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A COM-Based Decision Tree Model Integrated with GIS for Assessment of Soil Heavy Metals Pollution

机译:基于COM的GIS结合决策树模型评价土壤重金属污染。

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A COM-based decision tree model was integrated with Geographical Information Systems (GIS) to assess the soil Cu pollution in Fuyang, Zhejiang, China. The integration of the decision tree model with ArcGIS Engine 9.2 using a COM implementation in Microsoft® Visual Basic 6.0 provided an approach for assessing the spatial distribution of soil Cu content with high predictive accuracy. The decision tree model (CART) accuracy of assigning samples to the right Cu classes is 85.37% and 82.00%, the Kappa coefficient is 0.8182 and 0.7698 respectively for training data and test data. This is a great improvement comparing with ordinary Kriging method for the spatial autocorrelation of the study area severely destroyed by human activities. The integrated approach also allows for relatively easy, fast, and cost-effective estimation of spatially distributed soil heavy metals pollution. The methods and results described in this study are also valuable for understanding the relationship between heavy metals pollution risk and environmental factors.
机译:将基于COM的决策树模型与地理信息系统(GIS)集成在一起,以评估中国浙江富阳市的土壤铜污染。使用Microsoft®Visual Basic 6.0中的COM实现将决策树模型与ArcGIS Engine 9.2集成在一起,提供了一种以较高的预测精度评估土壤Cu含量的空间分布的方法。将样本分配给正确的Cu类的决策树模型(CART)的准确性为85.37%和82.00%,训练数据和测试数据的Kappa系数分别为0.8182和0.7698。与普通的克里格方法相比,这对于人类活动严重破坏的研究区域的空间自相关具有很大的改进。集成方法还可以相对容易,快速且经济高效地估算空间分布的土壤重金属污染。这项研究中描述的方法和结果对于理解重金属污染风险与环境因素之间的关系也很有价值。

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