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首页> 外文期刊>Chromatographia >Application of Artificial Neural Network and Multiple Linear Regression Retention Models for Optimization of Separation in Ion Chromatography by Using Several Criteria Functions
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Application of Artificial Neural Network and Multiple Linear Regression Retention Models for Optimization of Separation in Ion Chromatography by Using Several Criteria Functions

机译:人工神经网络和多元线性回归保留模型通过几个准则函数优化离子色谱分离

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摘要

This work focuses on problems regarding empirical retention modelling and optimization of separation in ion chromatography. Influences of eluent flow rate and concentration of eluent competing ion (OH−) on separation of seven inorganic anions (fluoride, chloride, nitrite, sulphate, bromide, nitrate, and phosphate) were investigated. Artificial neural networks and multiple linear regression retention models in combination with several criteria functions were used and compared in global optimization process. It can be seen that general recommendations for optimization of separation in ion chromatography is application of chromatography exponential function criterion in combination with artificial neural networks retention model.
机译:这项工作的重点是有关离子色谱中的经验保留模型和分离优化的问题。研究了洗脱液流速和洗脱液竞争离子(OH-)浓度对7种无机阴离子(氟离子,氯离子,亚硝酸根,硫酸根,溴离子,硝酸根和磷酸根)分离的影响。人工神经网络和多个线性回归保留模型与几个标准函数结合使用,并在全局优化过程中进行了比较。可以看出,在离子色谱中优化分离的一般建议是将色谱指数函数标准与人工神经网络保留模型结合使用。

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