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Topsoil Pollution Forecasting Using Artificial Neural Networks on the Example of the Abnormally Distributed Heavy Metal at Russian Subarctic

机译:俄罗斯亚科尔在异常分布的重金属上使用人工神经网络的表土污染预测

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Forecasting the soil pollution is a considerable field of study in the light of the general concern of environmental protection issues. Due to the variation of content and spatial heterogeneity of pollutants distribution at urban areas, the conventional spatial interpolation models implemented in many GIS packages mostly cannot provide appreciate interpolation accuracy. Moreover, the problem of prediction the distribution of the element with high variability in the concentration at the study site is particularly difficult. The work presents two neural networks models forecasting a spatial content of the abnormally distributed soil pollutant (Cr) at a particular location of the subarctic Novy Urengoy, Russia. A method of generalized regression neural network (GRNN) was compared to a common multilayer perceptron (MLP) model. The proposed techniques have been built, implemented and tested using ArcGIS and MATLAB. To verify the models performances, 150 scattered input data points (pollutant concentrations) have been selected from 8.5 km2 area and then split into independent training data set (105 points) and validation data set (45 points). The training data set was generated for the interpolation using ordinary kriging while the validation data set was used to test their accuracies. The networks structures have been chosen during a computer simulation based on the minimization of the RMSE. The predictive accuracy of both models was confirmed to be significantly higher than those achieved by the geostatistical approach (kriging). It is shown that MLP could achieve better accuracy than both kriging and even GRNN for interpolating surfaces.
机译:根据环境保护问题的一般关注,预测土壤污染是一项相当大的研究领域。由于城市地区污染物分布的含量和空间异质性的变化,在许多GIS包中实现的传统空间插值模型主要不能提供欣赏插值准确性。此外,预测在研究现场浓度浓度的高变异性的元素的分布特别困难。该工作提出了两个神经网络模型,预测了俄罗斯省北诺腾州Urengoy的特定位置的异常分布的土壤污染物(Cr)的空间含量。将广义回归神经网络(GRNN)的方法与普通多层的Perceptron(MLP)模型进行了比较。使用ArcGIS和MATLAB建立,实现和测试所提出的技术。为了验证模型性能,150个散射的输入数据点(污染物浓度)已选中从8.5 KM2区域,然后分成独立训练数据集(105分)和验证数据集(45分)。使用普通Kriging生成训练数据集,而验证数据集用于测试其精度。基于RMSE的最小化,在计算机仿真期间选择了网络结构。两种模型的预测准确性被证实明显高于地质统计方法(Kriging)所实现的精度。结果表明,MLP可以实现比Kriging甚至Grnn用于内插表面的更好的精度。

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