首页> 外文期刊>Environmental Monitoring and Assessment >Simultaneous extraction of Cu~(2+) and Cd~(2+) ions in water, wastewater, and food samples using solvent-terminated dispersive liquid-liquid microextraction: optimization by multiobjective evolutionary algorithm based on decomposition
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Simultaneous extraction of Cu~(2+) and Cd~(2+) ions in water, wastewater, and food samples using solvent-terminated dispersive liquid-liquid microextraction: optimization by multiobjective evolutionary algorithm based on decomposition

机译:溶剂末端分散液-液微萃取同时萃取水,废水和食品中的Cu〜(2+)和Cd〜(2+)离子:基于分解的多目标进化算法优化

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摘要

Solvent-terminated dispersive liquid-liquid microextraction (ST-DLLME) as a simple, fast, and low-cost technique was developed for simultaneous extraction of Cd2+ and Cu2+ ions in aqueous solutions. Multiobjective evolutionary algorithm based on decomposition with the aid of artificial neural networks (ANN-MOEA/D) was used for the first time in chemistry, environment, and food sciences to optimize several independent variables affecting the extraction efficiency, including disperser volume and extraction solvent volume, pH, and salt addition. To perform the ST-DLLME operations, xylene, methanol, and dithizone were utilized as an extraction solvent, disperser solvent, and chelating agent, respectively. Non-dominated sorting genetic algorithm versions II and III (NSGA II and NSGA III) as multiobjective metaheuristic algorithms and in addition central composite design (CCD) were studied as comparable optimization methods. A comparison of results from these techniques revealed that ANN-MOEA/D model was the best optimization technique owing to its highest efficiency (97.6% for Cd2+ and 98.3% for Cu2+). Under optimal conditions obtained by ANN-MOEAD, the detection limit (S/N=3), the quantitation limit(S/N=10), and the linear range for Cu2+ were 0.05, 0.15, and 0.15-1000gL(-1), respectively, and for Cd2+ were 0.07, 0.21, and 0.21-750gL(-1), respectively. The real sample recoveries at a spiking level of 0.05, 0.1, and 0.3mgL(-1) of Cu2+ and Cd2+ ions under the optimal conditions obtained by ANN-MOEA/D ranged from 94.8 to 105%.
机译:溶剂终止的分散液-液微萃取(ST-DLLME)是一种简单,快速且低成本的技术,旨在同时萃取水溶液中的Cd2 +和Cu2 +离子。在化学,环境和食品科学领域首次使用基于人工神经网络(ANN-MOEA / D)分解的多目标进化算法来优化影响萃取效率的多个独立变量,包括分散剂体积和萃取溶剂体积,pH和添加盐。为了进行ST-DLLME操作,分别使用二甲苯,甲醇和双硫zone作为提取溶剂,分散剂和螯合剂。研究了作为非目标排序遗传算法的II和III版(NSGA II和NSGA III)作为多目标元启发式算法,此外还研究了中央复合设计(CCD)作为可比较的优化方法。对这些技术的结果进行比较后发现,由于ANN-MOEA / D模型具有最高的效率(Cd2 +为97.6%,Cu2 +为98.3%),因此是最佳的优化技术。在ANN-MOEAD获得的最佳条件下,Cu2 +的检出限(S / N = 3),定量限(S / N = 10)和线性范围分别为0.05、0.15和0.15-1000gL(-1) ,和Cd2 +分别为0.07、0.21和0.21-750gL(-1)。在ANN-MOEA / D获得的最佳条件下,实际样品的Cu2 +和Cd2 +离子的加标水平分别为0.05、0.1和0.3mgL(-1),回收率为94.8%至105%。

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