Evaluation of natural computation techniques in the modelling and optimization of a sequential injection flow system for colorimetric iron(III) determination

被引:15
作者
deGracia, J
Saravia, MLMFS
Araujo, AN
Lima, JLFC
del Valle, M
Poch, M
机构
[1] UNIV GIRONA, LAB ENGN QUIM & AMBIENTAL, DEPT ENGN QUIM AGR & TECNOL AGROALIMENTARIA, GIRONA 17071, SPAIN
[2] UNIV AUTONOMA BARCELONA, DEPT QUIM,GRP SENSORS & BIOSENSORS, E-08193 BELLATERRA, SPAIN
[3] CEQUP, DEPT QUIM FIS,FAC FARM UP, P-4050 OPORTO, PORTUGAL
[4] UNIV AUTONOMA BARCELONA, DEPT ENGN QUIM, E-08193 BELLATERRA, SPAIN
关键词
neural networks; genetic algorithms; SIA; iron in waters;
D O I
10.1016/S0003-2670(97)00204-3
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The present study shows and gives evidence of the applicability of natural computation techniques in the modelling and optimization of a sequential injection flow system of analysis for colorimetric iron(III) determination in water samples. The reaction with thiocyanate is used as reagent colour. A neural network consisting of two hidden layers, each one formed by eight neurons, was used to model the system, Optimization of the system in terms of sensitivity, linearity and sampling rate was carried out by using jointly the neural network and genetic algorithms. The latter were used with a set of 50 crossed and mutated chromosomes over 100 generations. In the system thus developed, 140 mu l of sample and 70 mu l of reagent were sequentially introduced into the holding coil and propelled toward the detector at a flow of 5 ml/min. The system gave a sampling rate of 110 samples per hour, A comparison of the results obtained in the analysis of six samples with those obtained using the reference method (atomic absorption spectrophotometry) showed the high quality of results provided.
引用
收藏
页码:143 / 150
页数:8
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