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Evaluation of Different Machine Learning Models for Predicting Soil Erosion in Tropical Sloping Lands of Northeast Vietnam

机译:不同机器学习模型预测东北越南热带倾斜地区土壤侵蚀的不同机器学习模型

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Soil erosion induced by rainfall under prevailing conditions is a prominent problem to farmers in tropical sloping lands of Northeast Vietnam. This study evaluates possibility of predicting erosion status by machine learning models, including fuzzy k-nearest neighbor (FKNN), artificial neural network (ANN), support vector machine (SVM), least squares support vector machine (LSSVM), and relevance vector machine (RVM). Model evaluation employed a historical dataset consisting of ten explanatory variables and soil erosion featured four different land use managements on hillslopes in Northwest Vietnam. All 236 data samples representing soil erosion/nonerosion events were randomly prepared (80% for training and 20% for testing) to assess the robustness of the five models. This subsampling process was repeatedly carried out by 30 rounds to eliminate the issue of randomness in data selection. Classification accuracy rate (CAR) and area under receiver operating characteristic (AUC) were used to evaluate performance of the five models. Significant difference between different algorithms was verified by the Wilcoxon test. Results of the study showed that RVM model achieves the best outcomes in both training (CAR?=?92.22% and AUC?=?0.98) and testing phases (CAR?=?91.94% and AUC?=?0.97). Four other learning algorithms also demonstrated good performance as indicated by their CAR values surpassing 80% and AUC values greater than 0.9. Hence, these results strongly confirm the efficacy of applying machine learning models for soil erosion prediction.
机译:普遍规定降雨诱导的土壤侵蚀是东北越南热带倾斜地区的农民突出的问题。本研究评估了通过机器学习模型预测侵蚀状态的可能性,包括模糊K最近邻(FKNN),人工神经网络(ANN),支持向量机(SVM),最小二乘支持向量机(LSSVM)和相关矢量机(rvm)。模型评估采用了由十个解释性变量和土壤侵蚀组成的历史数据集,在越南西北部的Hillslopes上有四种不同的土地使用管理。所有236个代表土壤侵蚀/不生活事件的数据样本都是随机准备的(80%的训练和20%用于测试),以评估五种模型的稳健性。该子采样过程重复进行30轮,以消除数据选择中的随机性问题。接收器操作特性(AUC)下的分类精度(汽车)和面积用于评估五种模型的性能。通过Wilcoxon测试验证了不同算法之间的显着差异。研究结果表明,RVM模型在训练中获得了最佳成果(汽车?=?= 92.22%和AUC?=?0.98)和测试阶段(汽车?=?= 91.94%和AUC?= 0.97)。另外四种学习算法还表现出良好的性能,如其高于0.9的80%和AUC值所示。因此,这些结果强烈证实了应用机器学习模型对土壤侵蚀预测的功效。

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