首站-论文投稿智能助手
典型文献
Spatial location differentiation and development decision optimization of characteristic villages and towns in China
文献摘要:
Due to rapid urbanization and industrialization, the gap between urban and rural development has gradually increased. Rural development problems have been a significant topic of discussion, and are related to people's livelihoods. This article built a point-axis-region location driving system to analyze the spatial location differen- tiation of characteristic villages and towns (CVTS) using the kernel density model, and explored the mechanism of location driving factors with a geographical detector model. The results show that vegetables and fruits are the main types of products in CVTS. They account for 27.60% and 34.68% of all types of products, and occur mainly in the east and central regions of China. Moreover, all point-axis-region driving factors have a significant influence on grain crops. The mean values of driving forces of vegetables and fruits are larger than other types of CVTS, and their values are 0.12 and 0.11. The average driving forces on all CVTS in the northeast are higher than those in other regions, especially the driving forces of vegetables and medicinal crops (0.24 and 0.18, respectively). Finally, we proposed that the Chinese government should employ engineering technology, invest on road net- works, e-commerce and blockchain technology to optimize the point-axis-region location advantages, to promote the sustainable development of CVTS. The detection of driving mechanisms on spatial location differentiation of CVTS has important research value for location theory and rural region systems research.
文献关键词:
作者姓名:
Jintao Li;Yuling Gong
作者机构:
Institute of Governance,Shandong University,Qingdao 266200,China;School of Politics and Public Administration,Shandong University,Qingdao 266200,China;Centre for Quality of Life and Public Policy Research,Shandong University,Qingdao 266237,China;School of Environmental Science and Engineering,Shandong University,Qingdao 266200,China;Institute of Eco-Environmental Forensics,Shandong University,Qingdao 266200,China
引用格式:
[1]Jintao Li;Yuling Gong-.Spatial location differentiation and development decision optimization of characteristic villages and towns in China)[J].地理学与可持续性(英文),2022(01):21-31
A类:
CVTS
B类:
Spatial,location,differentiation,development,decision,optimization,characteristic,villages,towns,China,Due,rapid,urbanization,industrialization,gap,between,rural,has,gradually,increased,Rural,problems,have,been,significant,topic,discussion,are,related,people,livelihoods,This,article,built,point,axis,driving,analyze,spatial,using,kernel,density,model,explored,factors,geographical,detector,results,show,that,vegetables,fruits,types,products,They,account,occur,mainly,central,regions,Moreover,influence,grain,crops,mean,values,forces,larger,than,other,their,average,northeast,higher,those,especially,medicinal,respectively,Finally,proposed,Chinese,government,should,employ,engineering,technology,invest,road,net,works,commerce,blockchain,optimize,advantages,promote,sustainable,detection,mechanisms,important,research,theory,systems
AB值:
0.490291
相似文献
Response of soil respiration to environmental and photosynthetic factors in different subalpine forest?cover types in a loess alpine hilly region
Yuanhang Li;Sha Lin;Qi Chen;Xinyao Ma;Shuaijun Wang;Kangning He-School of Soil and Water Conservation,Key Laboratory of State Forestry Administration On Soil and Water Conservation,Beijing Forestry University,Beijing 100083, People's Republic of China;Beijing Engineering Research Center of Soil and Water Conservation,Beijing Forestry University,Beijing 100083, People's Republic of China;Engineering Research Center of Forestry Ecological Engineering,Ministry of Education,Beijing Forestry University,Beijing 100083,People's Republic of China;North China Power Engineering Co.,Ltd.of China Power Engineering Consulting Group,Changchun 130021, People's Republic of China;Power China Huadong Engineering Corporation Limited, Hangzhou 311122,People's Republic of China
机标中图分类号,由域田数据科技根据网络公开资料自动分析生成,仅供学习研究参考。