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Comparison of single best artificial neural network and neural network ensemble in modeling of palladium microextraction

机译:单个最佳人工神经网络和神经网络集成在钯微萃取建模中的比较

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摘要

A simple, efficient, and fast method based on in-syringe dispersive liquid-liquid microextraction (IS-DLLME) for preconcentration of trace amounts of palladium from aqueous samples was developed. After complexation with 5-(4-dimethylaminobenzylidene)rhodanine, Pd was extracted into benzyl alcohol before its measurement with UV-Vis spectrophotometer, equipped with cubic millimeter cells. Thereafter, a comparative study between single best artificial neural network (SB-NN) and neural network ensemble (NNE) was performed to find the best mathematical model for palladium extraction process to simulate IS-DLLME. Two NNE models were built, one without pruning (NNE-WP) the ensemble members and another with pruning using genetic algorithm (NNE-GA). The predictive and generalization ability of SB-NN, NNE-WP, and NNE-GA was compared based on 20 runs. The average % error for SB-NN, NNE-WP, and NNE-GA models was 0.234, 0.146, and 0.115 and the correlation coefficient was 0.902, 0.948, and 0.973, respectively; indicating superiority of NNE approaches specially NNE-GA in capturing the non-linear behavior of the system.
机译:建立了一种基于注射器内分散液-液微萃取(IS-DLLME)的简单,有效,快速的方法,用于从水溶液样品中预富集痕量钯。与5-(4-二甲基氨基苄叉基)罗丹宁络合后,将Pd萃取到苯甲醇中,然后用配备立方毫米池的UV-Vis分光光度计进行测量。此后,进行了单个最佳人工神经网络(SB-NN)和神经网络集成(NNE)之间的比较研究,以找到用于钯提取过程以模拟IS-DLLME的最佳数学模型。建立了两个NNE模型,一个不对集合成员进行修剪(NNE-WP),而另一个使用遗传算法(NNE-GA)进行修剪。基于20次运行,比较了SB-NN,NNE-WP和NNE-GA的预测和泛化能力。 SB-NN,NNE-WP和NNE-GA模型的平均误差百分比分别为0.234、0.146和0.115,相关系数分别为0.902、0.948和0.973。这表明NNE在捕获系统的非线性行为方面特别接近NNE-GA。

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