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Identifying sources of soil classes variations with digital soil mapping approaches in the Shahrekord plain, Iran

机译:使用伊朗Shahrekord平原的数字土壤制图方法识别土壤类别变化的来源

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Mapping the spatial distribution of soil classes is useful for proper soil and land-use management. This study investigates the ability of different digital soil mapping (DSM) approaches to predict taxonomic classes up to the family level in the Shahrekord plain of Chaharmahal-Va-Bakhtiari province, Iran. A total of 120 pedons were dug at various map units of a semi-detailed soil map with 750-m intervals. After pedons description, soil samples were taken from different genetic horizons. Based on the pedon descriptions and soil analytical data, pedons were classified up to the family level. Different machine learning techniques such as artificial neural networks, boosted regression tree, random forest and multinomial logistic regression were used to test the predictive power for mapping the soil classes. Overall accuracy (OA), adjusted kappa index and brier scores (BS) were used to determine the accuracy of the prediction. The model with the highest OA (i.e., the highest adjusted kappa) and the lowest BS values was considered as the most accurate model for each soil taxonomic level. Results showed that the different models had the same ability for the prediction of the soil classes across all taxonomic levels while a considerable decreasing trend was observed for their accuracy at subgroup and family levels. The terrain attributes were the most important environmental covariates to predict the soil classes in all taxonomic levels, but they could not display the soil variation entirely. This shows that the unexplained variations are controlled by unobserved variations in environment, which can be due to management over the time. Results suggest that the DSM approaches have not enough prediction accuracy for the soil classes at lower taxonomic levels that focus on the soil properties affecting land use and management. Further studies may still be required to distinguish new environmental covariates and introduce new tools to capture the complex nature of soils.
机译:绘制土壤类别的空间分布图对于适当的土壤和土地利用管理非常有用。这项研究调查了不同的数字土壤测绘(DSM)方法预测伊朗Chaharmahal-Va-Bakhtiari省Shahrekord平原直至家庭水平的生物分类的能力。在半详细的土壤图的各个图单元上以750 m的间隔挖掘了总共120个脚踏板。在描述脚钉之后,从不同的遗传视野中采集土壤样品。根据脚钉的描述和土壤分析数据,将脚钉分类到家庭级别。各种不同的机器学习技术(例如人工神经网络,增强回归树,随机森林和多项逻辑回归)被用来测试对土壤类别进行映射的预测能力。总体准确性(OA),调整后的kappa指数和brier分数(BS)用于确定预测的准确性。具有最高OA(即,最高调整kappa)和最低BS值的模型被认为是每种土壤分类学水平的最准确模型。结果表明,不同模型在所有分类学水平上具有相同的土壤类别预测能力,而在亚组和家庭水平上,其准确性却有相当大的下降趋势。地形属性是在所有分类学水平上预测土壤类别的最重要的环境协变量,但它们不能完全显示土壤变化。这表明无法解释的变化受环境中未观察到的变化控制,这可能是由于一段时间内的管理所致。结果表明,DSM方法对于较低分类标准的土壤类别(其重点在于影响土地利用和管理的土壤特性)的预测准确性不足。仍可能需要进一步研究以区分新的环境协变量并引入新的工具来捕获土壤的复杂性质。

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