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A feed forward neural network with resolution properties for function approximation and modeling

机译:具有函数近似和建模的分辨率属性的馈送前进神经网络

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This paper attempts to the development of a novel feed forward artificial neural network paradigm. In its formulation, the hidden neurons were defined by the use of sample activation functions. The following function parameters were included: amplitude, width and translation. Further, the hidden neurons were classified as low and high resolution neurons, with global and local approximation properties, respectively. The gradient method was applied to obtain simple recursive relations for paradigm training. The results of the applications shown the interesting paradigm properties: i) easy choice of neural network size; ii) fast training); iii) strong ability to perform complicated function approximation and nonlinear modeling.
机译:本文试图开发新的饲料前进人工神经网络范式。在其制剂中,隐藏的神经元由使用样品激活功能定义。包括以下功能参数:幅度,宽度和翻译。此外,隐藏的神经元分别被归类为低和高分辨率神经元,分别具有全局和局部近似性质。应用梯度法以获得对范例培训的简单递归关系。应用结果显示了有趣的范式属性:i)简单地选择神经网络尺寸; ii)快速训练); iii)能够进行复杂函数近似和非线性建模的能力。

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