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Application of different training methodologies for the development of a back propagation artificial neural network retention model in ion chromatography

机译:不同训练方法在离子色谱中建立反向传播人工神经网络保留模型的应用

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摘要

The reliability of predicted separations in ion chromatography depends mainly on the accuracy of retention predictions.Any model able to improve this accuracy will yield predicted optimal separations closer to the reality.In this work artificial neural networks were used for retention modeling of void peak,fluoride,chlorite,chloride,chlorate,nitrate and sulfate.In order to increase performance characteristics of the developed model,different training methodologies were applied and discussed.Furthermore,the number of neurons in hidden layer,activation function and number of experimental data used for building the model were optimized in terms of decreasing the experimental effort without disruption of performance characteristics.This resulted in the superior predictive ability of developed retention model(average of relative error is 0.4533%).
机译:离子色谱中预测分离的可靠性主要取决于保留预测的准确性。任何能够提高此准确性的模型都将产生更接近实际的预测最佳分离。在这项工作中,使用人工神经网络对空隙峰,氟化物进行保留建模为了提高开发模型的性能,应用和讨论了不同的训练方法。此外,隐层神经元的数量,激活功能和用于构建的实验数据的数量。对模型进行了优化,以减少实验工作量而不破坏性能特征。这导致开发的保留模型具有出色的预测能力(相对误差的平均值为0.4533%)。

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