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首页> 外文期刊>Chaos, Solitons and Fractals: Applications in Science and Engineering: An Interdisciplinary Journal of Nonlinear Science >Application of RBF neural network improved by peak density function in intelligent color matching of wood dyeing
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Application of RBF neural network improved by peak density function in intelligent color matching of wood dyeing

机译:峰值密度函数改进的RBF神经网络在木材染色智能配色中的应用。

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摘要

According to the characteristics of wood dyeing, we propose a predictive model of pigment formula for wood dyeing based on Radial Basis Function (RBF) neural network. In practical application, however, it is found that the number of neurons in the hidden layer of RBF neural network is difficult to determine. In general, we need to test several times according to experience and prior knowledge, which is lack of a strict design procedure on theoretical basis. And we also don't know whether the RBF neural network is convergent. This paper proposes a peak density function to determine the number of neurons in the hidden layer. In contrast to existing approaches, the centers and the widths of the radial basis function are initialized by extracting the features of samples. So the uncertainty caused by random number when initializing the training parameters and the topology of RBF neural network is eliminated. The average relative error of the original RBF neural network is 1.55% in 158 epochs. However, the average relative error of the RBF neural network which is improved by peak density function is only 0.62% in 50 epochs. Therefore, the convergence rate and approximation precision of the RBF neural network are improved significantly. (C) 2016 Elsevier Ltd. All rights reserved.
机译:根据木材染色的特点,提出基于径向基函数神经网络的木材染色颜料配方预测模型。然而,在实际应用中,发现难以确定RBF神经网络隐藏层中的神经元数量。通常,我们需要根据经验和先验知识进行多次测试,这在理论上缺乏严格的设计程序。而且我们也不知道RBF神经网络是否收敛。本文提出了一个峰值密度函数,以确定隐藏层中神经元的数量。与现有方法相反,通过提取样本特征来初始化径向基函数的中心和宽度。因此,消除了初始化训练参数时随机数引起的不确定性以及RBF神经网络的拓扑。原始RBF神经网络的平均相对误差在158个纪元内为1.55%。然而,通过峰密度函数改善的RBF神经网络的平均相对误差在50个纪元中仅为0.62%。因此,RBF神经网络的收敛速度和逼近精度显着提高。 (C)2016 Elsevier Ltd.保留所有权利。

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