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Application of RBF neural network optimized globally by genetic algorithm in intelligent color matching of wood dyeing

机译:RBF神经网络在遗传算法在木质染色智能色彩匹配中的应用全球优化

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摘要

In practical application, the parameters of RBF neural network are 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 genetic algorithm to optimize the centers and the widths of hidden nodes and the connection weights between hidden layer and output layer of RBF neural network globally. In contrast to optimizing RBF neural network by genetic algorithm partially, each generation group contains the whole parameters of RBF neural network. The fitness value of each individual is calculated by the adaptive function. The optimal individual is obtained by selecting, crossover and mutation by genetic algorithm. The optimal parameters are chosen as initial value of RBF neural network. According to the characteristics of wood dyeing, a predictive model of pigment formula for wood dyeing based on RBF neural network is proposed. 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 optimized globally by genetic algorithm is only 0.87% in 20 generations. Therefore, the convergence rate and approximation precision of the RBF neural network are improved significantly.
机译:在实际应用中,RBF神经网络的参数难以确定。通常,我们需要根据经验和先验知识进行多次测试,这缺乏关于理论基础的严格设计程序。我们也不知道RBF神经网络是否正在收敛。本文提出了一种遗传算法,优化隐藏节点的中心和宽度和全球RBF神经网络的隐藏层和输出层之间的连接权重。与部分地通过遗传算法优化RBF神经网络,每个Generation组包含RBF神经网络的整个参数。通过自适应功能计算每个单独的适应值。通过通过遗传算法选择,交叉和突变获得最佳个体。选择最佳参数作为RBF神经网络的初始值。根据木染色的特点,提出了一种基于RBF神经网络的木材染色色素配方的预测模型。原始RBF神经网络的平均相对误差是158时代的1.55%。然而,通过遗传算法全球优化的RBF神经网络的平均相对误差仅为20世代仅为0.87%。因此,RBF神经网络的收敛速率和近似精度显着提高。

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