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Artificial neural networks and decision tree classification for predicting soil drainage classes in Denmark

机译:丹麦预测土壤排水课程的人工神经网络与决策树分类

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摘要

Soil drainage constitutes a substantial factor affecting plant growth and various biophysical processes, such as nutrient cycling and greenhouse gas fluxes. Consequently, soil drainage maps represent crucial tools for crop, forest and environmental management purposes. As extensive field surveys are time- and resource-consuming, alternative spatial modelling techniques have been previously applied for predicting soil drainage classes. The present study assessed the use of Artificial Neural Networks (ANN) for mapping soil drainage classes in Denmark and compared it to a Decision Tree Classification (DTC) technique. 1702 soil observations and 31 environmental variables, including soil and terrain parameters, and spectral indices derived from satellite images, were utilized as input data. Based on a 33% holdback validation dataset, the best performing ANN and DTC models yielded overall accuracy values of 54 and 52%, respectively. DTC models benefited from the use of all variables, but ANN models performed better after variable selection. Notably, ANN and DTC model performances were comparable although differential costs for misclassification were only implemented for DTC modelling. Nevertheless, both methods produced predictive drainage maps in accordance with one another and demonstrated promising classification abilities over a large study area (c. 43,000 km(2)).
机译:土壤排水构成影响植物生长和各种生物物理方法的实质因素,例如营养循环和温室气体通量。因此,土壤排水地图代表作物,森林和环境管理目的的关键工具。由于广泛的现场调查是时间和资源的消耗,以前已经施加了替代的空间建模技术以预测土壤排水等级。本研究评估了人工神经网络(ANN)用于在丹麦中映射土壤排水等级,并将其与决策树分类(DTC)技术进行比较。 1702土壤观察和31个环境变量,包括土壤和地形参数,以及来自卫星图像的光谱指标,用作输入数据。基于33%的负载验证数据集,最好的表演ANN和DTC模型分别产生54和52%的总体精度值。 DTC模型受益于使用所有变量,但随机选择后的ANN型号更好。值得注意的是,ANN和DTC模型性能是可比的,尽管仅用于DTC建模的差分成本仅用于分类。然而,两种方法都是根据彼此产生的预测引流图,并在大型研究区域上表现出有前途的分类能力(C.43,000km(2))。

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