Arid
基于GD_SVM_CA-Markov模型的县域景观格局模拟
其他题名Landscape pattern simulation within a county based on GD_SVM_CA-Markov model
王宇航; 于强; 岳德鹏; 张启斌; 马欢
来源期刊中国水土保持科学
ISSN2096-2673
出版年2018
卷号16期号:3页码:134-141
中文摘要利用地理探测器探究地理要素变化与驱动因子关系的优势以及支持向量机分类决策的特点,对CA模型进行改进,并结合Markov模型,形成GD_SVM_CA-Markov模型,以期为县城城镇发展规划以及环境保护提供决策参考。以生态脆弱区典型县域内蒙古磴口县为研究区,基于2011年磴口县土地利用数据,应用GD_SVM_CA-Markov模型,对磴口县2016年的土地景观空间分布格局进行模拟预测,以期发现其变化规律,为了保证模拟精度,将模拟结果与传统CA-Markov模型模拟结果进行对比验证。结果表明,CA-Markov模型模拟结果的总体Kappa系数为0.862 8,GD_SVM_CA-Markov模型模拟结果的总体Kappa系数为0.925 0,2个模型模拟结果的精度均较高,但GD_ SVM_CA-Markov模型模拟结果的精度更高,结果更优。因此,将GD_SVM_CA-Markov模型应用于当地土地景观空间分布格局模拟预测,具有一定可行性,可为当地生态治理以及相关政策的实施提供参考。
英文摘要[Background] Dengkou county is a typical arid and semi-arid area with obviously serious desertification.Ecological environment protection and treatment needs to be solved urgently.In the process of urbanization,balancing the three types of land for construction land,sandy land and ecological land is particularly important.Based on the GD_SVM_CA-Markov model,this paper aims to analyze the change of the dynamic distribution of the landscape in Dengkou county from two dimensions of time and space,to explore its change pattern,and carry on the simulation prediction,so as to provide a certain decisionmaking reference for the local urban development planning,the desertification control and the ecological environment protection.[Methods]Based on 10 driving factors(DEM,slope,aspect,NDVI,groundwater depth,evapotranspiration,population density,the nearest distance to water area,the nearest distance to settlement,the nearest distance to road),the land use suitability atlas was created by using GeoDetector to explore the relationship between land use change and 10 driving factors and MCE module provided by IDRISI software;Through SVM to define the transformation rules of the cell,thus the improvement of CA model was achieved;Based on the land use data of the two periods of 2006 and 2011,the Markov model was used to generate the land use transfer matrix.The landscape pattern simulation of study area in 2016 based on the GD_SVM_CA-Markov model was implemented with the above process integrated.In order to test the simulation accuracy,the Kappa coefficient was used for the test [Results]From 2006 to 2016,the landscape area of construction land in Dengkou county increased from 5 785.55 hm~2 to 8 952.67 hm~2,the landscape area of sandy land decreased from 76 616.15 hm~2 to 56 460.50 hm~2,the landscape area of water area increased from 23 859.88 hm~2 to 24 679.10 hm~2,the landscape area of woodland and grassland increased from 117 452.37 hm~2 to 128 120.87 hm~2.For construction land,there was 15.64% probability of conversion to arable land.In the case of water area,there was 11.56% probability of turning into arable land.In terms of sandy land,there was 18.37% probability of turning into woodland and grassland.The influence degree of the 10 driving factors on the landscape type change in Dengkou county was 0.248 816,0.048 784,0.134 342,0.951 212,0.975 924,0.873 667,0.520 317,0.256 226,0.413 550,0.178 658 respectively according to the above order.The Kappa coefficient of the CA-Markov model simulation results of 2016 was 0.862 8,the Kappa coefficient of the GD_SVM_CA-Markov model simulation result of 2016 was 0.925 0.Based on the land use data of 2016 and the land use transfer data of 20112016,the GD_ SVM_CA-Markov model was used to simulate and predict the spatial distribution pattern of landscape in 2021.During 20162021,the landscape area of construction land increased from 8 952.67 hm~2 to 11 610.21 hm~2,the landscape area of sandy land increased from 56 460.50 hm~2 to 67 235.11 hm~2,and the landscape area of ecological land such as water area and woodland and grassland decreased from 152 799.97 hm~2 to 143 670.04 hm~2.[Conclusions]Hydrological conditions,vegetation cover and population factor are the decisive factors that determine the temporal and spatial changes of local landscape types.Thus,at the same time as urban development,it is necessary to pay attention to ecological and environmental protection.The simulation result of 2016 based on GD _ SVM _ CA-Markov model has higher overall simulation accuracy and is better than the simulation result of 2016 based on CA-Markov model.Therefore,it is feasible to use GD_SVM_CA-Markov model to simulate and predict the spatial distribution pattern of landscape in Dengkou county.
中文关键词地理探测器 ; 模拟 ; 磴口县
英文关键词SVM CA-Markov GeoDetector SVM CA-Markov simulation Dengkou county
语种中文
国家中国
收录类别CSCD
WOS类目GEOGRAPHY
WOS研究方向Geography
CSCD记录号CSCD:6289971
来源机构北京林业大学
资源类型期刊论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/238843
作者单位北京林业大学, 精准林业北京市重点实验室, 北京 100083, 中国
推荐引用方式
GB/T 7714
王宇航,于强,岳德鹏,等. 基于GD_SVM_CA-Markov模型的县域景观格局模拟[J]. 北京林业大学,2018,16(3):134-141.
APA 王宇航,于强,岳德鹏,张启斌,&马欢.(2018).基于GD_SVM_CA-Markov模型的县域景观格局模拟.中国水土保持科学,16(3),134-141.
MLA 王宇航,et al."基于GD_SVM_CA-Markov模型的县域景观格局模拟".中国水土保持科学 16.3(2018):134-141.
条目包含的文件
条目无相关文件。
个性服务
推荐该条目
保存到收藏夹
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[王宇航]的文章
[于强]的文章
[岳德鹏]的文章
百度学术
百度学术中相似的文章
[王宇航]的文章
[于强]的文章
[岳德鹏]的文章
必应学术
必应学术中相似的文章
[王宇航]的文章
[于强]的文章
[岳德鹏]的文章
相关权益政策
暂无数据
收藏/分享

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。