摘要
用火花直读光谱法测定钢中不同状态的铝是目前研究的热点之一。本文确立了直读光谱法的分析条件,将人工神经网络用于直读光谱法,用直读光谱的全铝光谱强度值作为网络的输入,标样中的酸溶铝值作为期望值,建立神经网络模型,用神经网络直读光谱法测定中低合金钢中酸溶铝含量,分析结果的准确度与化学分析法基本一致。神经网络使用改进的BP算法,避免了学习过程可能产生的麻痹现象,提出了目标向量的简单变换方法。该法用于钢中酸溶铝的直接测定,获得满意结果。
Analysts are always concerned with the analysis of aluminum state in steel. In this paper, the analytical conditions of aluminum by direct-reading spectrography were established, and artificial neural network (ANN) has been applied to sparkle direct-reading spectrography. The intensities of sparkle direct-reading spectrography were used as the input and the acid-solved aluminum values of standard samples as expected values in the ANN model, and the acid-solved aluminium in alloy steel was determined by ANN-sparkle direct-reading spectrography. The determined results obtained by ANN-sparkle direct-reading spectrography and those by chemical analysis are approximately identical. The paralysis in the procedure of training on the ANN has been avoided with the improved back propagation algorithms. The simple linear transformation method for target vectors about networks has been put forward. A method has been developed for direct determination of acid-solved aluminum in steel with satisfactory results.
出处
《光谱学与光谱分析》
SCIE
EI
CAS
CSCD
北大核心
2003年第6期1177-1179,共3页
Spectroscopy and Spectral Analysis
关键词
合金钢
酸溶铝
含量测定
直读光谱法
人工神经网络
artificial neural networks
direct-reading spectrography
acid-solved aluminum