Exploring the Factors Driving Seasonal Farmland Abandonment: A Case Study at the Regional Level in Hunan Province, Central China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Indicators of Seasonal Farmland Abandonment
2.3. Explanatory Variables
- (1)
- Natural environment features. Natural environment features play an important role in land yields. When the natural agro-climatic conditions cannot ensure adequate yields or income, the land will be abandoned. At the regional level, land yields are mainly driven by soil fertility and agro-meteorological conditions, such as precipitation and sunshine. Here we select potential land productivity as explanatory variable of regional farm abandonment, which integrates photosynthetic potential productivity, light and temperature potential productivity, climate potential productivity and soil potential productivity. We expect a negative relationship between potential land productivity and seasonal farmland abandonment as described in Hypothesis 1. The data are collected from the SoilProduData_Hunan_1981–2010 database of China’s Data Publishing System for Global Change Science [47]. In addition, regional topography, as one feature of the regional background environment, plays an important role in productive efficiency through accessibility and convenience [48]. The effect of regional topography on farmland abandonment can be supposed as Hypothesis 2. According to the Chinese County Statistical Yearbook 2011, the counties of Hunan Province are categorized into three groups: plain counties, hilly counties, and mountainous counties. In this paper, we set two dummy variables, plain and mountain, to represent the regional topography. In plain counties, the variable plain takes 1, otherwise it takes 0, and in mountainous counties, the variable mountain takes 1, otherwise it takes 0. Furthermore, although technological progress and intensive labor input can largely improve agro-productivity, the cultivated land is still an essential and decisive productive factor for agriculture. Hence, the scarcity of arable land matters most in land abandonment, as a region with richer cultivated land will face more risk of farmland abandonment (see Hypothesis 3). Here, we used the per capita area of cultivated land to measure the scarcity of arable land. In sum, the first three hypotheses in this study are as follows:Hypothesis 1.Productive potentialities are negatively associated with seasonal farmland abandonment.Hypothesis 2.Plains have restrictive effects on seasonal farmland abandonment, while mountainous and hilly topographies have accelerative effects.Hypothesis 3.The scarcity of cultivated land is negatively correlated with seasonal farmland abandonment.
- (2)
- Socioeconomic conditions. Generally speaking, the main purposes of Chinese household farming are to meet farmers’ own food needs and to sell grain for economic benefits, respectively referring to self-sufficiency agriculture and commercial agriculture. Despite the fact that subsistence farming still plays an important role in modern rural China, the growing income level enables farmers to buy food to meet their survival demands, so that they may give up farming in whole or part. Thus, we arrive at Hypothesis 4:Hypothesis 4.Farmers’ income is positively correlated with cultivated land abandonment.For commercial agriculture, farmland abandonment can be explained based on economic models of human behavior [2,27]. In China, since the economic reforms of the late 1970s, there has been unprecedented urbanization that brought about a high demand for labor. Compared with agriculture, which is frequently influenced by volatile prices and natural disasters, non-agricultural industries provide more job opportunities, higher wages, and more stable income. Consequently, with the increasing opportunity cost of investing labor in farming, rural laborers are migrating to urban areas to work in non-agricultural industries. As a result, rural agriculture is facing a labor shortage, so farmland has suffered from abandonment and less-intensive cultivation [25]. As peasant households invest more labor and work in non-agricultural industries, farms face more risk of being abandoned. Hence, we end up with the following Hypotheses 5–7:Hypothesis 5.The development level of non-agricultural industries is positively correlated with farmland abandonment.Hypothesis 6.Urban wages have a positive influence on farmland abandonment.Hypothesis 7.Off-farm workload is positively associated with farmland abandonment.In testing the above assumptions, we used rural per capita net income, the proportion of non-agricultural industry, urban wages, and the ratio of off-farm income to indicate the variables in Hypotheses 4–7. In consideration of the possible endogeneity between income and cultivated area, we set the variable rural per capita net income a year in advance. All of the data for these variables were gathered from the Hunan Statistical Yearbook (2012, 2013) and China Statistical Yearbook for Regional Economy (2013). Considering that there may exist an endogenous relationship between per capita income and land abandonment, we moved the per capita net income of rural residents ahead one year.
- (3)
- Facilities of farming systems. As is well known, better agro-production infrastructures are favorable for productivity and adaptive capacity to hazards. In Hunan Province, the most important farming facilities are the machines used for sowing and harvesting, and the facilities for irrigation and drainage. A higher mechanization level means that the region’s agriculture relies much more on mechanized production than labor, and can partially compensate for the impacts of a labor shortage. On the other hand, the effective adaptability can reduce the loss resulting from various natural hazards and market risk, thus guaranteeing the maximization and stability of agro-income, which encourages farmers to keep the land cultivated. Hence, another two hypotheses are developed:Hypothesis 8.The mechanization level of agriculture can contain arable land abandonment.Hypothesis 9.The conditions of drainage and irrigation are negatively associated with farmland abandonment.In this paper, the proportion of mechanized planting and total power of agro-mechanization per square km of cropland are set to represent the variables in Hypothesis 8. In Hypothesis 9, irrigation and drainage facilities are described by irrigation percentage of arable land and pumps per square km of cropland. All of these data were collected from the Hunan Statistical Yearbook (2013).
- (4)
- Location factors. Many studies confirm that distances to settlements, road networks, markets, and population centers are decisive determinants of abandonment [26,36,49]. In the context of a market economy, it is no longer profitable to cultivate far from roads and markets (Müller et al., 2013). As a result, unfavorable access to these places often means high risk of farm abandonment and dismal livelihood opportunities [35]. This study focuses on the regional level, and consequently we emphasize the distance to market and population centers with the following Hypothesis 10:Hypothesis 10.Distance to markets and population centers is positively correlated with cropland abandonment.We define markets and population centers as the capitals of prefectures and provinces. The distances to capitals were obtained via cost-distance analysis using the network analysis model of ArcGIS 10.1 [50]. The road network was obtained through map vectorization according to the Hunan Province Map published by China Map Publishing House in 2012.
2.4. Spatial Correlation and Pattern
2.5. Regression Model
3. Results
3.1. County-Level Pattern of Seasonal Farmland Abandonment in Hunan
3.2. Estimated Results of Regression Model
4. Discussion
4.1. Pattern of Seasonal Farm Abandonment
4.2. Drivers of Seasonal Farmland Abandonment
4.2.1. Natural Environment Suitability for Farm Abandonment Is Crucial
4.2.2. Labor Transfer from Agriculture to Non-Farm Contributes to Farmland Abandonment
4.2.3. Facility Conditions of Farming Systems Are Important Factors
4.2.4. Location Indirectly Affects Farm Abandonment by Influencing Labor Migration
4.2.5. The Spatial Interactive Strengthens the Farmland Abandonment
5. Conclusions and Policy Implications
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Variables | Mean | Standard. Deviation | Expected Relationship |
---|---|---|---|
Dependent | |||
IFA (index of farmland abandonment) | 30.2451 | 16.0831 | |
Natural environmental features | |||
Productive potentialities | 42.9722 | 22.5907 | Negative |
Plain | 0.1600 | 0.3666 | Negative |
Mountain | 0.5100 | 0.4999 | Positive |
Per capita area of cultivated land | 104.9962 | 32.8380 | Positive |
Socioeconomic conditions | |||
Proportion of non-agriculture | 80.1773 | 9.4123 | Positive |
Urban wage | 7582.0690 | 3891.7733 | Positive |
Ratio of off-farm income in rural residents’ income | 45.3415 | 12.3486 | Positive |
Rural per capita net income | 34,001.8402 | 4468.0925 | Positive |
Facilities of farming systems | |||
Proportion of mechanized planting | 118.0559 | 68.7884 | Negative |
Total power of agro-mechanization per square km of cropland | 12.7195 | 5.6115 | Negative |
Irrigation percentage of arable land | 74.4112 | 28.8881 | Negative |
Pumps per square km of cropland | 57.2073 | 62.3392 | Negative |
Location factors | |||
Distance to prefectural capital | 64.6717 | 48.2847 | Positive |
Distance to provincial capital | 256.1449 | 122.9951 | Positive |
Test | Value | p |
---|---|---|
Moran’s I (error) | 1.8041 | 0.0712 |
Lagrange Multiplier (lag) | 5.5221 | 0.0188 |
Robust LM (lag) | 5.9541 | 0.0147 |
Lagrange Multiplier (error) | 0.9896 | 0.3198 |
Robust LM (error) | 1.4216 | 0.2331 |
Variables | OLS | SLM | ||
---|---|---|---|---|
Coefficient | p | Coefficient | p | |
W_Dependent | 0.2792 *** | 0.0062 | ||
Constant | 27.1316 | 0.1339 | 18.0882 | 0.2568 |
Productive potentialities | −0.1180 ** | 0.0350 | −0.0952 * | 0.0517 |
Plain | −6.1899 | 0.1084 | −3.7088 | 0.2804 |
Mountain | 4.9796 * | 0.0876 | 5.3676 ** | 0.0358 |
Per capita area of cultivated land | 0.2038 *** | 0.0000 | 0.2035 *** | 0.0000 |
Proportion of non-agriculture | 0.2675 | 0.1522 | 0.2561 | 0.1253 |
Urban wages | −0.0002 | 0.3733 | −0.0003 | 0.1783 |
Ratio of off-farm income in rural residents’ income | 0.2130 ** | 0.0276 | 0.1962 ** | 0.0201 |
Rural per capita net income | −0.0006 | 0.2191 | −0.0005 | 0.3093 |
Proportion of mechanized planting | −0.1106 *** | 0.0000 | −0.0953 *** | 0.0000 |
Total power of agro-mechanization per square km of cropland | −0.1355 | 0.6368 | −0.0721 | 0.7782 |
Irrigation percentage of arable land | −0.0832 * | 0.0686 | −0.0862 ** | 0.0314 |
Pumps per square km of cropland | −0.0261 | 0.2388 | −0.0265 | 0.1743 |
Distance to prefectural capital | 0.0259 | 0.3776 | 0.0182 | 0.4862 |
Distance to provincial capital | −0.0485 *** | 0.0005 | −0.0468 *** | 0.0001 |
R-squared | 0.6438 | 0.6699 | ||
Log likelihood | −367.5500 | −364.5850 | ||
Akaike info criterion | 765.0990 | 761.1710 | ||
Schwarz criterion | 804.1770 | 802.8530 |
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Yu, Z.; Liu, L.; Zhang, H.; Liang, J. Exploring the Factors Driving Seasonal Farmland Abandonment: A Case Study at the Regional Level in Hunan Province, Central China. Sustainability 2017, 9, 187. https://doi.org/10.3390/su9020187
Yu Z, Liu L, Zhang H, Liang J. Exploring the Factors Driving Seasonal Farmland Abandonment: A Case Study at the Regional Level in Hunan Province, Central China. Sustainability. 2017; 9(2):187. https://doi.org/10.3390/su9020187
Chicago/Turabian StyleYu, Zhonglei, Lei Liu, Hua Zhang, and Jinshe Liang. 2017. "Exploring the Factors Driving Seasonal Farmland Abandonment: A Case Study at the Regional Level in Hunan Province, Central China" Sustainability 9, no. 2: 187. https://doi.org/10.3390/su9020187
APA StyleYu, Z., Liu, L., Zhang, H., & Liang, J. (2017). Exploring the Factors Driving Seasonal Farmland Abandonment: A Case Study at the Regional Level in Hunan Province, Central China. Sustainability, 9(2), 187. https://doi.org/10.3390/su9020187