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Digital soil assessment for quantifying soil constraints to crop production: a case study for rice in Punjab, India

机译:量化土壤限制对作物生产的数字土壤评价 - 以印度旁遮普稻米稻米为例

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Assessments of land capability for particular functions such as food production need to allow for uncertainties both in the criteria used to specify the function and in information on relevant soil properties. In this paper, we evaluate the use of digital soil assessment (DSA) for dynamic assessment of soil capability allowing for both uncertainties and spatial variability in soil properties and flexibility in the values of assessment criteria. We do this for soil constraints to rice production in the state of Punjab, India, where soil salinity and alkalinity are potentially important constraints to cropping. In DSA, spatial predictions of soil properties and associated uncertainties made with digital soil mapping (DSM) are used to assess soil functions. We use a combination of DSM and Monte Carlo simulation methods to estimate the spatial variation in soil electrical conductivity (ECe) and pH to 20 cm depth in soils across Punjab. We then use the estimates and associated uncertainties to assess the likelihood that soil salinity or alkalinity or both could constrain rice production. Results show that allowing for prediction uncertainties of soil attributes results in far smaller areas affected by salinity (1.2 vs. 2.0 Mha) and alkalinity (3.0 vs. 3.2 Mha). Results also show the importance of correctly setting threshold values for constraint criteria and the flexibility of the DSA approach for setting thresholds.
机译:对粮食生产等特殊功能的土地能力评估需要允许在用于指定功能的标准和有关相关土壤性质信息的标准中允许不确定性。在本文中,我们评估了数字土壤评估(DSA)对土壤能力的动态评估,允许在评估标准的价值中进行不确定性和空间可变性。我们这为印度旁遮普邦的土壤制度进行了土壤制约,其中土壤盐度和碱度是对种植的潜在重要的限制。在DSA中,采用数字土壤映射(DSM)的土壤性质和相关不确定性的空间预测来评估土壤功能。我们使用DSM和Monte Carlo模拟方法的组合来估计旁遮普界旁遮普界横跨旁遮普地区土壤导电性(ECE)和pH至20厘米深度的空间变化。然后,我们使用估计和相关的不确定性来评估土壤盐度或碱度或两者可以限制水稻生产的可能性。结果表明,允许土壤属性的预测不确定性导致受盐度影响的远远较小区域(1.2 vs.20mHa)和碱度(3.0与3.2 mHa)。结果还显示了正确设置约束标准的阈值和DSA方法来设置阈值的重要性。

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