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Spatial prediction of saline and sodic soils in rice-shrimp farming land by using integrated artificial neural network/regression model and kriging

机译:用综合人工神经网络/回归模型和克里格用稻虾养土壤盐水和肥皂土的空间预测

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摘要

In the context of widespread saline and sodic soil, mapping and monitoring spatial distribution of soil salinity and sodicity are important for utilization and management in agriculture lands. In this study, two-stage assessment was proposed to predict spatial distribution of saline and sodic soils. First, artificial neural network (ANN) and multiple linear regressions (MLR) model were used to predict sodium adsorption ratio (SAR) and exchangeable sodium percentage (ESP) based on soil electrical conductivity (EC) and pH. Then, the Kriging interpolation method combined with overlay mapping technique was used to perform saline spatial predictions in the study area. The model accuracy level is evaluated based on coefficient of determination (R-2) and root mean square error (RMSE). In the first stage, the values of R-2 and RMSE of SAR and ESP were 0.94, 0.17 and 0.94, 0.24 for ANN, and 0.35, 0.52 and 0.34, 0.76 for MLR, respectively. Similarly, in the second stage, the RMSE of ANN-Kriging were much closer to 0 and relatively lower than MLR-Kriging and Kriging. The results show that ANN-Kriging can be used to improve the accuracy of mapping and monitoring spatial distribution of saline and sodic soil in areas that develop the rice-shrimp cultivation model.
机译:在广泛的盐水和碳化土壤的背景下,土壤盐度的测绘和监测空间分布对于农业土地的利用和管理是重要的。在这项研究中,提出了两阶段评估来预测盐水和碳化土壤的空间分布。首先,人工神经网络(ANN)和多元线性回归(MLR)模型用于预测基于土壤导电性(EC)和pH的可交换率(SAR)和可交换钠百分比(ESP)。然后,使用与覆盖映射技术组合的Kriging插值方法用于在研究区域中进行盐水空间预测。基于确定系数(R-2)和根均方误差(RMSE)来评估模型精度等级。在第一阶段,SAR和ESP的R-2和RMSE的值分别为0.94,0.17和0.94,0.24,分别为0.35,0.52和0.34,0.76。类似地,在第二阶段,Ann-Kriging的RMSE比MLR-Kriging和Kriging更接近0并且相对低得多。结果表明,Ann-Kriging可用于提高制图和监测开发水稻 - 虾栽培模型的地区盐水和肥皂土的空间分布的准确性。

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