An Analysis of the Spatiotemporal Characteristics and Diversity of Grain Production Resource Utilization Efficiency under the Constraint of Carbon Emissions: Evidence from Major Grain-Producing Areas in China
Abstract
:1. Introduction
2. Overview of the Study Area, Research Methods, and Data Selection
2.1. Overview of the Study Area
2.2. The Research Methods
2.3. Variables Selection and Data Sources
2.3.1. Input–Output Indicator
2.3.2. External Environmental Indicators
2.3.3. Data Source
3. Results
3.1. Empirical Analysis of the First Stage of Traditional Super-Efficient EBM
3.2. SFA Regression Results of the Second Stage
- (1)
- The regression of the relaxation variables of the urbanization level on the amount of fertilizer application and the total power of machinery passed the significance test of 1%. The regression coefficients of the relaxation variables of the total power of chemical fertilizer machinery were negative and positive, respectively, which indicates that the increasing urbanization level will reduce the redundancy of the chemical fertilizer application amount in the grain production process and increase the redundancy of the agricultural capital investment, mainly based on the total power resources of mechanical machinery.
- (2)
- The regression coefficients of the three relaxation variables of the degree of disaster on the water footprint of grain production and the sowing area of grain and the amount of fertilizer application were all negative, and all of them passed the significance test of at least 5%. The greater the degree of disaster, the lower the relaxation variable, indicating that disasters have more of an impact on low-level farmland, which is consistent with the conclusions of He and Liu et al. [20] and Zhang et al. [58]. In the wake of a natural disaster, modern agricultural technologies are able to provide support for farmland disaster recovery. In addition to the effective replacement of resources, the advanced natural disaster prevention and control system and the construction of high-standard farmland have consolidated China’s ability to ensure food security so that it can effectively resist the influence of natural disasters on agricultural production.
- (3)
- The regression of economic development to the four input relaxation variables all passed the significance test of 1%. Among them, the coefficients of water footprint of grain production, sowing areas of grain, and total mechanical power were all negative, and the relaxation variable of fertilizer application was positive. This means that greater economic development in each region in the major grain-producing areas can effectively reduce the redundancy of the three inputs and, on the other hand, will further increase the redundant input of chemical fertilizer application, which reflects actual agricultural production.
- (4)
- The regression of resource endowment on the relaxation variables of grain sowing areas and fertilizer application amount passed the significance test at 1%. Resource endowment had a positive impact on the input redundancy of the grain sowing area, but it had a negative impact on the input redundancy of fertilizer application amount. It indirectly suggested that, with the stimulus of grain increase policy, the more abundant the cultivated land resources are, the more obvious the abuse of chemical fertilizer is, which is also consistent with the current situation that the increase in grain output in China mainly depends on the excessive input of chemical fertilizer.
- (5)
- The regression coefficients of the relaxation variables of agricultural financial support to the water footprint of grain production and the amount of chemical fertilizer application were positive, and both passed the significance test of at least 5%. The regression results proved that the support policy would increase the input of water resources and the amount of chemical fertilizer application in grain production, resulting in increasing redundancy.
3.3. Empirical Analysis of Adjusted Third Stage Super-Efficiency EBM
3.4. Dynamic Analysis of Resource Utilization Efficiency of Grain Production Based on Malmquist Productivity Index
4. Discussion
5. Conclusions
- (1)
- Applying the traditional envelope analysis model, the weighted mean value of the utilization efficiency of grain production resources in major producing areas from 2000 to 2019 was 0.733, with great differences between the different regions. Jilin, Jiangxi, and Heilongjiang were the top three regions in terms of efficiency level. During the study period, the utilization efficiency of grain production resources in the major producing areas was relatively high, and the annual growth rate was 0.49%, but there is still more than 20% room for improvement.
- (2)
- After excluding external environmental and random factors, the weighted mean value of grain production resource utilization efficiency in the major producing areas decreased to 0.639, and the efficiency and ranking of each province changed greatly. External factors inhibited pure technical efficiency while expanding scale efficiency, and finally the comprehensive technical efficiency was exaggerated with the scale efficiency in place. Meanwhile, the direction and intensity of the influence of external factors on the utilization efficiency of grain production resources were obviously different in each region, which proves that the influence of external factors on the efficiency is not always positive.
- (3)
- In terms of the spatiotemporal characteristics of the utilization efficiency of grain production resources in the major producing areas after adjustment, the allocation efficiency increased from 0.528 to 0.761 during the study period, with an annual growth rate of 1.94%. The improvement in the technical level of grain production resource allocation was not as fast as that of production scale. Our research found that the utilization efficiency of grain production resources in northeast China was much higher than that of the other two regions after 2005, and the major grain-producing areas in northeast China had obvious advantages in terms of the allocation and management level of grain production resources.
- (4)
- The change index of the total factor productivity of grain production resources in the major producing areas showed an upward trend on the whole, and the change was basically consistent with the changing trend of technological progress. This change was more influenced by technological advances. After excluding external factors, the total factor productivity of resources in northeast China showed the fastest growth. Technological progress had an obvious effect on the growth of total factor productivity of grain production resources in Heilongjiang, Jiangsu, Hubei, and Hunan provinces.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Region | Comprehensive Technical Efficiency | Pure Technical Efficiency | Scale Efficiency | |||
---|---|---|---|---|---|---|
Efficiency Value | Rank | Efficiency Value | Rank | Efficiency Value | Rank | |
Heilongjiang | 0.866 | 3 | 0.894 | 3 | 0.966 | 9 |
Liaoning | 0.798 | 7 | 0.913 | 2 | 0.877 | 12 |
Jilin | 0.917 | 1 | 0.921 | 1 | 0.995 | 1 |
Neimenggu | 0.813 | 6 | 0.871 | 5 | 0.937 | 11 |
Hebei | 0.581 | 11 | 0.586 | 12 | 0.991 | 3 |
Shandong | 0.594 | 10 | 0.621 | 11 | 0.959 | 10 |
Anhui | 0.556 | 13 | 0.569 | 13 | 0.978 | 5 |
Henan | 0.576 | 12 | 0.669 | 10 | 0.875 | 13 |
Jiangsu | 0.677 | 9 | 0.694 | 9 | 0.977 | 6 |
Sichuan | 0.841 | 5 | 0.857 | 6 | 0.983 | 4 |
Hubei | 0.767 | 8 | 0.789 | 8 | 0.974 | 8 |
Hunan | 0.849 | 4 | 0.853 | 7 | 0.994 | 2 |
Jiangxi | 0.871 | 2 | 0.892 | 4 | 0.976 | 7 |
Max | 0.917 | 0.921 | 0.995 | |||
Mini | 0.556 | 0.569 | 0.875 | |||
Weighted average | 0.733 | 0.767 | 0.957 |
Dependent Variable | ||||
---|---|---|---|---|
Independent Variable | Grain Water Footprint Relaxation Variables | Grain Sown Area Relaxation Variable | Fertilizer Relaxation Variable | Total Dynamic Relaxation Variable of Machinery |
Level of urbanization | −0.305 (−0.77) | −5.33 × 102 (−0.65) | −0.725 *** (−2.80) | 5.08 × 103 *** (8.83) |
Disaster degree | −7.21 × 10−3 *** (−5.43) | −0.167 *** (−9.32) | −2.28 × 10−3 ** (−2.39) | 2.42 × 10−3 (6.52 × 10−2) |
Level of economic development | −7.23 × 10−4 *** (−4.46) | −1.57 × 10−2 *** (−7.49) | 5.71 × 10−4 *** (3.84) | −2.50 × 10−2 *** (−5.51) |
Resources endowment | 1.73 × 10−3 (0.95) | 8.34 × 10−2 *** (3.91) | −4.80 × 10−3 *** (−3.73) | −7.65 × 10−3 (−0.12) |
Financial support for agriculture | 5.24 × 10−2 *** (4.46) | 0.241 (1.48) | 2.44 × 10−2 ** (2.57) | −0.136 (−0.44) |
Sigma-squared | 1.87 × 104 *** (1.35 × 104) | 8.34 × 105 *** (7.21 × 105) | 3.05 × 103 *** (5.88) | 3.63 × 106 *** (3.58 × 106) |
Gamma | 0.984 *** (6.89 × 102) | 0.937 *** (1.72 × 102) | 0.948 *** (77.4) | 0.926 *** (131) |
Log likelihood | −1090 | −1750 | −1010 | −1920 |
LR | 735 | 376 | 452 | 390 |
Region | Comprehensive Technical Efficiency | Pure Technical Efficiency | Scale Efficiency | |||
---|---|---|---|---|---|---|
Efficiency Value | Rank | Efficiency Value | Rank | Efficiency Value | Rank | |
Heilongjiang | 0.807 | 1 (rise) | 0.965 | 1 (rise) | 0.833 | 3 (rise) |
Liaoning | 0.557 | 10 (fall) | 0.946 | 4 (fall) | 0.590 | 13 (fall) |
Jilin | 0.753 | 2 (fall) | 0.952 | 2 (fall) | 0.787 | 7 (fall) |
Neimenggu | 0.541 | 12 (fall) | 0.901 | 6 (fall) | 0.606 | 12 (fall) |
Hebei | 0.553 | 11 (same) | 0.682 | 11 (rise) | 0.806 | 4 (fall) |
Shandong | 0.618 | 6 (rise) | 0.681 | 12 (fall) | 0.904 | 1 (rise) |
Anhui | 0.525 | 13 (same) | 0.665 | 13 (same) | 0.788 | 6 (fall) |
Henan | 0.622 | 5 (rise) | 0.692 | 10 (same) | 0.902 | 2 (rise) |
Jiangsu | 0.615 | 7 (rise) | 0.765 | 9 (same) | 0.804 | 5 (rise) |
Sichuan | 0.663 | 4 (rise) | 0.899 | 7 (fall) | 0.737 | 9 (fall) |
Hubei | 0.569 | 9 (fall) | 0.825 | 8 (same) | 0.692 | 10 (fall) |
Hunan | 0.686 | 3 (rise) | 0.907 | 5 (rise) | 0.757 | 8 (fall) |
Jiangxi | 0.596 | 8 (fall) | 0.952 | 3 (rise) | 0.627 | 11 (fall) |
Max | 0.807 | 0.965 | 0.904 | |||
Mini | 0.525 | 0.665 | 0.590 | |||
Weighted average | 0.639 | 0.822 | 0.785 |
Years | The Grain Production Resource Allocation Efficiency in the Major Grain-Producing Areas in China From 2000 to 2019 (In the First and Third Stages) | The First and Third Stages of the Three Regional Comprehensive Technical Efficiencies | ||||
---|---|---|---|---|---|---|
Comprehensive Technical Efficiency | Pure Technical Efficiency | Scale Efficiency | In the Northeast | Huang-Huai-Hai | The Middle and Upper Reaches of the Yangtze River | |
2000 | 0.727 (0.528) | 0.782 (0.828) | 0.938 (0.660) | 0.583 (0.375) | 0.454 (0.409) | 0.807 (0.496) |
2001 | 0.715 (0.533) | 0.756 (0.826) | 0.950 (0.666) | 0.598 (0.399) | 0.454 (0.413) | 0.740 (0.470) |
2002 | 0.772 (0.551) | 0.790 (0.837) | 0.977 (0.679) | 0.762 (0.452) | 0.445 (0.407) | 0.713 (0.465) |
2003 | 0.688 (0.508) | 0.734 (0.794) | 0.946 (0.657) | 0.621 (0.409) | 0.412 (0.370) | 0.692 (0.452) |
2004 | 0.719 (0.568) | 0.755 (0.817) | 0.957 (0.708) | 0.635 (0.455) | 0.454 (0.424) | 0.695 (0.486) |
2005 | 0.705 (0.574) | 0.734 (0.805) | 0.963 (0.725) | 0.628 (0.468) | 0.451 (0.428) | 0.665 (0.480) |
2006 | 0.712 (0.601) | 0.740 (0.807) | 0.963 (0.755) | 0.656 (0.511) | 0.464 (0.452) | 0.618 (0.462) |
2007 | 0.688 (0.587) | 0.717 (0.780) | 0.960 (0.763) | 0.600 (0.470) | 0.464 (0.456) | 0.616 (0.469) |
2008 | 0.726 (0.635) | 0.754 (0.818) | 0.963 (0.785) | 0.675 (0.556) | 0.472 (0.474) | 0.625 (0.474) |
2009 | 0.683 (0.607) | 0.712 (0.774) | 0.959 (0.791) | 0.586 (0.488) | 0.466 (0.465) | 0.617 (0.493) |
2010 | 0.703 (0.654) | 0.728 (0.794) | 0.965 (0.824) | 0.652 (0.607) | 0.460 (0.466) | 0.599 (0.480) |
2011 | 0.734 (0.684) | 0.762 (0.810) | 0.962 (0.845) | 0.710 (0.650) | 0.468 (0.477) | 0.608 (0.498) |
2012 | 0.739 (0.689) | 0.763 (0.813) | 0.966 (0.851) | 0.712 (0.636) | 0.475 (0.490) | 0.609 (0.513) |
2013 | 0.759 (0.709) | 0.784 (0.825) | 0.966 (0.862) | 0.749 (0.681) | 0.473 (0.491) | 0.627 (0.515) |
2014 | 0.745 (0.708) | 0.767 (0.818) | 0.968 (0.867) | 0.711 (0.658) | 0.477 (0.498) | 0.629 (0.532) |
2015 | 0.760 (0.737) | 0.795 (0.842) | 0.954 (0.875) | 0.730 (0.685) | 0.487 (0.520) | 0.635 (0.549) |
2016 | 0.773 (0.743) | 0.812 (0.846) | 0.950 (0.881) | 0.746 (0.686) | 0.496 (0.533) | 0.636 (0.543) |
2017 | 0.784 (0.761) | 0.837 (0.870) | 0.936 (0.875) | 0.746 (0.702) | 0.508 (0.547) | 0.649 (0.554) |
2018 | 0.791 (0.756) | 0.855 (0.907) | 0.931 (0.839) | 0.742 (0.670) | 0.512 (0.556) | 0.673 (0.568) |
2019 | 0.798 (0.761) | 0.871 (0.911) | 0.927 (0.836) | 0.746 (0.701) | 0.519 (0.561) | 0.687 (0.578) |
Weighted average | 0.733 (0.63) | 0.767 (0.822) | 0.957 (0.785) | 0.679 (0.563) | 0.471 (0.472) | 0.657 (0.504) |
Period | In the Northeast | Huang-Huai-Hai | The Middle and Upper Reaches of the Yangtze River | Major Grain Producing Areas |
---|---|---|---|---|
The 10th Five-year Plan | 0.649 (0.436) | 0.443 (0.408) | 0.701 (0.471) | 0.720 (0.547) |
The 11th Five-Year Plan | 0.634 (0.526) | 0.465 (0.463) | 0.615 (0.476) | 0.702 (0.617) |
The 12th Five-Year Plan | 0.722 (0.662) | 0.476 (0.495) | 0.622 (0.521) | 0.747 (0.705) |
The 13th Five-Year Plan | 0.745 (0.690) | 0.509 (0.549) | 0.661 (0.561) | 0.787 (0.755) |
Region | Technical Efficiency Change Index | Technological Progress Change Index | Pure Technical Efficiency Change Index | Scale Efficiency Change Index | GML (TFP) Change Index |
---|---|---|---|---|---|
Heilongjiang | 1.014 (0.997) | 1.013 (1.041) | 1.000 (0.996) | 1.015 (1.004) | 1.025 (1.037) |
Liaoning | 1.032 (1.021) | 1.000 (1.022) | 1.000 (1.000) | 1.033 (1.021) | 1.023 (1.038) |
Jilin | 1.020 (1.028) | 0.993 (1.011) | 1.020 (1.005) | 1.000 (1.022) | 1.010 (1.039) |
Neimenggu | 1.012 (1.045) | 1.024 (1.037) | 1.005 (1.002) | 1.010 (1.044) | 1.023 (1.047) |
Hebei | 1.019 (1.009) | 1.001 (1.019) | 1.021 (1.016) | 0.999 (0.994) | 1.017 (1.024) |
Shandong | 1.015 (1.027) | 0.999 (1.018) | 1.011 (1.008) | 1.027 (1.025) | 1.009 (1.017) |
Anhui | 1.016 (1.006) | 0.998 (1.023) | 1.018 (1.007) | 1.000 (0.997) | 1.008 (1.024) |
Henan | 1.016 (1.025) | 0.998 (1.014) | 1.001 (1.010) | 1.014 (1.028) | 1.007 (1.022) |
Jiangsu | 1.025 (0.999) | 1.022 (1.026) | 1.022 (1.011) | 1.004 (0.991) | 1.001 (1.009) |
Sichuan | 1.016 (1.007) | 1.006 (1.044) | 1.008 (1.007) | 1.008 (0.998) | 0.994 (1.011) |
Hubei | 0.993 (0.990) | 0.996 (1.023) | 0.992 (0.992) | 1.004 (1.001) | 0.982 (1.006) |
Hunan | 1.008 (0.995) | 0.994 (1.025) | 1.010 (1.008) | 1.001 (0.987) | 0.989 (1.005) |
Jiangxi | 1.002 (1.003) | 1.006 (1.024) | 0.991 (0.997) | 1.012 (1.004) | 1.000 (1.015) |
In the northeast | 1.020 (1.023) | 1.007 (1.028) | 1.006 (1.001) | 1.014 (1.022) | 1.020 (1.040) |
Huang-Huai-Hai | 1.018 (1.013) | 1.004 (1.020) | 1.015 (1.011) | 1.009 (1.007) | 1.008 (1.019) |
The middle and upper reaches of the Yangtze River | 1.004 (0.999) | 1.000 (1.029) | 1.000 (1.001) | 1.007 (0.998) | 0.991 (1.009) |
Average | 1.014 (1.012) | 1.004 (1.025) | 1.008 (1.005) | 1.010 (1.009) | 1.007 (1.023) |
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Wang, H.; Chen, H.; Tran, T.T.; Qin, S. An Analysis of the Spatiotemporal Characteristics and Diversity of Grain Production Resource Utilization Efficiency under the Constraint of Carbon Emissions: Evidence from Major Grain-Producing Areas in China. Int. J. Environ. Res. Public Health 2022, 19, 7746. https://doi.org/10.3390/ijerph19137746
Wang H, Chen H, Tran TT, Qin S. An Analysis of the Spatiotemporal Characteristics and Diversity of Grain Production Resource Utilization Efficiency under the Constraint of Carbon Emissions: Evidence from Major Grain-Producing Areas in China. International Journal of Environmental Research and Public Health. 2022; 19(13):7746. https://doi.org/10.3390/ijerph19137746
Chicago/Turabian StyleWang, Haokun, Hong Chen, Tuyen Thi Tran, and Shuai Qin. 2022. "An Analysis of the Spatiotemporal Characteristics and Diversity of Grain Production Resource Utilization Efficiency under the Constraint of Carbon Emissions: Evidence from Major Grain-Producing Areas in China" International Journal of Environmental Research and Public Health 19, no. 13: 7746. https://doi.org/10.3390/ijerph19137746
APA StyleWang, H., Chen, H., Tran, T. T., & Qin, S. (2022). An Analysis of the Spatiotemporal Characteristics and Diversity of Grain Production Resource Utilization Efficiency under the Constraint of Carbon Emissions: Evidence from Major Grain-Producing Areas in China. International Journal of Environmental Research and Public Health, 19(13), 7746. https://doi.org/10.3390/ijerph19137746