应用田口方法和DoE的人工神经网络稳健设计

J. Ortiz-Rodríguez, M. R. Martinez-Blanco, H. Vega-Carrillo
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引用次数: 27

摘要

人工神经网络与优化的结合为设计鲁棒网络参数和提高网络性能提供了工具。与传统的试错神经网络设计方法相比,田口方法在时间和精度上都有很大的优势。本文研究了用反向传播算法训练的多层前馈神经网络的鲁棒性设计,并提出了一种系统的实验策略,强调在各种噪声条件下同时优化人工神经网络的参数优化。并将该方法与传统训练方法进行了比较。田口方法在评估网络行为方面具有潜在的优势,值得关注
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Robust Design of Artificial Neural Networks Applying the Taguchi methodology and DoE
The integration of artificial neural networks and optimization provides a tool for designing robust network parameters and improving their performance. The Taguchi method offers considerable benefits in time and accuracy when is compared with the conventional trial and error neural network design approach. This work is concerned with the robust design of multilayer feedforward neural networks trained by backpropagation algorithm and develops a systematic and experimental strategy which emphasizes simultaneous optimization artificial neural network's parameters optimization under various noise conditions. We make a comparison among this method and conventional training methods. The attention is drawing on the advantages on Taguchi methods which offer potential benefits in evaluating the network behavior
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