Spatial differentiation of center pivot irrigation in a farming-pastoral ecotone of Northern China: A case study in Ulanqab

Xin Chen, Li Jiang, Guoliang Zhang, Lijun Meng, Pingli An
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Abstract

Agricultural production capacity in Farmingpastoral Ecotone of Northern China (FPENC) has been limited to long-standing water shortage and drought. In this context, the center pivot irrigation (CPI) exhibited a widespread adoption in recent years to increase utilization efficiency of agricultural water and crop yield. However, the high rate of groundwater extraction by CPI, reducing the aquifer saturated thickness, has large potential impacts on aboveground vegetation growth. And, we lack the knowledge of the temporal and spatial variations of CPI in FPENC. In this paper, taking Ulanqab as an example, we measured spatio-temporal patterns of CPI from 2008 to 2017 using Landsat TM/ETM+/OLI data and spatial autocorrelation methods. The results indicated that the number of CPI increased first and then decreased, reaching a peak of 1243 in 2015. There was a positive spatial autocorrelation in the spatial distribution of CPI, that is, it had a very obvious spatial clustering characteristics. The degree of spatial agglomeration increased from 0.283 in 2008 to 0.526 in 2017. The results of local spatial autocorrelation showed that the spatial agglomeration pattern of Ulanqab was dominated by High-High agglomeration. These obtained results can provide a strong basis for decision-making in formulating sustainable agricultural development strategies.
中国北方农牧交错带中心支点灌溉空间分异——以乌兰察布为例
中国北方农牧交错带的农业生产能力受到长期缺水和干旱的制约。在此背景下,中心支点灌溉(CPI)近年来被广泛采用,以提高农业水分利用效率和作物产量。然而,CPI抽取地下水的速率高,降低了含水层的饱和厚度,对地上植被生长有较大的潜在影响。同时,我们缺乏对FPENC地区CPI时空变化的认识。本文以乌兰察布市为例,利用Landsat TM/ETM+/OLI数据和空间自相关方法对2008 - 2017年CPI时空格局进行了测度。结果表明,CPI指数呈先上升后下降趋势,在2015年达到峰值1243。CPI的空间分布呈现出正的空间自相关,即具有非常明显的空间聚类特征。空间集聚度由2008年的0.283增加到2017年的0.526。局部空间自相关分析结果表明,乌兰察布市空间集聚格局以“高-高”集聚为主。这些结果可为制定可持续农业发展战略提供强有力的决策依据。
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