Zhou Y, Yan A, Xu H, Wang K, Chen X, Hu Z
Department of Chemistry, Lanzhou University, Lanzhou 730000, China.
Analyst. 2000 Dec;125(12):2376-80.
This paper deals with the application of artificial neural networks (ANNs) to two common problems in spectroscopy: optimization of experimental conditions and non-linear calibration of the result, with particular reference to the determination of fluoride by flow injection analysis (FIA). The FIA system was based on the formation of a blue ternary complex between zirconium(IV), p-methyldibromoarsenazo and F- with the maximum absorption wavelength at 635 nm. First, optimization in terms of sensitivity and sampling rate was carried out by using jointly a central composite design and ANNs, and a neural network with a 3-7-1 structure was confirmed to be able to provide the maximum performance. Second, the relationship between the concentration of fluoride and its absorbance was modeled by ANNs. In this process, cross-validation and leave-k-out were used. The results showed that good prediction was attained in the 1-4-1 neural net. The trained networks proved to be very powerful in both applications. The proposed method was successfully applied to the determination of free fluoride in tea and toothpaste with recoveries between 96 and 101%.
本文探讨了人工神经网络(ANNs)在光谱学中的两个常见问题:实验条件的优化和结果的非线性校准,特别提及了流动注射分析(FIA)法测定氟化物。FIA系统基于锆(IV)、对甲基二溴偶氮胂和氟离子形成蓝色三元络合物,其最大吸收波长为635nm。首先,通过联合使用中心复合设计和人工神经网络对灵敏度和采样率进行优化,确认具有3-7-1结构的神经网络能够提供最佳性能。其次,利用人工神经网络对氟化物浓度与其吸光度之间的关系进行建模。在此过程中,采用了交叉验证和留一法。结果表明,在1-4-1神经网络中实现了良好的预测。经训练的网络在这两个应用中都证明非常强大。所提出的方法成功应用于茶叶和牙膏中游离氟化物的测定,回收率在96%至101%之间。