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Spatial structure, parameter nonlinearity, and intelligent algorithms in constructing pedotransfer functions from large-scale soil legacy data

机译:空间结构,参数非线性和智能算法构建大规模土壤传统数据的Pedotransfer功能

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Pedotransfer function (PTF) approach is a convenient way for estimating difficult-to-measure soil properties from basic soil data. Typically, PTFs are developed using a large number of samples collected from small (regional) areas for training and testing a predictive model. National soil legacy databases offer an opportunity to provide soil data for developing PTFs although legacy data are sparsely distributed covering large areas. Here, we examined the Indian soil legacy (ISL) database to select a comprehensive training dataset for estimating cation exchange capacity (CEC) as a test case in the PTF approach. Geostatistical and correlation analyses showed that legacy data entail diverse spatial and correlation structure needed in building robust PTFs. Through non-linear correlation measures and intelligent predictive algorithms, we developed a methodology to extract an efficient training dataset from the ISL data for estimating CEC with high prediction accuracy. The selected training data had comparable spatial variation and nonlinearity in parameters for training and test datasets. Thus, we identified specific indicators for constructing robust PTFs from legacy data. Our results open a new avenue to use large volume of existing soil legacy data for developing region-specific PTFs without the need for collecting new soil data.
机译:PEDOT转移功能(PTF)方法是一种方便的方法,用于估算来自基本土壤数据的难以测量的土壤性质。通常,使用从小(区域)区域收集的大量样本来开发PTF,用于训练和测试预测模型。国家土壤遗留数据库提供了为开发PTF提供土壤数据的机会,尽管传统数据稀疏地分布覆盖大区域。在这里,我们检查了印度土壤遗留(ISL)数据库,选择了一个综合训练数据集,用于估算PTF方法中的测试用例。地质统计和相关分析表明,遗留数据需要建立强大的PTF所需的不同空间和相关结构。通过非线性相关措施和智能预测算法,我们开发了一种方法来从ISL数据中提取高效训练数据集,以估计具有高预测精度的CEC。所选培训数据在训练和测试数据集的参数中具有可比的空间变化和非线性。因此,我们确定了从传统数据构建稳健的PTF的特定指标。我们的成果开设了新的途径,以利用大量现有的土壤遗留数据,用于开发特定地区的PTF,而无需收集新的土壤数据。

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