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The application of the Radial Basis Function Neural Network in estimation of nitrate contamination in Manawatu river

机译:径向基函数神经网络在马纳瓦图河硝酸盐污染估算中的应用

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The Radial Basis Function (RBF) Neural Network has shown its strong capability in pattern recognition, classification and function approximation problems. In this paper, the RBF neural network is used to classify different levels of nitrate contamination in river water. The planar electromagnetic sensors have been subjected to different water samples contaminated by nitrate and output signals have been extracted. These signals are derived and its suitable features are extracted by using three different features; energy, mean and skewness. These features are inputted to the RBF neural network consequently, for the classification of different levels of nitrate concentration in water. The result shows that the planar electromagnetic sensor with the assistance of the RBF neural network can be a good alternative to current laboratory testing methods.
机译:径向基函数(RBF)神经网络在模式识别,分类和函数逼近问题上显示出强大的功能。在本文中,RBF神经网络用于对河水中硝酸盐污染的不同水平进行分类。平面电磁传感器已受到硝酸盐污染的不同水样的影响,并提取了输出信号。通过使用三个不同的特征来导出这些信号并提取其合适的特征。能量,均值和偏度。这些特征被输入到RBF神经网络,以便对水中硝酸盐浓度的不同水平进行分类。结果表明,借助RBF神经网络的平面电磁传感器可以替代当前的实验室测试方法。

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