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Hydroxyl and acid number prediction in polyester resins by near infrared spectroscopy and artificial neural networks

机译:近红外光谱和人工神经网络预测聚酯树脂中的羟酸值

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摘要

Back-propagation artificial neural networks (BP-ANN) are applied for modeling hydroxyl number and acid value of a set of 62 samples of polyester resins from their near infrared (NIR) spectra.The results are compared to the classical calibration approaches,i.e.principal component regression (PCR) and partial least squares (PLS).The set of available samples is split into:(i) a training set,for models calculation;(ii) a test set,for setting the correct number of latent variables in PCR and PLS and for selecting the end point of the training phase of BP-ANN;(iii) a "production set" of samples,which are predicted to evaluate the models predictive ability.This approach guarantees that the predictive ability of the models is evaluated by genuine predictions.BP-ANN resulted always better than the classical PCR and PLS,from the point of view of the predictive ability.The study of the breakdown number of experiments to include in the training set showed instead that this factor does influence PCR and PLS at a lesser degree than what happens for BP-ANN.The latter approach requires a larger number of experiments for obtaining good results.The choice of optimal training sets is efficiently performed by Kohonen self-organizing maps (SOMs).It can be concluded that FT-NIR spectroscopy and BP-ANN models can be properly employed for monitoring the polyesterification of dicarboxylic acids with diols by predicting the acid and hydroxyl numbers directly along the process line.
机译:运用反向传播人工神经网络(BP-ANN)从其近红外(NIR)光谱中对一组62个聚酯树脂样品的羟值和酸值进行建模,并将结果与​​经典的校准方法进行比较,例如分量回归(PCR)和偏最小二乘(PLS)。可用样本集分为:(i)训练集,用于模型计算;(ii)测试集,用于设置PCR中正确的潜变量数和PLS以及用于选择BP-ANN训练阶段的终点;(iii)样本的“生产集”,用于评估模型的预测能力。这种方法保证了评估模型的预测能力从预测能力的角度来看,BP-ANN的结果总是优于经典的PCR和PLS。对包含在训练集中的实验的分解次数的研究表明,该因素确实影响了PC R和PLS的程度低于BP-ANN的情况。后一种方法需要进行大量实验才能获得良好的效果,最佳训练集的选择可以通过Kohonen自组织图(SOM)有效地执行。结论是,通过直接沿工艺线预测酸和羟基数,FT-NIR光谱和BP-ANN模型可以正确地用于监测二元羧酸与二醇的聚酯化反应。

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