摘要
研究了一种多组分型神经群网络结构.根据多元体系各变量间的内在规律,可在神经网络中由相互间具有紧密联系的一些神经元的集合形成群结构.采用这种非全连接方式的神经群网络结构,减少了连接权重,剔除了噪音,从而增强了模型稳定性,提高了X射线荧光光谱预测准确度,显著增加了神经网络的外推预测能力。
A neural cluster structure with multiple component prediction based on back error propagation was proposed. The neural cluster structure is the collection of a group of the neurons that have the close relationship among one another in the neural network. Compared with the classical multiple component prediction based on back error propagation, the stability of the neural cluster structure with disturbance factors increases. Its prediction accuracy to unknown samples and to outlier improves significantly. The structure decreases also the number needful to real standard samples.
出处
《分析科学学报》
CAS
CSCD
1998年第3期177-182,共6页
Journal of Analytical Science
基金
国家自然科学基金
地质行业科学技术发展基金
关键词
神经网络
X射线荧光光谱
神经群
XRF
Neural network, X-ray fluorescence spectrometry, Neural cluster