首页> 外文会议>International Workshop on Geographical Information System; 20070914-15; Beijing(CN) >Soil Property Mapping Using Fuzzy Membership Derived by Fuzzy C-Means (fcm) Clustering
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Soil Property Mapping Using Fuzzy Membership Derived by Fuzzy C-Means (fcm) Clustering

机译:基于模糊C均值(fcm)聚类的模糊隶属度的土壤属性映射

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This paper explores the use of fuzzy membership values generated by fuzzy c-means clustering (FCM) method to predict soil properties over space. A weighted average model was used on fuzzy membership to get soil properties. To validate the efficiency of this model, it was then compared with a multiple linear regression model between the soil property and terrain attributes. Four indices were calculated to evaluate the performance of these two models:correlation coefficient between predicted and observed values, mean absolute error (MAE), root mean square (RMSE) and agreement coefficient (AC). The research was tested in a watershed located in Heilongjiang province China. Two soil properties were chosen: A-horizon organic matter and soil depth. The results showed that the fuzzy membership weighted model produced reasonably better performance than the regression model by using the same modeling points, while linear regression models were limited in the study area. Although the R2 of regression functions were very high, the functions constructing by modeling points may not suit for other points of the area.Therefore, we can conclude that weighted average model using fuzzy membership was an effective way to predict soil properties, and it is more extrapolatable than the regression approach.
机译:本文探讨了利用模糊c均值聚类(FCM)方法生成的模糊隶属度值来预测空间上的土壤特性。对模糊隶属度使用加权平均模型获得土壤性质。为了验证该模型的有效性,然后将其与土壤属性和地形属性之间的多元线性回归模型进行了比较。计算了四个指标来评估这两个模型的性能:预测值和观察值之间的相关系数,平均绝对误差(MAE),均方根(RMSE)和一致性系数(AC)。该研究在中国黑龙江省的一个分水岭上进行了测试。选择了两个土壤属性:水平有机质和土壤深度。结果表明,使用相同的建模点,模糊隶属度加权模型产生的性能比回归模型好得多,而线性回归模型在研究区域中受到限制。尽管回归函数的R2很高,但通过建模点构建的函数可能不适合该区域的其他点,因此,我们可以得出结论,使用模糊隶属度的加权平均模型是预测土壤性质的有效方法,它是比回归方法更可推断。

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