Simultaneous determination of relative humidity and ammonia in air employing an optical fibre sensor and artificial neural network

被引:65
作者
Raimundo, IM [1 ]
Narayanaswamy, R [1 ]
机构
[1] Univ Manchester, Inst Sci & Technol, Dept Instrumentat & Analyt Sci, Manchester M60 1QD, Lancs, England
关键词
optical gas sensor; ammonia; relative humidity; artificial neural network;
D O I
10.1016/S0925-4005(00)00712-7
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The simultaneous determination of ammonia and relative humidity (RH) in air employing an optical fibre chemical sensor based on a nafion-crystal violet composite and a multivariate calibration based on and artificial neural network (ANN) has been described. Each and every measurement was made with a new film of 5 mum thickness, prepared from a 1.0 x 10(-3) mol l(-1) crystal violet and 1.0 x 10(-2) mol l(-1) nafion (as sulphonate groups) solution. Studies were performed in the ranges of 30-70% relative humidity and 0-25 ppm ammonia. A feedforward ANN, with error back propagation training algorithm, was employed for treatment of data. Input neurons corresponding to reflectance intensities measured at 562, 583, 605, 626 and 660 nm were employed. The optimised ANN provided standard errors of prediction (SEP) of 28.4 and 7.3% for NH3 and RH, respectively, when fed with spectral data recorded after 2 min of exposure (5 input neurons). The generalisation capability of the ANN was improved when it was fed with spectra data recorded after time intervals of 30, 60, 90 and 120 s (20 input neurons), providing SEPs equal to 9.9 and 4.5% for NH3 and RH, respectively. This improvement can be explained considering that water vapour reacts faster than NH3 with the film (a time interval <30 s is enough for the reaction to reach the equilibrium state) while the reaction rate for NH3 is dependent on the RH (higher RH inhibits ammonia reaction). <(c)> 2001 Elsevier Science B.V. All rights reserved.
引用
收藏
页码:60 / 68
页数:9
相关论文
共 37 条
[1]   Simultaneous enzymatic spectrophotometric determination of ethanol and methanol by use of artificial neural networks for calibration [J].
Blanco, M ;
Coello, J ;
Iturriaga, H ;
Maspoch, S ;
Porcel, M .
ANALYTICA CHIMICA ACTA, 1999, 398 (01) :83-92
[2]  
Blanco M, 1996, QUIM ANAL, V15, P266
[3]   ARTIFICIAL NEURAL NETWORKS FOR MULTICOMPONENT KINETIC DETERMINATIONS [J].
BLANCO, M ;
COELLO, J ;
ITURRIAGA, H ;
MASPOCH, S ;
REDON, M .
ANALYTICAL CHEMISTRY, 1995, 67 (24) :4477-4483
[4]   Artificial neural networks and partial least squares regression for pseudo-first-order with respect to the reagent multicomponent kinetic-spectrophotometric determinations [J].
Blanco, M ;
Coello, J ;
Iturriaga, H ;
Maspoch, S ;
Redon, M ;
Villegas, N .
ANALYST, 1996, 121 (04) :395-400
[5]   DATA-PROCESSING BY NEURAL NETWORKS IN QUANTITATIVE CHEMICAL-ANALYSIS [J].
BOS, M ;
BOS, A ;
VANDERLINDEN, WE .
ANALYST, 1993, 118 (04) :323-328
[6]  
BROOK TE, 1997, SENSOR ACTUAT B-CHEM, V38, P272
[7]   Simultaneous determination of potassium and sodium by optode spectra and an artificial neural network algorithm [J].
Chan, WH ;
Lee, AWM ;
Kwong, DWJ ;
Liang, YZ ;
Wang, KM .
ANALYST, 1997, 122 (07) :657-661
[8]   Feed-forward artificial neural networks: Applications to spectroscopy [J].
Cirovic, DA .
TRAC-TRENDS IN ANALYTICAL CHEMISTRY, 1997, 16 (03) :148-155
[9]  
Despagne F, 1998, ANALYST, V123, p157R
[10]   Detection of volatile compounds with mass sensitive sensor arrays in the presence of variable ambient humidity [J].
Dickert, FL ;
Hayden, O ;
Zenkel, ME .
ANALYTICAL CHEMISTRY, 1999, 71 (07) :1338-1341