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首页> 外文期刊>Journal of Earthquake Engineering >Hybrid Evolutionary-Neural Network Approach in Generation of Artificial Accelerograms Using Principal Component Analysis and Wavelet-Packet Transform
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Hybrid Evolutionary-Neural Network Approach in Generation of Artificial Accelerograms Using Principal Component Analysis and Wavelet-Packet Transform

机译:主成分分析和小波包变换的人工加速度计混合进化神经网络方法

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摘要

A novel hybrid evolutionary neural network method to generate multiple spectrum-compatible artificial earthquake accelerograms (SCAEAs) is presented. Genetic algorithm is employed to optimize the weight values of networks. In order to improve the training efficiency, principal component analysis along with some other reduction techniques are used. The proposed evolutionary neural network develops an inverse mapping from compacted and reduced spectrum coefficients to the metamorphosed accelerogram's wavelet packet coefficients. As compared to the traditional methods, our algorithm is capable of generating an ensemble of dissimilar 10, 20, 30, and 40 s SCAEAs with better spectrum-compatibility and diversity, and proper computational efforts.
机译:提出了一种新的混合进化神经网络方法,用于生成多个频谱兼容的人工地震加速度图(SCAEA)。采用遗传算法优化网络权重。为了提高训练效率,使用了主成分分析以及其他一些归约技术。所提出的进化神经网络开发了从压缩和缩减频谱系数到变形加速度计的小波包系数的逆映射。与传统方法相比,我们的算法能够生成10、20、30和40 s SCAEA相异的集合,具有更好的频谱兼容性和多样性,并具有适当的计算能力。

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