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Provincial cultivated land use efficiency in China: Empirical analysis based on the SBM-DEA model with carbon emissions considered

机译:中国省级耕地利用效率:基于SBM-DEA模型并考虑碳排放的实证分析

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摘要

Rapid urbanization and industrialization has worsened the situation of the scarce cultivated land resources of China. It's therefore of great importance for sustainable development based on the systematic evaluation on cultivated land use efficiency (CLUE). This study took carbon emissions resulting from cultivated land use into the measurement framework of CLUE, and a slack-based measure (SBM) model with undesirable outputs, boxplot, kernel density estimation and Tobit regression model are adopted for the analysis of 31 provinces in China from 2000 to 2017. The results showed that there was an increasing trend in CLUE in China from 0.5236 in 2000 to 0.8501 in 2017, with the growth rate of 38.40%. Most of provinces in China have much lower levels of CLUE with significantly spatial disparities. In particular, Hainan, Chongqing, Sichuan and Guizhou are always most efficient with the highest value of 1. At the regional level, the average value of CLUE in the northeastern region is the highest, followed by the western, eastern and central regions, and the CLUE in the eastern region is more unstable than the other three regions. The results of Tobit regression show that natural conditions, cultivated land resource endowments, agricultural production conditions, regional economic development and regional science and technology development are important factors resulting in the disparity of China's CLUE.
机译:快速的城市化和工业化使中国耕地资源稀缺的状况更加恶化。因此,基于耕地利用效率(CLUE)的系统评估,对于可持续发展非常重要。本研究将耕地利用产生的碳排放量纳入CLUE的测量框架,并采用了不理想的基于松弛的测度(SBM)模型,箱形图,核密度估计和Tobit回归模型对中国31个省进行了分析。从2000年到2017年。结果表明,中国的CLUE呈上升趋势,从2000年的0.5236增加到2017年的0.8501,增长率为38.40%。中国大多数省份的CLUE水平要低得多,而且空间差异明显。特别是,海南,重庆,四川和贵州始终效率最高,值为1。在区域一级,东北地区的CLUE平均值最高,其次是西部,东部和中部地区,以及东部地区的CLUE较其他三个地区更加不稳定。 Tobit回归的结果表明,自然条件,耕地资源,赋,农业生产条件,区域经济发展和区域科学技术发展是造成中国CLUE差异的重要因素。

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