Coupling Coordination Analysis of Livelihood Efficiency and Land Use for Households in Poverty-Alleviated Mountainous Areas
Abstract
:1. Introduction
2. Materials and Methods
2.1. Research Area
2.2. Data Sources
2.3. Variable Selection
2.3.1. The Evaluation Index System of Household Livelihood Efficiency
2.3.2. Evaluation Index System of Household Land Use Level
2.4. Research Methods
2.4.1. Coupling Coordination Degree Model
2.4.2. Kernel Density Estimation
2.4.3. Trend Surface Analysis
3. Results
- (1)
- Livelihood efficiency. Using DEAP2.1 software to calculate the household livelihood efficiency, the average values of comprehensive efficiency, pure technical efficiency and scale efficiency are 0.681, 0.759, and 0.903, respectively, based on which, it can be concluded that the livelihood efficiency (comprehensive efficiency) of households in Qinba is at a relatively medium level. Comparatively speaking, the comprehensive efficiency value is at its lowest, which indicates that various livelihood capital of households in Qinba have not been optimally allocated, and there is still much opportunity for improvement in livelihood efficiency. The scale efficiency of households is at a relatively high level, which indicates that the overall effect and scale of the input and output for local households is good.
- (2)
- Land use level. The minimum, maximum and average land use level of households in Qinba are 0.013, 0.838, and 0.12,7 respectively, which indicates that the overall land use level by local households is quite different and low.
- (3)
- Coupling degree. The average coupling degree between livelihood efficiency and land use of households in Qinba is 0.705. The overall coupling degree is at the intermediate coupling state, indicating a high degree of interaction between household livelihood efficiency and land use.
- (4)
- Development degree. The average development degree of livelihood efficiency and land use development of households in Qinba is 0.404. The overall development degree is at the primary development state, which indicates that the overall development level of household livelihood efficiency and land use is relatively poor.
- (5)
- Coupling coordination degree. The average coupling coordination degree between livelihood efficiency and land use of households in Qinba is 0.526. The overall coupling coordination degree is at the primary coordination level, which indicates a relatively low degree of the benign influence as well as the benign coupling of household livelihood efficiency and land use.
3.1. Analysis of the Differences in Household Livelihood Efficiency
3.2. Analysis of the Differences in Household Land Use Level
3.3. Coupling Coordination Relationship between Different Types of Household Livelihood Efficiency and Land Use
3.3.1. Coupling Degree Analysis of Different Types of Households
3.3.2. Development Degree Analysis of Different Types of Households
3.3.3. Coupling Coordination Degree Analysis of Different Types of Households
3.4. Coupling Coordination Relationship between Household Livelihood Efficiency and Land Use in Different Regions
3.4.1. Coupling Degree Analysis of Households in Different Regions
3.4.2. Development Degree Analysis of Households in Different Regions
3.4.3. Coupling Coordination Degree Analysis of Households in Different Regions
3.5. Spatial Differentiation of the Coupling Coordination Relationship between Household Livelihood Efficiency and Land Use in Different Types and Regions
3.5.1. The Spatial Differentiation of the Coupling Degree of Households in Different Types and Regions
- (1)
- The concentration of coupling degree is different for various types of households. Among them, the difference of nonagricultural households is smaller (the concentration range is 0.566–0.802), and the difference of pure-agricultural households is larger (the concentration range is 0.404–0.903).
- (2)
- The coupling degrees of different types of households are different for various districts and counties. Comparing various types of households, the coupling degree of pure-agriculture households in Hantai district and the coupling degree of agriculture-dependent households in Ziyang county are lower. The coupling degree of pure-agricultural households and nonagriculture-dependent households in Zhenping county, the coupling degree of nonagricultural households in Luonan county and the coupling degree of pure-agricultural households in Danfeng county are lower.
- (3)
- The spatial distribution patterns of the coupling degree are different for various types of households. From east to west, the distribution coupling degree of nonagricultural households and agriculture-dependent households (U-shaped) is opposite to those of other types of households (inverted U-shaped). From north to south, the coupling degree of agriculture-dependent households (U-shaped) is opposite to those of other types of households (inverted U-shape).
3.5.2. Spatial Differentiation of the Development Degree of Households in Different Types and Regions
- (1)
- The concentrations of development degrees are different for various types of households. Among them, the difference of nonagricultural households is smaller (concentration range is 0.300–0.489), while the difference of agricultural-dependent households is larger (concentration range is 0.261–0.551).
- (2)
- The development degrees of different types of households are different in various districts and counties. Compared with various types of households, the development degrees of pure-agriculture households and agriculture-dependent households in Hantai district are relatively lower. The development degrees of pure-agriculture households and nonagriculture-dependent households in Ziyang county are relatively lower. The development degrees of nonagriculture-dependent households and agriculture-dependent households in Zhenping county are relatively higher. The development degrees of pure-agriculture households and agriculture-dependent households in Luonan county and the development degree of nonagriculture households in Danfeng county are relatively lower.
- (3)
- The spatial distribution patterns of the development degrees are different for various types of households. From east to west, the distribution of the development degree of pure-agriculture households (U-shape”) is opposite to those of other types of households (inverted U-shaped). From north to south, the distribution of the development degree of agriculture-dependent households (inverted U-shaped) is opposite to those of other types of households (U-shaped). The development degree of nonagriculture-dependent households is characterized by being high in the north and low in the south from north to south, while the development degree of other types of households is characterized by being low in the north and high in the south.
3.5.3. Spatial Differentiation of the Coupling Coordination Degree of Households in Different Types and Regions
- (1)
- The concentrations of coupling coordination degrees are different for various types of households. Among them, the difference between nonagriculture households is smaller (the concentration range is 0.459–0.571), and the difference between agriculture-dependent households is relatively larger (the concentration range is 0.404–0.652).
- (2)
- The coupling coordination degrees of different types of households are different in districts and counties. Comparing various types of households, the coupling coordination degree is lower for pure-agriculture households in Hantai district, pure-agriculture households in Ziyang county, nonagriculture-dependent households in Zhenping county, pure-agriculture and agriculture-dependent households in Luonan county and pure-agriculture and nonagriculture households in Danfeng county.
- (3)
- The spatial distribution patterns of coupling coordination degree are different for various types of households. From east to west, the distribution of the coupling coordination degree of agriculture-dependent households (U-shaped) is opposite to those of other types of households (inverted U-shaped), and the coupling degree of agriculture-dependent households is characterized by being high in the west and low in the east from north to south. The distribution of the coupling coordination degree of agriculture-dependent and nonagriculture households (U-shaped) is opposite to those of other types of households (inverted U-shaped). The difference of coupling coordination degree of agriculture-dependent households in south-north direction is small, and the coupling coordination degree of nonagriculture-dependent households is characterized by being high in the north and low in the south.
4. Discussion
4.1. Optimization Measures
- (1)
- Develop differentiated livelihood optimization plans based on different types of households. ① Pure-agriculture households can improve their coupling coordination by improving agricultural infrastructure, adjusting land planting structure (food crops, cash crops.), expanding land planting scale, optimizing agricultural production methods, adjusting agricultural production structure (planting, breeding). ② For agriculture-dependent households, they can optimize their agricultural production structure to improve their livelihood efficiency and land use level. On the other hand, they can broaden the scope of their nonagricultural activities, enrich the types of nonagricultural activities, and choose more suitable and efficient nonagricultural activities to coordinate the relationship between agricultural activities and nonagricultural activities and improve the livelihood efficiency. ③ Nonagriculture-dependent households can flexibly adjust their land use methods according to their working hours and work content to maximize the use of livelihood resources. For example, they can optimize the planting structure and breeding structure by planting mulberries, walnut trees, and wild pepper trees, among other things, to improve their livelihood efficiency. ④ Nonagriculture households can adjust the land use form according to their working location and work content. For example, land can be transferred and contracted, and mulberries, walnut trees, traditional Chinese medicine herbs, fruit trees and other crops with less input can be planted. In addition, they can join rural production cooperatives and use land resource to obtain a certain income dividend.
- (2)
- Develop appropriate livelihood development strategies according to different geographical spaces. On the one hand, it is also advisable to develop the livelihood development strategies according to the regional livelihood efficiency and land use level. ① In areas where the livelihood efficiency and land use level are generally low, such as Lueyang county and Shanyang county, it is advisable to help households choose production methods with higher livelihood efficiency, more reasonable land use structure, and higher land use efficiency, to improve the households’ livelihood efficiency, land use level and the coupling coordination level. ② In areas with lower livelihood efficiency and higher land use levels, such as Shiquan county and Yang county, restrictions on land resources make it difficult for households to improve their livelihood efficiency. In this case, households need to develop appropriate nonagricultural activities to supplement the agricultural production to improve livelihood efficiency. ③ In areas with high livelihood efficiency and low land use levels, such as Langao county and Pingli county, the low land use level weakens the coupling coordination relationship between households’ livelihood efficiency and land use. In the future, it is necessary to innovate livelihood methods and land use methods, and improve the land use level on the basis of ensuring the livelihood efficiency. ④ In areas where the livelihood efficiency and land use level are generally high, such as Luonan county and Zhenba County, the coupling coordination degree of household livelihood efficiency and land use can be continuously improved by improving the infrastructure, optimizing the ecological environment, and increasing employment opportunities. And the coupling coordination degree cannot focus on a single aspect of livelihood efficiency or land use level. On the other hand, it will be effective to develop corresponding plans according to regional characteristics. ① In areas with higher terrain, it can not only guide households to plant or breed agricultural products with higher added value according to local characteristics, but also promote the development of production and life models such as building parks on the mountains, building communities under the mountains, and turning households to workers. ② In areas with lower terrain, households can improve their productivity through scale, informatization and mechanization, and they can also use diversified livelihood means to increase income. ③ In areas with a high level of economic development, the income of households can be increased through various production modes such as specialization in production, concurrent employment, and large-scale production. ④ In areas with a low level of economic development, the income of households can be increased by means of labor transfer, and the living standards of households can be improved by attracting investment and improving infrastructure.
- (3)
- Comprehensively improve the livelihood ability and livelihood conditions of households according to the types of households and the characteristics of the geographical space. In order to promote the coordinated and sustainable development of household livelihood efficiency and land use, not only should the households’ own livelihoods be taken into account, but also the external livelihood environment needs to optimized, so as to achieve the high-quality development of households through the “internal and external integration” method. Specifically, improvements can be made of the following aspects: ① Improve the utilization quality and level of land resources. On the one hand, the quality of land use can be improved by implementing a “slope-to-terracing” project, constructing irrigation facilities, transforming farmland, water-electricity-road networks, and improving rural development supporting facilities. On the other hand, land use level can be improved from the perspectives of the market, system, and types of households. For example, the government can guide households to plant crops with higher efficiency and less time and energy, and at the same time, the government can encourage households to work out by land transfer, land lease, and land shares. ② Encourage households to change production methods. When choosing a mode of production, households should comprehensively consider their own family conditions and the local environment. For example, households with less land resources can switch to part-time or full-time nonagricultural activities to increase their income levels, households with more land resources can improve their livelihood efficiency through large-scale production and mechanized production, while households with medium-level land resources can engage in agricultural and nonagricultural production at the same time. Households with formal nonagricultural jobs can engage in agricultural production during holidays and after work, and households without formal nonagricultural jobs can go out to work during the slack time or engage in part-time jobs in the surrounding towns. ③ Promote the development of characteristic industries. It is necessary to promote the development of characteristic industries and realize the commercialization of agriculture by households based on the advantages of regional resources and environment. For example, households can be encouraged to plant special cash crops such as tea, traditional Chinese medicine herbs, peppers, konjac, and walnut trees. Households can be guided to increase their income by adopting methods such as “rice-fish symbiosis”, “rice-shrimp symbiosis” and “under-forest economy”. Households can be encouraged to rely on regional tourism development plan to engage in farmhouses, picking gardens, stay home on farm, handicrafts, characteristic agricultural products, etc. ④ Improve the level of education and medical care. The education level and health status of the households themselves are the basis for carrying out livelihood activities. To this end, the ability of households can be guaranteed and improved by carrying out skill training, regular physical examinations, delivering market information, and organizing medical activities in the countryside.
4.2. Limitation
5. Conclusions
- (1)
- The overall livelihood efficiency of households in Qinba is at a medium level. The overall land use level is quite different and low, the coupling degree is at the intermediate coupling state, the development degree is at the primary development state, and the coupling coordination degree is at the primary coordination state. In order to promote the sustainable, coordinated, and high-quality development of household livelihood efficiency and land use, we should not only focus on household land use, but also improve household livelihood efficiency through a variety of methods, such as optimizing livelihood structure and improving production technology.
- (2)
- From the perspective of the types of households, with the increase of nonagricultural degree, the coupling coordination degree of households increases first, and then decreases. Under the influence of household livelihood methods and land use methods, there are certain differences in the coupling coordination relationship between various types of household livelihood efficiency and land use. Among them, pure-agriculture households have the highest development degree; agriculture-dependent households have the highest land use level, coupling degree, and coupling coordination degree; nonagriculture-dependent households have the lowest development degree and livelihood efficiency; nonagriculture households have the highest livelihood efficiency, lowest land use level, coupling degree, and coupling coordination degree.
- (3)
- From the perspective of spatial distribution pattern, the coupling coordination degree for households east-to-west is “sagging”, while south-to-north diagram is “hogging”. Under the influence of topography, social and economic development level, geographic location and infrastructure, the coupling coordination relationship between household livelihood efficiency and land use are different in regional space. Compared with the central region, the livelihood efficiency, land use level, coupling degree, development degree, and coupling coordination degree of households in the western and eastern regions are relatively lower; the livelihood efficiency, development degree, and coupling coordination degree of households in the northern and southern regions are relatively higher and their land use level and coupling degree are lower.
- (4)
- From the perspective of the households themselves and the external spatial environment, the distribution of the coupling coordination degree for agriculture-dependent households east-to-west (the “sagging” diagram) is opposite to the other types of households. By analogy, the distribution of the coupling coordination degree for nonagriculture and agriculture-dependent households north-to-south (the “hogging” diagram) is opposite to the other types of households. Under the combined influence of household livelihood ability and the external environment, the coupling coordination relationship between different types of household livelihood efficiency and land use are different in space. For example, the livelihood efficiency and development degree of pure-agriculture households are spatially characterized by being low in the middle and high around, and the land use level, coupling degree, and coupling coordination degree are spatially characterized by being high in the middle and low around the sides; the livelihood efficiency and development degree of agriculture-dependent households are spatially characterized by being high in the middle and low around, and the land use level, coupling degree, and coupling coordination degree are spatially characterized by being low in the middle and high around.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Wu, C.J. Theoretical research and regulation of the regional system of human-land relationship. J. Yunan Norm. Univ. (Humanit. Soc. Sci. Ed.) 2008, 211, 1–3. [Google Scholar]
- Zheng, X.Y.; Liu, Y.S. Connotation, formation mechanism and regulation strategy of “rural disease” in the new epoch in China. Hum. Geogr. 2018, 33, 100–106. [Google Scholar]
- Li, X.Y.; Yang, Y.; Liu, Y.; Chen, Y.Y.; Xia, S.Y. The Systematic Structure and Trend Simulation of China’s Man-land Relationship Until 2050. Sci. Geogr. Sin. 2021, 41, 187–197. [Google Scholar]
- Su, F.; Xu, Z.M.; Shang, H.Y. An overview of sustainable livelihoods approach. Adv. Earth Sci. 2009, 24, 61–69. [Google Scholar]
- Su, F.; Pu, X.D.; Xu, Z.M.; Wang, L.A. Analysis about the relationship between livelihood capital and livelihood strategies: Take Ganzhou in Zhangye city as an example. China Popul. Resour. Environ. 2009, 19, 119–125. [Google Scholar]
- Xu, H.S.; Yue, Z. Livelihood strategies of livelihood capital, livelihood risks and farmers. Probl. Agric. Econ. 2012, 33, 100–105. [Google Scholar]
- Guo, S.Q.; Zhang, J.W. Analysis on farmers’ livelihood capital vulnerability. Econ. Surv. 2013, 3, 26–30. [Google Scholar]
- Guo, R.W.; Liu, S.Q.; Chen, G.J.; Xie, F.T.; Yang, X.J.; Liang, L. Research progress and tendency of sustainable livelihoods for peasant household in China. Prog. Geogr. 2013, 32, 657–670. [Google Scholar]
- Luo, C.; Wang, Y. Getting rid of rural poverty: Explanation and policy choice of sustainable livelihood analysis framework. J. Humanit. 2020, 288, 113–120. [Google Scholar]
- Hu, L.; Lu, Q. The effect of livelihood capability on farmers’ persistent poverty threshold. J. Huazhong Agric. Univ. (Soc. Sci. Ed.) 2019, 143, 78–87, 169–170. [Google Scholar]
- Tan, S.H.; Qu, F.T.; Huang, X.J. Difference of farm households’ land use decision-making and land conservation policies under market economy. J. Nanjing Agric. Univ. 2001, 24, 110–114. [Google Scholar]
- Yan, J.Z.; Zhuo, R.G.; Xie, D.T.; Zhang, Y.L. Land use characters of farmers of different livelihood strategies: Cases in three gorges reservoir area. Acta Geogr. Sin. 2010, 65, 1401–1410. [Google Scholar]
- Yang, X.Y.; Zhou, H.; Liu, X.H. Analysis on land use efficiency and its driving factors of different farming households types in mountainous areas—A case study of 18 sample villages in Wuling mountainous area. Chin. J. Agric. Resour. Reg. Plan. 2020, 41, 122–130. [Google Scholar]
- Zu, H.Q.; Zhao, C.W. Spatial differentiation and influencing factors of cultivated land use intensity in Karst trough area: A case study of the Langxi Valley in Guizhou Province, China. Mt. Res. 2021, 39, 415–428. [Google Scholar]
- Liao, L.W.; Gao, X.L.; Long, H.L.; Tang, L.S.; Chen, K.Q.; Ma, E.P. A comparative study of farmland use morphology in plain and mountainous areas based on farmers’ land use efficiency. Acta Geogr. Sin. 2021, 76, 471–486. [Google Scholar]
- Zhu, C.M.; Huang, Y.D.; Wu, J.; Peng, Q. Spatial disparity of cultivated land intensive utilization and its driving forces based on different types of geomorphology—A case study of Jiangxi Province. J. Mt. Sci. 2012, 30, 156–164. [Google Scholar]
- Liu, H.B.; Wang, Q.B.; Bian, Z.X.; Yu, G.F.; Sun, Y. Studying the characteristics and its influencing factors of the farmer land use behavior in the process of industrialization and urbanization: A case study in Sujiatun District of Shenyang City, Liaoning Province. China Popul. Resour. Environ. 2012, 22, 111–117. [Google Scholar]
- Wang, X.Y.; Yan, J.Z. Cultivated land use intensity and its influencing factors of households of different livelihood strategies: A case study of 12 typical villages in Chongqing Municipality. Geogr. Res. 2015, 34, 895–908. [Google Scholar]
- Liu, T.; Qu, F.T.; Jin, J.; Shi, X.P. Impact of land fragmentation and land transfer on farmer’s land use efficiency. Resour. Sci. 2008, 30, 1511–1516. [Google Scholar]
- Jampel, C. Cattle-based livelihoods, changes in the taskscape, and human–bear conflict in the Ecuadorian Andes. Geoforum 2016, 69, 84–93. [Google Scholar] [CrossRef]
- Zhao, X.Y. Sustainable livelihoods research from the perspective of geography: The present status, questions and priority areas. Geogr. Res. 2017, 36, 1859–1872. [Google Scholar]
- Zhao, X.Y.; Li, W. Review of Gannan research in Chinese geography. Geogr. Res. 2019, 38, 743–759. [Google Scholar]
- Yang, L.; Liu, M.C.; Yan, Q.W.; He, S.Y.; Jiao, W.J. Review of eco-environmental effect of farmers’ livelihood strategy transformation. Acta Ecol. Sin. 2019, 39, 8172–8182. [Google Scholar]
- Wang, C.C.; Yang, Y.S. An overview of farmers’ livelihood strategy change and its effect on land use/cover change in developing countries. Prog. Geogr. 2012, 31, 792–798. [Google Scholar]
- Duan, W.; Ren, Y.M.; Feng, J.; Wen, Y.L. Study on natural resource dependence based on livelihood assets: Examples from nature reserves in Hubei Province. Issues Agric. Econ. 2015, 36, 74–82, 112. [Google Scholar]
- Edward, R.C.; Brent, M. The co-production of land use and livelihoods change: Implications for development interventions. Geoforum 2009, 40, 568–579. [Google Scholar]
- Hu, R.; Xie, D.T.; Qiu, D.C.; Wang, X.Y. Review of land use and rural livelihood at home and abroad. Areal Res. Dev. 2016, 35, 162–167. [Google Scholar]
- Albinus, M.P.M.; Joy, O.; Yazidhi, B. Effects of land use practices on livelihoods in the transboundary sub-catchments of the Lake Victoria Basin. Afr. J. Environ. Sci. Technol. 2008, 2, 309–317. [Google Scholar]
- Liang, L.T.; Qu, F.T.; Zhu, P.X.; Ma, K. Analysis of land use behavior and efficiency of different farm household types. Resour. Sci. 2008, 30, 1525–1532. [Google Scholar]
- Ding, S.J.; Zhang, Y.Y.; Ma, Z.X. Research on changes of livelihood capabilities of rural households encountered by land acquisition: Based on improvement of sustainable livelihood approach. Issues Agric. Econ. 2016, 37, 25–34, 110–111. [Google Scholar]
- Liu, Y.M.; Li, S.Z. Study on the development stages of household livelihood diversification: Based on the dimensions of vulnerability and adaptability. China Popul. Resour. Environ. 2017, 27, 147–156. [Google Scholar]
- Ma, C.; Liu, L.M.; Yuan, C.C.; Ren, G.P. Evaluation of cultivated land use intensity of different types of rural household livelihood strategies in rapid urbanization area: A case of Qingpu District in Shanghai City. China Land Sci. 2017, 31, 69–78. [Google Scholar]
- Shaanxi Bureau of Statistics. Shaanxi Statistical Yearbook; China Statistic Press: Beijing, China, 2020. [Google Scholar]
- Liu, Q.; Chen, J.; Wu, K.S.; Yang, X.J. Multidimensional poverty measurement and its impact mechanism on households in the Qinling-Daba Mountains poverty area: A case of Shangluo city. Prog. Geogr. 2020, 39, 996–1012. [Google Scholar] [CrossRef]
- He, Z.W. An analysis on the causes of farmers’ persistent poverty in Qinba mountainous area of Southern Shaanxi from the perspective of livelihood ability. J. Xi’an Univ. Arts Sci. (Soc. Sci. Ed.) 2020, 23, 103–106. [Google Scholar]
- Li, J. Study on the Spatial Differences and Influencing Factors of Poor Rural Households’ Livelihood Based on the Expanded Sustainbale Livelihood Framework: A Case Study of Shizhu County, Chongqing. Ph.D. Thesis, Southwest University, Chongqing, China, 2018. [Google Scholar]
- Wu, Y. Poor mountain farmers livelihood capital impact on livelihoods strategy research: Based on the survey data Pingwu and Nanjiang County of Sichuan Province. Issues Agric. Econ. 2016, 37, 88–94, 112. [Google Scholar]
- Wu, L.; Jin, L.S. Study on influential factors of peasant households’ livelihood capital under the policy of eco-compensation poverty alleviation. J. Huazhong Agric. Univ. (Soc. Sci. Ed.) 2018, 6, 55–61, 153–154. [Google Scholar]
- Su, F.; Ma, N.N.; Song, N.N.; Yin, Y.J.; Kan, L.N. Analysis on the difference of the implementation effect of different poverty alleviation measures—Based on the framework of sustainable livelihood approach. China Soft Sci. 2020, 1, 59–71. [Google Scholar]
- Liu, X.B.; Wang, Y.K.; Li, M.; Liu, Q.; Zhang, Y.X.; Zhu, Y.Y. Analysis on coupling coordination degree between livelihood strategy for peasant households and “production, living and ecological” functions of lands in typical mountainous areas, China. Mt. Res. 2020, 38, 596–607. [Google Scholar]
- Zhang, Y.P.; Halike, W.; Dang, J.H.; Deng, B.S.; Wang, R. Coupled coordination degree of tourism-economy-ecological system in Turpan area. Hum. Geogr. 2014, 29, 140–145. [Google Scholar]
- Zhang, L.L.; Zheng, X.Q.; Meng, C.; Zhang, P.T. Spatio-temporal difference of coupling coordination degree of land use functions in Hunan province. China Land Sci. 2019, 33, 85–94. [Google Scholar]
- Xu, S.; Hu, Y.C. Coupling coordination analysis of capital and livelihood stability of farmers—A case study of the resettlement area of Jinqiao village in Guangxi. Econ. Geogr. 2018, 38, 142–148, 164. [Google Scholar]
- Chen, Y.; Tian, W.T.; Ma, W.B. The coupled relationship and spatial differences between population urbanization and land urbanization: A case study of the central plains urban agglomeration. Ecol. Econ. 2019, 35, 104–110. [Google Scholar]
- Liu, C.J.; Zhou, J.P.; Jiang, J.H.; Wang, Z.Y. Pattern and driving force of regional innovation and regional financial coupling coordination in the Yangtze River economic belt. Econ. Geogr. 2019, 39, 94–103. [Google Scholar]
- Li, E.L.; Cui, Z.Z. Coupling coordination between China’s regional innovation capability and economic development. Sci. Geogr. Sin. 2018, 38, 1412–1421. [Google Scholar]
- Kuang, B.; Lu, X.H.; Zhou, M. Dynamic evolution of urban land economic density distribution in China. China Land Sci. 2016, 30, 47–54. [Google Scholar]
- Li, J.; Hu, B.X.; Kuang, B.; Chen, D.L. Measuring of urban land use efficiency and its dynamic development in China. Econ. Geogr. 2017, 37, 162–167. [Google Scholar]
- Li, Q.; Wang, S.J.; Mei, L. The spatial characteristics and mechanism of supermarkets in central district of Changchun, China. Sci. Geogr. Sin. 2013, 33, 553–561. [Google Scholar]
- Xu, W.X.; Zhang, L.Y.; Liu, C.J.; Yang, L.; Huang, M.J. The coupling coordination of urban function and regional innovation: A case study of 107 cities in the Yangtze River economic belt. Sci. Geogr. Sin. 2017, 37, 1659–1667. [Google Scholar]
- Xu, D.D.; Zhang, J.F.; Liu, S.Q.; Xie, F.T.; Cao, M.T.; Wang, X.L.; Liu, E.L. An analysis of the relationship between livelihood capital and livelihood strategies of the typical mountainous settlements in southwestern China. J. Southwest Univ. (Nat. Sci.) 2015, 37, 118–126. [Google Scholar]
- Zhao, W.J.; Yang, S.L.; Wang, X. The relationship between livelihood capital and livelihood strategy based on logistic regression model in Xinping County of Yuanjiang dry-hot valley. Resour. Sci. 2016, 38, 136–143. [Google Scholar]
Index | Category | Frequency Number | Frequency Rate |
---|---|---|---|
Gender | Male | 351 | 54.93% |
Female | 288 | 45.07% | |
Age groups | ≤20 years old | 47 | 7.35% |
21–35 years old | 135 | 21.13% | |
36–50 years old | 259 | 40.53% | |
51–65 years old | 143 | 22.38% | |
≥66 years old | 55 | 8.61% | |
Education level | Primary school and lower | 224 | 35.05% |
Junior high school | 212 | 33.18% | |
High school or technical secondary school | 89 | 13.93% | |
Junior college or higher | 114 | 17.84% | |
Population size | ≤2 | 42 | 6.57% |
3–4 | 391 | 61.19% | |
≥5 | 206 | 32.24% |
Evaluation Index | Variable | Definition and Description of Variable | |
---|---|---|---|
Livelihood input | Human capital | Age | 0.5: ≤20 years old; 2: 21–35 years old; 3: 36–50 years old; 1.5: 51–65 years old; 0.8: ≥66 years old |
Education level | 1: Primary school and lower; 2: Junior high school; 3: High school or technical secondary school; 4: Junior college or higher | ||
Health status | 1: very bad; 2: bad; 3: fair; 4: good; 5: very good | ||
Population size | Number of family members | ||
Physical capital | Number of livestock | 0: 0; 1: 1–10; 2: 11–20; 3: 21–30; 4: ≥31 | |
Daily supplies | Quantity of daily supplies (pieces) | ||
Transportation/vehicle tools | Number of transportation/vehicle units (vehicles) | ||
Housing condition | Number of rooms (rooms) | ||
Natural capital | Cultivated land area | Gross cultivated land area (mu) | |
Planting area | Actual planting area (mu) | ||
Whether production water can be used as domestic water | 0: no; 1: yes | ||
Financial capital | Gross annual income | 1: 10,000 and below; 2: 10,000–20,000; 3: 20,000–50,000; 4: 50,000–100,000; 5: more than 100,000 | |
Loan/money borrowing opportunities | 0: no; 1: yes | ||
Channels for obtaining loans/borrowing funds | Number of channels for obtaining funds | ||
Social capital | Whether family has cadres | 0: no; 1: yes | |
Trust of neighbors and villagers | 1: Almost none; 2: Minority; 3: Half; 4: Majority; 5: Almost all | ||
Channels for getting help in time of livelihood difficulties | Number of channels for getting help | ||
Participation in the election of village cadres | 0: no; 1: yes | ||
Information capital | Number of information obtaining devices | Number of devices used to obtain information | |
Channels for obtaining information | Number of channels for obtaining information | ||
Timely acquisition of policy, market and other information | 0: no; 1: yes | ||
Livelihood output | Income level | Income change condition | 1: Significantly reduced; 2: Reduced; 3: No change; 4: Improved; 5: Significantly improved |
Welfare level | Improvement of education and medical care | 1: Significantly reduced; 2: Reduced; 3: No change; 4: Improved; 5: Significantly improved | |
Employment opportunities | Improvement of employment channels | 1: Significantly reduced; 2: Reduced; 3: No change; 4: Improved; 5: Significantly improved | |
Rural attachment | Sense of pride and attachment to hometown | 1: Significantly reduced; 2: Reduced; 3: No change; 4: Improved; 5: Significantly improved | |
Ecological protection consciousness | Ecological protection consciousness and values | 1: Significantly reduced; 2: Reduced; 3: No change; 4: Improved; 5: Significantly improved |
Evaluation Index | Variable | Definition and Description of Variable | |
---|---|---|---|
Land use level | Land use intensity | Per capita cultivated land area | Gross cultivated land area/gross family population (mu/person) |
Irrigation condition | 0: no; 1: yes | ||
Idle land | 0: no; 1: yes | ||
Land circulation | 0: no; 1: yes | ||
Land use structure | Agricultural structure | 1: No planting and no breeding; 2: Only planting; 3: Only breeding; 4: Planting and breeding | |
Land input | Gross planting and breeding area (mu) | ||
Labor input | Number of labor force aged 20–65 (person) | ||
Funds input | Input cost of seeds, pesticides, chemical fertilizers, agricultural film, machinery (yuan) | ||
Land use benefits | Gross agricultural output value | Gross income from planting and breeding (yuan) | |
Gross agricultural output | Gross output of planting and breeding (jin) | ||
Land use trend | Changes in planting labor input | 1: Decrease; 2: Unchanged; 3: Increase | |
Changes in planting capital input | 1: Decrease; 2: Unchanged; 3: Increase | ||
Changes in breeding labor input | 1: Decrease; 2: Unchanged; 3: Increase | ||
Changes in breeding capital input | 1: Decrease; 2: Unchanged; 3: Increase |
Coupling Degree | Coupling Type | Development Degree | Development Type | Coupling Coordination Degree | Coupling Coordination Type |
---|---|---|---|---|---|
0–0.199 | Severe uncoupling | 0–0.199 | Severe lag | 0–0.199 | Severe incoordination |
0.200–0.399 | Slight uncoupling | 0.200–0.399 | Slight lag | 0.200–0.399 | Slight incoordination |
0.400–0.599 | Primary coupling | 0.400–0.599 | Primary development | 0.400–0.599 | Primary coordination |
0.600–0.799 | Intermediate coupling | 0.600–0.799 | Intermediate development | 0.600–0.799 | Intermediate coordination |
0.800–1.000 | Advanced coupling | 0.800–1.000 | Advanced development | 0.800–1.000 | Advanced coordination |
Item | Category | Sample Size | Minimum Value | Maximum Value | Average Value | Standard Deviation |
---|---|---|---|---|---|---|
Livelihood efficiency | Comprehensive efficiency | 639 | 0.298 | 1.000 | 0.681 | 0.178 |
Pure technical efficiency | 639 | 0.342 | 1.000 | 0.759 | 0.184 | |
Scale efficiency | 639 | 0.487 | 1.000 | 0.903 | 0.111 | |
Land use | Land use level | 639 | 0.013 | 0.838 | 0.127 | 0.065 |
Coupling coordination | Coupling degree | 639 | 0.274 | 1.000 | 0.705 | 0.136 |
Development degree | 639 | 0.195 | 0.790 | 0.404 | 0.091 | |
Coupling coordination degree | 639 | 0.307 | 0.888 | 0.526 | 0.070 |
Livelihood Efficiency | Land Use Level | Coupling Degree | Development Degree | Coupling Coordination Degree | Sample Size | Percentage | |
---|---|---|---|---|---|---|---|
Pure-agriculture households | 0.688 | 0.159 | 0.741 | 0.424 | 0.552 | 78 | 12.21% |
Nonagriculture-dependent households | 0.674 | 0.162 | 0.759 | 0.418 | 0.558 | 39 | 6.10% |
Nonagriculture-dependent households | 0.648 | 0.134 | 0.724 | 0.391 | 0.525 | 137 | 21.44% |
Nonagriculture households | 0.692 | 0.114 | 0.685 | 0.403 | 0.518 | 385 | 60.25% |
Livelihood Efficiency | Land Use Level | Coupling Degree | Development Degree | Coupling Coordination Degree | Sample Size | Percentage | |
---|---|---|---|---|---|---|---|
Ankang city | 0.673 | 0.124 | 0.698 | 0.398 | 0.520 | 272 | 42.56% |
Hanzhong city | 0.695 | 0.137 | 0.721 | 0.416 | 0.541 | 195 | 30.52% |
Shangluo city | 0.679 | 0.119 | 0.697 | 0.399 | 0.520 | 172 | 26.92% |
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Su, F.; Chang, J.; Shang, H. Coupling Coordination Analysis of Livelihood Efficiency and Land Use for Households in Poverty-Alleviated Mountainous Areas. Land 2021, 10, 1115. https://doi.org/10.3390/land10111115
Su F, Chang J, Shang H. Coupling Coordination Analysis of Livelihood Efficiency and Land Use for Households in Poverty-Alleviated Mountainous Areas. Land. 2021; 10(11):1115. https://doi.org/10.3390/land10111115
Chicago/Turabian StyleSu, Fang, Jiangbo Chang, and Haiyang Shang. 2021. "Coupling Coordination Analysis of Livelihood Efficiency and Land Use for Households in Poverty-Alleviated Mountainous Areas" Land 10, no. 11: 1115. https://doi.org/10.3390/land10111115
APA StyleSu, F., Chang, J., & Shang, H. (2021). Coupling Coordination Analysis of Livelihood Efficiency and Land Use for Households in Poverty-Alleviated Mountainous Areas. Land, 10(11), 1115. https://doi.org/10.3390/land10111115