Optimization of land use planning under multi-objective demand—the case of Changchun City, China

被引:0
|
作者
Wenjun Wu
Xinyi Qiu
Minghao Ou
Jie Guo
机构
[1] Nanjing Agricultural University,College of Land Management
[2] Fudan University,School of Life Sciences
[3] Center of Urban-Coral Joint Development and Land Management Innovation,undefined
[4] State and Local Joint Engineering Research Center of Rural Land Resources Utilization and Consolidation,undefined
关键词
Land-use planning; Multi-objective optimization; Land use simulation; Multi-scenario simulation; Landscape index;
D O I
暂无
中图分类号
学科分类号
摘要
Modeling and scenario analysis are the core elements of land use change research, and in the face of the increasingly serious ecological and environmental problems in urbanization, it is important to carry out land use simulation studies under different protection constraints for scientific planning and policy formulation. Taking Changchun City, the capital of Jilin Province, a pilot national eco-province, as an example, a CLUE-S model with coupled landscape ecological security patterns was constructed to predict and simulate the land use structure and layout under multi-objective optimization scenarios in the planning target year (2030), and the results were analyzed based on landscape index evaluation. The study found the following: (i) the proportion of ecological land area under low, medium, and high security levels in the study area was 8.7%, 64.8%, and 26.5%, respectively; (ii) under the current development trend scenario, the trend of increasing fragmentation of cultivated land patches in Changchun in 2030 will remain unchanged, with construction land spreading along the periphery in a compact and continuous pattern, while ecological land will be seriously encroached upon; and (iii) in the 2030 multi-objective optimization scenario, land use patches of all types will begin to show a tendency to cluster, with less landscape fragmentation and more connectivity, while cultivated land and construction land will also begin to converge and do not deteriorate as a result of spatial conflicts over ecological land.
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页码:9512 / 9534
页数:22
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