Spatial data mining for predicting of unobserved zinc pollutant using ordinary point Kriging

A. A. Gunawan, A. N. Falah, Alfensi Faruk, D. S. Lutero, B. N. Ruchjana, A. S. Abdullah
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引用次数: 7

Abstract

Due to pollution over many years, large amounts of heavy metal pollutant can be accumulated in the rivers. In the research, we would like to predict the dangerous region around the river. For study case, we use the Meuse river floodplains which are contaminated with zinc (Zn). Large zinc concentrations can cause many health problems, for example vomiting, skin irritations, stomach cramps, and anaemia. However there is only few sample data about the zinc concentration of Meuse river, thus the missing data in unknown regions need to be generated. The aim of this research is to study and to apply spatial data mining to predict unobserved zinc pollutant by using ordinary point Kriging. By mean of semivariogram, the variability pattern of zinc can be captured. This captured model will be interpolated to predict the unknown regions by using Kriging method. In our experiments, we propose ordinary point Kriging and employ several semivariogram: Gaussian, Exponential and Spherical models. The experimental results show that: (i) by calculating the minimum error sum of squares, the fittest theoretical semivariogram models is exponential model (ii) the accuracy of the predictions can be confirmed visually by projecting the results to the map.
常点克里格法预测未观测锌污染物的空间数据挖掘
由于多年的污染,河流中积累了大量的重金属污染物。在研究中,我们希望对河流周围的危险区域进行预测。以锌污染严重的默兹河漫滩为研究对象。高浓度的锌会导致许多健康问题,例如呕吐、皮肤刺激、胃痉挛和贫血。但由于默兹河锌浓度的样本数据较少,需要生成未知区域的缺失数据。本研究的目的是研究并应用空间数据挖掘方法,利用常点克里格法对未观测到的锌污染物进行预测。利用半变异函数,可以捕捉到锌的变化规律。对捕获的模型进行插值,利用克里格法预测未知区域。在我们的实验中,我们提出了常点克里格,并采用了几种半变异函数:高斯模型、指数模型和球面模型。实验结果表明:(1)通过计算最小误差平方和,拟合的理论半变异函数模型为指数模型;(2)将结果投影到地图上,可以直观地证实预测的准确性。
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