Study on Land Consolidation Zoning in Hubei Province Based on the Coupling of Neural Network and Cluster Analysis
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Resource and Processing
2.2. Study Area
2.3. Data Analysis Methods
2.3.1. Self-Organizing Feature Map
2.3.2. Hierarchical Clustering
2.4. Zoning Units and Indicator System
3. Results
3.1. Land Consolidation Zoning Based on SOM
3.1.1. Establishment of SOM Classification Network Model
3.1.2. Clustering Results Based on SOM
3.2. Land Consolidation Zoning Based on Hierarchical Clustering
3.3. Coupling Analysis of the Two Clustering Results
3.4. Land Consolidation Zoning Scheme for Hubei Province
4. Discussions
5. Conclusions
- (1)
- Based on the consideration of natural resources, economic development, social indicators, and the ecological environment, and combined with the strategic positioning and policy guidance of land improvement in Hubei province, the proposed evaluation system of land consolidation zoning indicators is both comprehensive and scientific.
- (2)
- SOM clustering was first applied for land consolidation zoning in Hubei province, and 11 categories were determined. SOMs are self-learning, self-adapting systems with a degree of fault-tolerance. Therefore, they improve the rationality, objectivity, and repeatability of the resulting categories, and ensure the objectivity and reliability of the results.
- (3)
- Hierarchical clustering was also applied for land consolidation zoning in Hubei province, determining a total of 12 categories. These results were reasonable, and were in line with the real situation of Hubei province.
- (4)
- Integrating the advantages of SOM neural network clustering with those of hierarchical clustering, seven category partitions for the land consolidation zoning scheme in Hubei province were determined. According to different zoning characteristics, this paper has described the corresponding key points for land consolidation, providing a reference for relevant departments to arrange land consolidation projects, a scientific basis for the preparation of land consolidation planning in Hubei province, and a foundation for further spatial studies.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Category of Indicator | Meta Indicator | Explanation or Calculation of Indicator |
---|---|---|
Natural ecological condition | Geographic and geomorphic conditions | According to the topography of Hubei province, this is divided into four types: plain, downland, hilly, and mountainous plateau. |
Forest coverage (%) | Percentage of forested area in a country or region whose canopy density is above 0.2. | |
Ecological importance rating | Degree of ecological fragility and the priority of ecological protection, which can be divided into national key ecological function areas, national agricultural producing areas, key ecological function areas of Hubei province, and other key ecological function areas of Hubei province, provincial key development areas, and national key development areas. * | |
Geological hazard rating | Degree of vulnerability to geological disasters, including geological disasters that may easily occur, geological hazards that may occur, geological disasters that are less likely to occur, and geological disasters that are generally unlikely to occur. ** | |
Socioeconomic condition | GDP per capita (CNY) | Gross domestic product per capita. |
Disposable income of rural residents per capita (CNY) | Income received by each rural household after initial distribution and redistribution. | |
Agricultural machinery total power per acre (kw/ha) | Agricultural machinery total power per acre (kw/ha) = Total power of agricultural machinery (kw) divided by the area planted with crops (ha). | |
Urbanization rate (%) | Urbanization rate (%) = urban population divided by the total population. | |
Effective irrigation rate (%) | Effective irrigation rate (%) = effective irrigation area (ha) divided by the total cultivated area (ha). | |
Key poverty-stricken county | Yes or no based on the poverty-stricken counties in the 13th five-year plan period of Hubei province. *** | |
Land-use condition | Land reclamation rate (%) | Land reclamation rate (%) = total area of cultivated land (ha) divided by the total area of land (ha). |
Land use rate (%) | Land use rate (%) = used land area (ha) divided by the total land area (ha). | |
Yield of crop per unit area (kg/ha) | Yield of crop per unit area (kg/ha) = total crop yield (kg) divided by the area planted with crops (ha). | |
Cultivated area per capita (ha/person) | Cultivated area per capita (ha/person) = total area of cultivated land (ha) divided by the total population. | |
Land consolidation potential | Agricultural land potential grade | This indicator can reflect the area and quality of cultivated land that can be renovated in the region. **** |
Rural construction potential grade | It refers to the grade of the area of effective cultivated land and other land that can be increased through the transformation of existing rural residential areas and the relocation and consolidation of villages. The larger the area is, the higher the grade is. **** | |
Development potential grade of unused land | It refers to the area of unused land suitable for cultivated land and other agricultural land under certain technical and ecological environment conditions. The larger the area, the higher the grade. **** | |
Reclamation potential grade of abandoned land | It refers to the area of arable land and other agricultural land that can be increased after the remediation measures are taken for the damaged and abandoned land in the process of production and construction. The larger the area, the higher the grade. **** |
Categories | Including Units |
---|---|
I | Xiangzhou District, Zhaoyang City, Yicheng City, Jingshan County, Shayang County, Zhongxiang City, Gongan County, Jianli County, Sui County |
II | Hanchuan City, Xiantao City, Qianjiang City, Tianmen City |
III | Caidian District, Jiangxia District, Huangpi District, Xinzhou District, Hannan District, Zhijiang City, Xiaonan District, Yingcheng City, Jingzhou District, Huangzhou District |
IV | Dangyang City, Laohekou City, Anlu City, Jiangling County, Shishou City, Honghu City, Songzi City, Huangmei County |
V | Yunmeng County, Wuxue City, Jiayu County |
VI | Daye City, Yidu City, Ezhou City, Dongbao District, Xianan District, Chibi City, Zengdu District |
VII | Xishui County, Guangshui City |
VIII | Yiling District, Yuanan County, Gucheng County |
IX | Yangxin County, Xiaochang County, Dawu County, Tuanfeng County, Hongan County, Luotian County, Yingshan County, Qichun County, Macheng City, Tongcheng County, Chongyang County, Tongshan County |
X | Yunyang District, Yunxi County, Danjiangkou City, Nanzhang County |
XI | Zhushan County, Zhuxi County, Fang County, Xingshan County, Zigui County, Changyang County, Wufeng County, Baokang County, Enshi City, Lichuan City, Jianshi County, Badong County, Xuanen County, Xianfeng County, Laifeng County, Hefeng County, Shennongjia Forestry District |
Categories | Including Units |
---|---|
I | Dangyang City, Laohekou City, Shayang County, Yunmeng County, Anlu City, Jiangling County, Gongan County, Jianli County, Shishou City, Honghu City, Songzi City, Xishui County, Huangmei County, Wuxue City, Jiayu County |
II | Zaoyang City, Yicheng City, Jingshan County, Zhongxiang City, Sui County, Guangshui City |
III | Dongan District, Xianan District, Chibi City, Zengdu District |
IV | Caidian District, Jiangxia District, Huangpi District, Xinzhou District, Hannan District, Zhijiang City, Ezhou City, Xiaonan District, Yingcheng City, Hanchuan City, Jingzhou District, Xiantao City, Qianjiang City, Tianmen City |
V | Xiangzhou District |
VI | YiLing District, Yidu City |
VII | Daye City |
VIII | Huangzhou District |
IX | Yuanan County, Nanzhang County, Gucheng County |
X | Xiaochang County, Dawu County, Tuanfeng County, Hongan County, Luotian County, Yingshan County, Qichun County, Macheng City, Tongcheng County, Chongyang County, Tongshan County |
XI | Yunyang District, Yunxi County, Zhushan County, Zhuxi County, Fang County, Danjiangkou City, Xingshan County, Zigui County, Changyang County, Wufeng County, Baokang County, Enshi City, Lichuan City, Jianshi County, Badong County, Xuanen County, Xianfeng County, Laifeng County, Hefeng County, Shennongjia Forestry District |
XII | Yangxin County |
Integrated Category Partitions | Including Units in Integrated Category Partitions | Difference between Two Clustering Method | |
---|---|---|---|
Including Units (Old Category Based on SOM Cluster Method) | Including Units (Old Category Based on Hierarchical Cluster Method) | ||
I | Caidian District, Jiangxia District, Huangpi District, Xinzhou District, Hannan District, Zhijiang City, Xiaonan District, Yingcheng City, Hanchuan City, Jingzhou District, Xiantao City, Qianjiang City, Tianmen City | Huangzhou District (III) | Ezhou City (IV) |
II | Zaoyang City, Yicheng City, Jingshan County, Zhongxiang City, Sui County | Xiangzhou District (I) | Guangshui City (II) |
III | Dangyang City, Laohekou City, Anlu City, Jiangling County, Shishou City, Honghu City, Songzi City, Huangmei County, Yunmeng County, Wuxue City, Jiayu County | - (IV/V) | Gongan County, Jianli County, Shayang County, Xishui County (I) |
IV | Dongbao District, Xianan District, Chibi City, Zengdu District | Dazhi City, Yidu City (VI) | - (III) |
V | Xiaochang County, Dawu County, Tuanfeng County, Hongan County, Luotian County, Yingshan County, Qichun County, Macheng City, Tongcheng County, Chongyang County, Tongshan County | Yangxin County (IX) | - (X) |
VI | Yiling District, Yuanan County, Gucheng County | - (VIII) | Nanzhang County, Yidu City (VI/IX) |
VII | Zhushan County, Zhuxi County, Fang County, Xingshan County, Zigui County, Changyang County, Wufeng County, Baokang County, Enshi City, Lichuan City, Jianshi County, Badong County, Xuanen County, Xianfeng County, Laifeng County, Hefeng County, Shennongjia Forestry District | - (XI) | Yunyang District, Yunxi District, Danjiangkou City (XI) |
Unclassified | Guangshui City, Xishui County |
Integrated Categories | Including Units |
---|---|
I | Caidian District, Jiangxia District, Huangpi District, Xinzhou District, Hannan District, Zhijiang City, Xiaonan District, Yingcheng City, Hanchuan City, Jiangzhou District, Huangzhou District, Ezhou City, Xiantao City, Qianjiang City, Tianmen City |
II | Zaoyang City, Yicheng City, Jiangshan County, Zhongxiang City, Sui County, Xiangzhou District |
III | Dangyang City, Laohekou City, Anlu City, Jiangling County, Shishou City, Honghu City, Songzi City, Huangmei County, Yunmeng County, Wuxue City, Jiayu County, Gongan County, Jianli County, Shayang County, Guangshui City |
IV | Dongbao District, Xianan District, Chibi City, Zengdu District, Dazhi City |
V | Xiaochang County, Dawu County, Tuanfeng County, Hongan County, Luotian County, Yingshan County, Qichun County, Macheng City, Tongcheng County, Chongyang County, Tongshan County, Yangxin County, Xishui County |
VI | Yiling District, Yuanan District, Gucheng County, Nanzhang County, Yidu City |
VII | Zhushan County, Zhuxi County, Fang County, Xingshan County, Zigui County, Changyang County, Wufeng County, Baokang County, Enshi City, Lichuan City, Jianshi County, Badong County, Xuanen County, Xianfeng County, Laifeng County, Hefeng County, Shennongjia Forestry District, Yunyang District, Yunxi County, Danjiangkou City |
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Xiao, P.; Zhao, C.; Zhou, Y.; Feng, H.; Li, X.; Jiang, J. Study on Land Consolidation Zoning in Hubei Province Based on the Coupling of Neural Network and Cluster Analysis. Land 2021, 10, 756. https://doi.org/10.3390/land10070756
Xiao P, Zhao C, Zhou Y, Feng H, Li X, Jiang J. Study on Land Consolidation Zoning in Hubei Province Based on the Coupling of Neural Network and Cluster Analysis. Land. 2021; 10(7):756. https://doi.org/10.3390/land10070756
Chicago/Turabian StyleXiao, Pengnan, Chong Zhao, Yong Zhou, Haoyu Feng, Xigui Li, and Jinhui Jiang. 2021. "Study on Land Consolidation Zoning in Hubei Province Based on the Coupling of Neural Network and Cluster Analysis" Land 10, no. 7: 756. https://doi.org/10.3390/land10070756
APA StyleXiao, P., Zhao, C., Zhou, Y., Feng, H., Li, X., & Jiang, J. (2021). Study on Land Consolidation Zoning in Hubei Province Based on the Coupling of Neural Network and Cluster Analysis. Land, 10(7), 756. https://doi.org/10.3390/land10070756