人工神经网络
初始化
遗传算法
渡线
算法
反向传播
计算机科学
能量(信号处理)
数学
人工智能
统计
机器学习
程序设计语言
作者
王俊,Mingzhe Liu,庹先国,Zhe Li,李磊,石睿
出处
期刊:《核技术》(英文版)
日期:2014-06-11
卷期号:25 (3): 30203-030203
被引量:1
标识
DOI:10.13538/j.1001-8042/nst.25.030203
摘要
In energy dispersive X-ray fiuorescence(EDXRF), quantitative elemental content analysis becomes difficult due to the existence of the noise, the spectrum peak superposition, element matrix effect, etc. In this paper, a hybrid approach of genetic algorithm(GA) and back propagation(BP) neural network is proposed without considering the complex relationship between the elemental content and peak intensity. The aim of GA-optimized BP is to get better network initial weights and thresholds. The starting point of this approach is that the reciprocal of the mean square error of the initialization BP neural network is set as the fitness value of the individuals in GA; and the initial weights and thresholds are replaced by individuals, then the optimal individual is searched by selecting, crossover and mutation operations, finally a new BP neural network model is established with the optimal initial weights and thresholds. The quantitative analysis results of titanium and iron contents in five types of mineral samples show that the relative errors of 76.7% samples are below 2%, compared to chemical analysis data, which demonstrates the effectiveness of the proposed method.更多还原
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