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将气候变化适应政策纳入伊朗克尔曼省超干旱地区的空间发展规划

Integrating climate change adaptation policies in spatial development planning in hyperarid regions of Kerman province, Iran.

作者信息

Karami Hossein, Sayahnia Romina, Barghjelveh Shahindokht

机构信息

Department of Environmental Planning and Design, Environmental Sciences Research Institute, Shahid Beheshti University, Tehran, 1983969411, Iran.

出版信息

Heliyon. 2023 Sep 2;9(9):e19785. doi: 10.1016/j.heliyon.2023.e19785. eCollection 2023 Sep.

Abstract

In recent years, lifestyle changes and urbanization of societies, as well as macro-environmental changes, i.e. climate changes (CCs), have caused changes in the land spatial structure and the transfer of resources between different economic sectors of the land. The development of long-term spatial development plans (SDPs) needs to be compatible with CCs, especially in hyperarid areas with low supplies and high demands. In this research, machine learning methods; including Cellular Automata (CA), Random Forest (RF) and regression models through PLUS model were used to simulate the amount of supplies and demands based on land cover (LC) maps during the years 2000, 2010 and 2020 in the hyperarid areas of Kerman, Iran. Then, the best predicted model (Kappa = 0.94, overall accuracy = 0.98) was used to simulate changes in LC classes under climate change scenarios (CCSs) for 2050. The results showed the efficiency of machine learning in simulating land cover changes (LCCs) under CCSs. Findings revealed that SDPs of these areas are not compatible under any possible consideration of CCSs. The modeling results showed that spatial development plans under CCSs is not environmentally efficient and there is no compatibility between supplies, based on agricultural lands, and demands, based on increased population, by 2050. Overall, under the scenario of RCP 8.5, man-made, agriculture and natural LC classes with 106.9, 2.9, and 18.6% changes, respectively, showed the greatest changes compared to 2020. Population control, adjustment of infrastructures, and changes in LC plans can reduce socio-economical and socio-environmental problems in the future of hyperarid areas to some extent.

摘要

近年来,社会生活方式的改变、城市化进程以及宏观环境变化,即气候变化,已导致土地空间结构发生变化,以及不同土地经济部门之间资源的转移。长期空间发展规划(SDPs)的制定需要与气候变化相适应,尤其是在供应少需求高的超干旱地区。在本研究中,运用了机器学习方法,包括细胞自动机(CA)、随机森林(RF)以及通过PLUS模型的回归模型,基于伊朗克尔曼超干旱地区2000年、2010年和2020年的土地覆盖(LC)图来模拟供需量。然后,使用最佳预测模型(卡帕系数=0.94,总体准确率=0.98)来模拟2050年气候变化情景(CCSs)下土地覆盖类别(LC classes)的变化。结果表明机器学习在模拟气候变化情景下的土地覆盖变化(LCCs)方面具有有效性。研究结果显示,在任何可能的气候变化情景考量下,这些地区的空间发展规划都不具有兼容性。建模结果表明,气候变化情景下的空间发展规划在环境方面效率不高,到2050年,基于农业用地的供应与基于人口增长的需求之间不存在兼容性。总体而言,在代表性浓度路径8.5(RCP 8.5)情景下,与2020年相比,人造、农业和自然土地覆盖类别分别有106.9%、2.9%和18.6%的变化,显示出最大的变化。控制人口、调整基础设施以及改变土地覆盖规划在一定程度上可以减少超干旱地区未来的社会经济和社会环境问题。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2955/10559127/794570317159/gr1.jpg

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