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采用不同两相训练算法的人工神经网络建立离子色谱中无机阳离子保留模型

Development of an inorganic cations retention model in ion chromatography by means of artificial neural networks with different two-phase training algorithms.

作者信息

Bolanca Tomislav, Cerjan-Stefanović Stefica, Regelja Melita, Regelja Hrvoje, Loncarić Sven

机构信息

University of Zagreb, Faculty of Chemical Engineering and Technology, Laboratory of Analytical Chemistry, Marulićev trg 20, 10000 Zagreb, Croatia.

出版信息

J Chromatogr A. 2005 Aug 26;1085(1):74-85. doi: 10.1016/j.chroma.2005.02.018.

Abstract

This paper describes development of artificial neural network (ANN) retention model, which can be used for method development in variety of ion chromatographic applications. By using developed retention model it is possible both to improve performance characteristic of developed method and to speed up new method development by reducing unnecessary experimentation. Multilayered feed forward neural network has been used to model retention behaviour of void peak, lithium, sodium, ammonium, potassium, magnesium, calcium, strontium and barium in relation with the eluent flow rate and concentration of methasulphonic acid (MSA) in eluent. The probability of finding the global minimum and fast convergence at the same time were enhanced by applying a two-phase training procedure. The developed two-phase training procedure consists of both first and second order training. Several training algorithms were applied and compared, namely: back propagation (BP), delta-bar-delta, quick propagation, conjugate gradient, quasi Newton and Levenberg-Marquardt. It is shown that the optimized two-phase training procedure enables fast convergence and avoids problems arisen from the fact that every new weight initialization can be regarded as a new starting position and yield irreproducible neural network if only second order training is applied. Activation function, number of hidden layer neurons and number of experimental data points used for training set were optimized in order to insure good predictive ability with respect to speeding up retention modelling procedure by reducing unnecessary experimental work. The predictive ability of optimized neural networks retention model was tested by using several statistical tests. This study shows that developed artificial neural network are very accurate and fast retention modelling tool applied to model varied inherent non-linear relationship of retention behaviour with respect to mobile phase parameters.

摘要

本文描述了人工神经网络(ANN)保留模型的开发,该模型可用于各种离子色谱应用中的方法开发。通过使用开发的保留模型,既可以改善所开发方法的性能特征,又可以通过减少不必要的实验来加快新方法的开发。多层前馈神经网络已被用于模拟空体积峰、锂、钠、铵、钾、镁、钙、锶和钡在与洗脱液流速和洗脱液中甲磺酸(MSA)浓度相关的保留行为。通过应用两阶段训练程序,提高了同时找到全局最小值和快速收敛的概率。所开发的两阶段训练程序包括一阶和二阶训练。应用并比较了几种训练算法,即:反向传播(BP)、增量-巴-增量、快速传播、共轭梯度、拟牛顿和列文伯格-马夸尔特算法。结果表明,优化的两阶段训练程序能够实现快速收敛,并避免了仅应用二阶训练时出现的问题,即每次新的权重初始化都可被视为一个新的起始位置,可能会产生不可重复的神经网络。为了通过减少不必要的实验工作来确保在加快保留建模过程方面具有良好的预测能力,对激活函数、隐藏层神经元数量和用于训练集的实验数据点数量进行了优化。通过使用几种统计测试对优化后的神经网络保留模型的预测能力进行了测试。本研究表明,所开发的人工神经网络是一种非常准确且快速的保留建模工具,可用于模拟保留行为与流动相参数之间各种固有的非线性关系。

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