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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Using machine learning to predict soil bulk density on the basis of visual parameters: Tools for in-field and post-field evaluation
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Using machine learning to predict soil bulk density on the basis of visual parameters: Tools for in-field and post-field evaluation

机译:使用机器学习在视觉参数的基础上预测土壤堆积密度:用于现场的工具和场地场地评估

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摘要

Soil structure is a key factor that supports all soil functions. Extracting intact soil cores and horizon specific samples for determination of soil physical parameters (e.g. bulk density (B-d) or particle size distribution) is a common practice for assessing indicators of soil structure. However, these are often difficult to measure, since they require expensive and time consuming laboratory analyses. Our aim was to provide tools, through the use of machine learning techniques, to estimate the value of B-d based solely on soil visual assessment, observed by operators directly in the field. The first tool was a decision tree model, derived through a decision tree learning algorithm, which allows discrimination among three B-d ranges. The second tool was a linear equation model, derived through a linear regression algorithm, which predicts the numerical value of soil B-d. These tools were validated on a dataset of 471 soil horizons, belonging to 201 soil profile pits surveyed in Ireland. Overall, the decision tree model showed an accuracy of similar to 60%, while the linear equation model has a correlation coefficient of about 0.65 compared to the measured B-d values. For both models, the most relevant property affecting soil structural quality appears to be the humic characteristics of the soil, followed by soil porosity and pedogenic formation. The two tools are parsimonious and can be used by soil surveyors and analysts who need to have an approximate in-situ estimate of the structural quality for various soil functional applications.
机译:土壤结构是支持所有土壤功能的关键因素。提取完整的土壤核和地平线特异性样品用于测定土壤物理参数(例如,堆积密度(B-D)或粒度分布)是评估土壤结构指标的常见实践。然而,这些通常难以测量,因为它们需要昂贵且耗时的实验室分析。我们的目标是通过使用机器学习技术提供工具,以估计基于土壤视觉评估的B-D的价值,由经营者直接在现场观察。第一工具是通过决策树学习算法导出的决策树模型,其允许三个B-D范围之间的判别。第二工具是一种线性等式模型,通过线性回归算法导出,其预测土壤B-D的数值。这些工具在471个土壤视野的数据集上验证,属于爱尔兰调查的201土地剖面坑。总的来说,决策树模型显示了类似于60%的精度,而线性方程模型与测量的B-D值相比具有约0.65的相关系数。对于这两种模型,影响土壤结构质量的最相关的性质似乎是土壤的腐殖质特征,其次是土壤孔隙率和基础形成。这两种工具有所解放,可以由需要对各种土壤功能应用的结构质量进行大致估计的土壤测量师和分析师使用。

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