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Data mining and application of ship impact spectrum acceleration based on PNN neural network

机译:基于PNN神经网络的船舶冲击频谱加速的数据挖掘与应用

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The selection of the smoothing coefficient of the probabilistic neural network directly affects the performance of the network. Traditionally, all the mode layer neurons use a uniform smoothing coefficient, and then the optimal smoothing parameters suitable for this problem are searched by the optimization algorithm. In this study, the smoothing coefficients of the mode layer neurons connected by the same summation layer are set to the same value, which not only reflects the relationship between the training samples of the same pattern, but also highlights the difference between the training samples of different modes. Two probabilistic neural network models are applied to the ship impact environment prediction respectively. The results show that the classification effect of multiple smoothing factors is further improved than the single smoothing factor network.
机译:概率神经网络的平滑系数的选择直接影响网络的性能。传统上,所有模式层神经元都使用均匀的平滑系数,然后通过优化算法搜索适合于该问题的最佳平滑参数。在该研究中,通过相同的求和层连接的模式层神经元的平滑系数被设置为相同的值,这不仅反映了相同模式的训练样本之间的关系,而且还突出了训练样本之间的差异不同的模式。两个概率神经网络模型分别应用于船舶影响环境预测。结果表明,多个平滑因子的分类效果比单个平滑因子网络进一步改善。

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