首页> 外文会议>Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications, 2009. IDAACS 2009 >Topology and parameter optimization of ANN using genetic algorithm for application of textiles
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Topology and parameter optimization of ANN using genetic algorithm for application of textiles

机译:基于遗传算法的人工神经网络拓扑和参数优化在纺织中的应用

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The BP feed-forward neural network is popular in solving many non-linear multivariate and complex problems. The most important problem with neural network is to decide optimal structure and parameter settings. Literature presents a multitude of methods but there is no rigorous and accurate analytical method. This paper presents the hybrid approach of genetic algorithm and neural network computing for establishment of the optimum number of neurons on layers, transfer functions, learning rate, momentum and number of epochs for a given problem. The method can be used without restrictions to model a network with many inputs and outputs. The process involves GA evolving several structures, different parameters and fitness level of each structure. GA decides fitness using neural network as the fitness function. This technique can help to eliminate trial and error work for deciding the optimal network. The proposed Neuron-Genetic classifier has been successfully applied for prediction of yarn properties in spinning process of Textile industry.
机译:BP前馈神经网络在解决许多非线性多元和复杂问题中很流行。神经网络最重要的问题是确定最佳的结构和参数设置。文献提供了多种方法,但是没有严格而准确的分析方法。本文提出了遗传算法和神经网络计算的混合方法,用于确定给定问题的层上神经元的最佳数量,传递函数,学习率,动量和历元数。可以不受限制地使用该方法来对具有许多输入和输出的网络进行建模。该过程涉及GA演变几个结构,每个结构的不同参数和适用性级别。 GA使用神经网络作为适应度函数来决定适应度。该技术可以帮助消除用于确定最佳网络的反复试验工作。提出的神经元遗传分类器已成功应用于纺织工业纺纱过程中纱线性能的预测。

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