济发展需求的基础上,对中国杭州这一快速城市化地区进行了实证分析。利用人口、富裕程度和技术回归随机影响(STRIPAT)模型和线性规划-马尔可夫模型,我们模拟了治理决策过程,计算了低碳和基准情景下的最优土地利用结构,然后利用基于人工神经网络的蜂窝自动机(ANN-CA)模拟了土地利用模式。结果显示,在低碳情景下,城市和林地分别增长了 12.35% 和 2.5%,耕地和农村土地分别减少了 9.69% 和 6.4%。92.31% 的城市土地变化发生在市中心区和郊区;而 59.77% 的耕地变化和 95.53% 的林地变化发生在郊区。土地利用的低碳性能主要体现在碳储存释放量、碳排放能力变化和低碳能力上。与基准情景相比,低碳情景下最常见的土地利用类型转换是农用地与林地之间、农村土地与城市土地之间的转换,这导致了较少的碳储存释放量和碳排放量。此外,在低碳情景下,建设用地的紧凑程度提高了 2×10-5,而破碎程度降低了 0.0027。本研究揭示了以低碳为导向的土地利用规划对城市用地扩张的影响,为快速城市化地区的城市政府提高土地利用效率提供了实证依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The forecast and low‐carbon performance of land use in rapid urbanization area under the low‐carbon oriented spatial planning: Evidence from Hangzhou, China
The introduction of the carbon peak and carbon‐neutral targets by many countries' central governments has put low‐carbon‐oriented spatial planning at the forefront of discussions. However, few studies have focused on the balance of carbon emission reduction and economic goals in spatial planning, and the governance influence on land use change simulation. This study addresses this gap by conducting an empirical analysis in the rapidly urbanizing area of Hangzhou, China, taking into consideration low‐carbon constraints and economic development demands. Using the stochastic impacts by regression on population, affluence, and technology (STRIPAT) model and linear programming–Markov, we simulate the governance decision‐making process to calculate the optimal land‐use structures under both low‐carbon and baseline scenario, then simulated land use patterns by using artificial‐neural‐network‐based cellular automata (ANN‐CA). The results showed 12.35% and 2.5% growth in urban and forest land, and 9.69% and 6.4% decline in farm and rural land under the low‐carbon scenario. 92.31% of urban land change occur in the downtown districts and suburbs; while 59.77% of farm land change and 95.53% of forest land change occur in the exurban districts. The low‐carbon performance of land use was reflected in carbon storage release, carbon emission capability change, and low‐carbon capability. The most common conversion of land use categories under the low‐carbon scenario was between farm and forest land, and between rural and urban land, which resulted in less carbon storage release and carbon emissions compared with the baseline scenario. Furthermore, under the low‐carbon scenario, the compactness of construction land increased by 2 × 10−5, while its fragmentation decreased by 0.0027. This study sheds light on the impact of low‐carbon‐oriented land use planning on urban land expansion, providing empirical evidence for city governments in rapid urbanization areas to improve land use efficiency.
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来源期刊
Transactions in GIS
Transactions in GIS GEOGRAPHY-
CiteScore
4.60
自引率
8.30%
发文量
116
期刊介绍: Transactions in GIS is an international journal which provides a forum for high quality, original research articles, review articles, short notes and book reviews that focus on: - practical and theoretical issues influencing the development of GIS - the collection, analysis, modelling, interpretation and display of spatial data within GIS - the connections between GIS and related technologies - new GIS applications which help to solve problems affecting the natural or built environments, or business
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