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Neural Network Ensemble Residual Kriging Application for Spatial Variability of Soil Properties

机译:神经网络残差克里格法在土壤性状空间变异中的应用

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摘要

High quality, agricultural nutrient distribution maps are necessary for precision management, but depend on initial soil sample analyses and interpolation techniques. To examine the methodologies for and explore the capability of interpolating soil properties based on neural network ensemble residual kriging, a silage field at Hayes, Northern Ireland, UK, was selected for this study with all samples being split into independent training and validation data sets. The training data set, comprised of five soil properties: soil pH, soil available P, soil available K, soil available Mg and soil available S, was modeled for spatial variability using 1) neural network ensemble residual kriging, 2) neural network ensemble and 3) kriging with their accuracies being estimated by means of the validation data sets. Ordinary kriging of the residuals provided accurate local estimates, while final estimates were produced as a sum of the artificial neural network (ANN) ensemble estimates and the ordinary kriging estimates of the residuals. Compared to kriging and neural network ensemble, the neural network ensemble residual kriging achieved better or similar accuracy for predicting and estimating contour maps. Thus, the results demonstrated that ANN ensemble residual kriging was an efficient alternative to the conventional geo-statistical models that were usually used for interpolation of a data set in the soil science area.
机译:高质量的农业养分分布图对于精确管理是必不可少的,但它取决于初始的土壤样品分析和内插技术。为了检查基于神经网络集成残差克里格法的土壤属性插值方法并探索其功能,本研究选择了英国北爱尔兰海斯市的青贮场,并将所有样本分为独立的训练和验证数据集。训练数据集由五种土壤属性组成:土壤pH,土壤有效磷,土壤有效钾,土壤有效镁和土壤有效硫,使用1)神经网络集成残差克里金法,2)神经网络集成和土壤动力学来模拟空间变异性。 3)通过验证数据集估算克里金法的准确性。残差的普通克里金法提供了准确的局部估计,而最终估计值是人工神经网络(ANN)集合估计值和残差的普通克里金法估计的总和。与克里金法和神经网络集成相比,神经网络集成残差克里金法在预测和估计等高线图时获得了更好或相似的精度。因此,结果表明,ANN集合残差克里金法是常规地统计学模型的有效替代方法,后者通常用于对土壤科学领域中的数据集进行插值。

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