Modeling the spatial distribution of soil heavy metals is important in determining the safety of contaminated soils for agricultural use. This study utilized 60 topsoil samples (0 - 30 cm), multispectral images (Senti...Modeling the spatial distribution of soil heavy metals is important in determining the safety of contaminated soils for agricultural use. This study utilized 60 topsoil samples (0 - 30 cm), multispectral images (Sentinel-2), spectral indices, and ancillary data to model the spatial distribution of heavy metals in the soils along the Nairobi River. The model was generated using the Random Forest package in R. Using R2 to assess the prediction accuracy, the Random Forest model generated satisfactory results for all the elements. It also ranked the variables in order of their importance in the overall prediction. Spectral indices were the most important variables within the rankings. From the predicted topsoil maps, there were high concentrations of Cadmium on the easterly end of the river. Cadmium is an impurity in detergents, and this section is in close proximity to the Nairobi water sewerage plant, which could be a direct source of Cadmium. Some farms had Zinc levels which were above the World Health Organization recommended limit. The Random Forest model performed satisfactorily. However, the predictions can be improved further if the spatial resolutions of the various variables are increased and through the addition of more predictor variables.展开更多
【目的】耒阳市滑坡灾害频发,对人民生命财产和生态安全构成严重威胁。为提高滑坡易发性评价的精度,【方法】以湖南省耒阳市为研究区,构建信息量模型(information value model,IV)与随机森林模型(random forest,RF)耦合的IV-RF模型,引...【目的】耒阳市滑坡灾害频发,对人民生命财产和生态安全构成严重威胁。为提高滑坡易发性评价的精度,【方法】以湖南省耒阳市为研究区,构建信息量模型(information value model,IV)与随机森林模型(random forest,RF)耦合的IV-RF模型,引入空间约束采样策略优化负样本选取策略,开展滑坡易发性评价。通过ROC曲线和AUC值对3种模型进行对比分析,同时提出综合性能指数用于综合评价模型表现。【结果】1)IV-RF耦合模型表现优于单一模型,AUC=0.952,综合性能指数(Accuracy+F1+MCC)为2.593。极高-高易发区滑坡点分布密集,极低-低易发区滑坡点极少,验证模型具有较高的空间预测精度。2)工程地质岩组因子是影响研究区滑坡发育最重要的评价因子之一。【结论】IV-RF耦合模型结合IV的数据定量解译与RF的非线性识别能力,可有效提升模型识别精度,研究结果可为研究区滑坡灾害风险防控、水土保持和国土空间规划提供科学依据。展开更多
文摘Modeling the spatial distribution of soil heavy metals is important in determining the safety of contaminated soils for agricultural use. This study utilized 60 topsoil samples (0 - 30 cm), multispectral images (Sentinel-2), spectral indices, and ancillary data to model the spatial distribution of heavy metals in the soils along the Nairobi River. The model was generated using the Random Forest package in R. Using R2 to assess the prediction accuracy, the Random Forest model generated satisfactory results for all the elements. It also ranked the variables in order of their importance in the overall prediction. Spectral indices were the most important variables within the rankings. From the predicted topsoil maps, there were high concentrations of Cadmium on the easterly end of the river. Cadmium is an impurity in detergents, and this section is in close proximity to the Nairobi water sewerage plant, which could be a direct source of Cadmium. Some farms had Zinc levels which were above the World Health Organization recommended limit. The Random Forest model performed satisfactorily. However, the predictions can be improved further if the spatial resolutions of the various variables are increased and through the addition of more predictor variables.
文摘【目的】耒阳市滑坡灾害频发,对人民生命财产和生态安全构成严重威胁。为提高滑坡易发性评价的精度,【方法】以湖南省耒阳市为研究区,构建信息量模型(information value model,IV)与随机森林模型(random forest,RF)耦合的IV-RF模型,引入空间约束采样策略优化负样本选取策略,开展滑坡易发性评价。通过ROC曲线和AUC值对3种模型进行对比分析,同时提出综合性能指数用于综合评价模型表现。【结果】1)IV-RF耦合模型表现优于单一模型,AUC=0.952,综合性能指数(Accuracy+F1+MCC)为2.593。极高-高易发区滑坡点分布密集,极低-低易发区滑坡点极少,验证模型具有较高的空间预测精度。2)工程地质岩组因子是影响研究区滑坡发育最重要的评价因子之一。【结论】IV-RF耦合模型结合IV的数据定量解译与RF的非线性识别能力,可有效提升模型识别精度,研究结果可为研究区滑坡灾害风险防控、水土保持和国土空间规划提供科学依据。