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分散液液微萃取-上浮溶剂固化/高效液相色谱法测定沉积物中的十溴联苯醚
引用本文:翦英红,胡艳,王婷,刘建林,张琛,李鱼. 分散液液微萃取-上浮溶剂固化/高效液相色谱法测定沉积物中的十溴联苯醚[J]. 分析化学, 2010, 38(1)
作者姓名:翦英红  胡艳  王婷  刘建林  张琛  李鱼
作者单位:吉林大学环境与资源学院,长春,130012;吉林化工学院环境与生物工程学院,吉林,132022;华北电力大学能源与环境中心,北京,102206;华北电力大学能源与环境中心,北京,102206;吉林大学环境与资源学院,长春,130012
基金项目:国家“973”计划项目(NO.2004CB418501)资助
摘    要:建立了沉积物中痕量十溴联苯醚的分散液液微萃取-上浮溶剂固化-高效液相色谱-紫外法(DLLME-SFO-HPLC-UV)。以正交试验数据为训练样本,采用BP(Back propagation)神经网络模型优化了分散液液微萃取-上浮溶剂固化条件:分散剂为1.00mL甲醇、萃取剂为35.0μL十二醇、NaCl质量浓度为10.00%、萃取时间10min和pH=5,其萃取率(ER)可达62.22%。方法的线性范围为3.5~1400ng/g(r=0.9960),检出限(LOD)和定量限(LOQ)分别为2.3pg/g(S/N=2)和5.6pg/g(S/N=5),实际样品的加标回收率为97.7%~104.2%。本方法集萃取、富集、分离步骤于一体,简化了沉积物中十溴联苯醚的前处理过程。

关 键 词:分散液液微萃取  上浮溶剂固化  高效液相色谱-紫外法  沉积物  十溴联苯醚  多层前馈神经网络

Dispersive Liquid-Liquid Microextraction Based on Solidification of Floating Organic Drop with High Performance Liquid Chromatography for Determination of Decabrominated Diphenyl Ether in Surficial Sediments
JIAN Ying-Hong,HU Yan,WANG Ting,LIU Jian-Lin,ZHANG Chen,LI Yu. Dispersive Liquid-Liquid Microextraction Based on Solidification of Floating Organic Drop with High Performance Liquid Chromatography for Determination of Decabrominated Diphenyl Ether in Surficial Sediments[J]. Chinese Journal of Analytical Chemistry, 2010, 38(1)
Authors:JIAN Ying-Hong  HU Yan  WANG Ting  LIU Jian-Lin  ZHANG Chen  LI Yu
Affiliation:Energy and Environmental Research Center;North China Electric Power University;Beijing 102206;College of Environment and Resources;Jilin University;Changchun 130012;College of Environment and Biology;Jilin Institute of Chemistry and Technology;Jilin 132022
Abstract:A method for the determination of decabrominated diphenyl ether(decaBDE) in sediment samples at trace level using dispersive liquid-liquid microextraction based on the solidification of floating organic drop (DLLME-SFO) and high performance liquid chromatography-ultraviolet detector (HPLC-UV) has developed.Based on the data of interactive orthogonal array design, the optimization experimental conditions were obtained with BP artificial neural network model: 1.00 mL methanol as dispersive solvent, 35.0 μL dodecanol as extractive solvent, 10.00% NaCl, pH 5, and extraction in 10 min.The extraction recovery (ER) was 62.22% at the extraction conditions.The proposed method exhibited a wide linear range(3.5-1400 ng/g) with R~2 =0.9921.The limit of detection (LOD) and the limit of quantification (LOQ) of this method were 2.3 pg/g(S/N =2) and 5.6 pg/g(S/N = 5), respectively.The recoveries of real samples at different spiking levels of decaBDE were 104.2%, 98.4% and 97.7%, respectively.Extraction, concentration and separation procedures for decaBDE from the sediment sample were carried out by one step, and hence, the process of DLLME-SFO for decaBDE was shortened.
Keywords:Dispersive liquid-liquid microextraction  Solidification of floating organic drop  High performance liquid chromatography-ultraviolet detection  Sediment  Decabrominated diphenyl ether  Back propagation artificial neural network  
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