Farajvand Mohammad, Kiarostami Vahid, Davallo Mehran, Ghaedi Abdolmohammad, Fatahi Farnoosh
1Department of Chemistry, North Tehran Branch, Islamic Azad University, Tehran, Iran.
Department of Chemistry, Gachsaran Branch, Islamic Azad University, Gachsaran, Iran.
J Food Sci Technol. 2019 Sep;56(9):4224-4232. doi: 10.1007/s13197-019-03892-6. Epub 2019 Jul 8.
A bat inspired algorithm with the aid of artificial neural networks (ANN-BA) has been used for the first time in chemistry and food sciences to optimize solvent-terminated dispersive liquid-liquid microextraction (ST-DLLME) as a green, fast and low cost technique for determination of Cu ions in water and food samples using -sulfonatocalix (4) arene as a complexing reagent. For this purpose, the influence of four important factors four factors which was influenced on the extraction efficiency such as salt addition, solution pH and disperser and extraction solvent volumes were investigated. Central composite design (CCD) as a comparative technique was employed for optimization of ST-DLLME efficiency. The ANN-BA optimization technique was regarded as a superior model due to its higher value of extraction efficiency (about 7.21%) compared to CCD method. Under ANN-BA optimal conditions, the limit of quantitation (S/N = 10), limit of detection (S/N = 3) and linear range were 0.35, 0.12 and 0.35-1000 µg L, respectively. In these circumstances, the percentage recoveries for drinking tea, apple juice, milk, bottled drinking water, river and well water spiked with 0.05, 0.1 and 0.2 mg L of Cu ions were in the acceptable range (91.4-107.1%). In comparison to other methods, the developed ST-DLLME method showed the lowest solvent and sample consumption, shortest value of extraction time, most suitable determination and detection limits and linear range with simple and low cost apparatus. Additionally, the use of bat inspired algorithm as a powerful metaheuristic algorithm with the aid of artificial networks is another advantage of the present work.
一种借助人工神经网络的蝙蝠启发式算法(ANN-BA)首次在化学和食品科学领域中用于优化溶剂终止分散液液微萃取(ST-DLLME),这是一种绿色、快速且低成本的技术,使用对磺酸基杯[4]芳烃作为络合试剂来测定水和食品样品中的铜离子。为此,研究了四个重要因素对萃取效率的影响,这四个因素包括加盐量、溶液pH值、分散剂和萃取剂体积。采用中心复合设计(CCD)作为对比技术来优化ST-DLLME效率。与CCD方法相比,ANN-BA优化技术因其更高的萃取效率值(约7.21%)而被视为一种更优的模型。在ANN-BA的最佳条件下,定量限(S/N = 10)、检测限(S/N = 3)和线性范围分别为0.35、0.12和0.35 - 1000 μg L。在这些情况下,添加了0.05、0.1和0.2 mg L铜离子的饮用茶、苹果汁、牛奶、瓶装饮用水、河水和井水的回收率在可接受范围内(91.4 - 107.1%)。与其他方法相比,所开发的ST-DLLME方法显示出最低的溶剂和样品消耗、最短的萃取时间、最合适的测定和检测限以及线性范围,且仪器简单、成本低。此外,借助人工神经网络使用蝙蝠启发式算法这种强大的元启发式算法是本研究的另一个优势。