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The High Precise Optimization Algorithm and rational construct study of multi-layered feed-forward neural network

机译:多层前馈神经网络的高精度优化算法与合理构建研究

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In this paper, a High Precise Optimization Algorithm for manipulating multi-layered feed-forward neural network is studied. Its basic principle is: defining neural network average error as objective function, weights and thresholds as design variables, through design variables rationally sorted, objective function is dynamically formed. Compared the new method with BP, the optimum step-length can be not only acquired per time computing and objective function is gradually decreased, but also oscillation phenomenon can be overcome by the new algorithm. A high precision computing program of multi-layered feed-forward neural network is programmed. Rational construct of multi-layered feed-forward neural network is analyzed by optimization. Through computing neural network of typical engineering question, its validity and application prospect is showed.
机译:本文研究了一种用于操纵多层前馈神经网络的高精度优化算法。其基本原则是:将神经网络平均误差定义为客观函数,权重和阈值作为设计变量,通过设计变量合理排序,动态形成目标函数。与BP的新方法比较,最佳步长可以仅在每次计算时获取,并且客观函数逐渐降低,而且可以通过新算法克服振荡现象。编程了多层前馈神经网络的高精度计算程序。优化分析了多层前馈神经网络的合理构建。通过计算典型工程问题的神经网络,展示了其有效性和应用前景。

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