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神经网络B-P学习算法及其在含F铋系高温超导体制备中的应用
引用本文:蔡煜东,刘洪霖,甘俊人,姚林声,陈念贻. 神经网络B-P学习算法及其在含F铋系高温超导体制备中的应用[J]. 应用科学学报, 1994, 0(3)
作者姓名:蔡煜东  刘洪霖  甘俊人  姚林声  陈念贻
作者单位:中国科学院上海冶金研究所
摘    要:叙述“反向传播”神经网络的结构、算法及其在含F铋系高温超导体制备中的应用.实验结果表明神经网络的判别正确率为100%.因此,该方法可用于材料设计等高层次知识处理领域.

关 键 词:神经网络,模式识别,材料设计.

B-P LEARNING ALGORITHM OF NEURAL NETWORK AND ITS APPLICATION TO THE SYNTHESIS OF HIGH-T_c SUPERCONDUCTOR Bi-BASED DOPED F
CAI YUDONG LIU HONGLIN GAN JUNREN YAO LINSHEN CHEN NIANYI. B-P LEARNING ALGORITHM OF NEURAL NETWORK AND ITS APPLICATION TO THE SYNTHESIS OF HIGH-T_c SUPERCONDUCTOR Bi-BASED DOPED F[J]. Journal of Applied Sciences, 1994, 0(3)
Authors:CAI YUDONG LIU HONGLIN GAN JUNREN YAO LINSHEN CHEN NIANYI
Abstract:Great attention is now being paid to neural network in pattern recognitionand other fields. The structure of neural network,the back propagation algorithmfor neural network and its application to the synthesis of high-T_c superconductorBi-based doped F are presented in this paper.The experimental results show thatthe performance of the neural network model is good,and therefore the modelmay be used in material design and other fields.
Keywords:neural network   pettern recognition   material design.  
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