首页> 外文期刊>Journal of the Chilean Chemical Society >MODELING AND OPTIMIZATION OF IN SYRINGE MAGNET STIRRING ASSISTED-DISPERSIVE LIQUID-LIQUID MICROEXTRACTION METHOD FOR EXTRACTION OF CADMIUM FROM FOOD SAMPLES BY ARTIFICIAL NEURAL NETWORK AND GENETIC ALGORITHM
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MODELING AND OPTIMIZATION OF IN SYRINGE MAGNET STIRRING ASSISTED-DISPERSIVE LIQUID-LIQUID MICROEXTRACTION METHOD FOR EXTRACTION OF CADMIUM FROM FOOD SAMPLES BY ARTIFICIAL NEURAL NETWORK AND GENETIC ALGORITHM

机译:人工神经网络和遗传算法的电磁搅拌辅助分散液液微萃取建模与优化

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For the first time, artificial neural network (ANN) and genetic algorithm (GA) have been employed to modeling and optimization of in syringe magnet stirring assisted dispersive liquid-liquid microextraction (IS-MSA-DLLME) method for extraction of cadmium from food samples and determined by flame atomic absorption spectrometry. Based on one factor at a time optimization method, the different input variables for modeling were chosen as pH of the solution, extraction volume, stirring rate and extraction time. The ANN techniques fitted a model for extraction of cadmium with 8, 0.9988 and 6.4x10-4 neurons, correlation coefficient and mean standard error (MSE), respectively. By using the GA technique, the optimal conditions were achieved at pH 7, extraction volume at 250 μL, stirring rate of 500 rpm and extraction time of 10 min. Under the optimum conditions, the calibration graph was linear over the range of 0.05 - 1.00 μg L-1 and the limits of detection (LOD) were as small as 0.015 μg mL-1. The relative standard deviation was ±2.11% (n = 7) and the enrichment factor was 280. The developed method was successfully applied to the extraction and determination of cadmium in food samples.
机译:首次将人工神经网络(ANN)和遗传算法(GA)用于注射器中磁铁搅拌辅助分散液-液微萃取(IS-MSA-DLLME)方法从食品样品中提取镉的建模和优化并通过火焰原子吸收光谱法测定。基于一种时间优化方法的因素,选择了用于建模的不同输入变量作为溶液的pH值,萃取量,搅拌速率和萃取时间。人工神经网络技术拟合了一个具有8、0.9988和6.4x10-4神经元,相关系数和平均标准误差(MSE)的镉提取模型。通过使用GA技术,在pH 7时达到了最佳条件,提取体积为250μL,搅拌速度为500 rpm,提取时间为10分钟。在最佳条件下,校正曲线在0.05-1.00μgL-1范围内呈线性,检出限(LOD)小至0.015μgmL-1。相对标准偏差为±2.11%(n = 7),富集系数为280.该方法成功地用于食品样品中镉的提取和测定。

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