Source Identification of Underground Fuel Spills by Solid-Phase Microextraction/High-Resolution Gas Chromatography/Genetic Algorithms
- 16 December 1999
- journal article
- research article
- Published by American Chemical Society (ACS) in Analytical Chemistry
- Vol. 72 (2) , 423-431
- https://doi.org/10.1021/ac9904967
Abstract
Solid-phase microextraction (SPME), capillary column gas chromatography, and pattern recognition methods were used to develop a potential method for typing jet fuels so a spill sample in the environment can be traced to its source. The test data consisted of gas chromatograms from 180 neat jet fuel samples representing common aviation turbine fuels found in the United States (JP-4, Jet-A, JP-7, JPTS, JP-5, JP-8). SPME sampling of the fuel's headspace afforded well-resolved reproducible profiles, which were standardized using special peak-matching software. The peak-matching procedure yielded 84 standardized retention time windows, though not all peaks were present in all gas chromatograms. A genetic algorithm (GA) was employed to identify features (in the standardized chromatograms of the neat jet fuels) suitable for pattern recognition analysis. The GA selected peaks, whose two largest principal components showed clustering of the chromatograms on the basis of fuel type. The principal component analysis routine in the fitness function of the GA acted as an information filter, significantly reducing the size of the search space, since it restricted the search to feature subsets whose variance is primarily about differences between the various fuel types in the training set. In addition, the GA focused on those classes and/or samples that were difficult to classify as it trained using a form of boosting. Samples that consistently classify correctly were not as heavily weighted as samples that were difficult to classify. Over time, the GA learned its optimal parameters in a manner similar to a perceptron. The pattern recognition GA integrated aspects of strong and weak learning to yield a “smart” one-pass procedure for feature selection.Keywords
This publication has 17 references indexed in Scilit:
- Source Identification of Underground Fuel Spills by Pattern Recognition Analysis of High-Speed Gas ChromatogramsAnalytical Chemistry, 1995
- Application of high-resolution computer graphics to pattern recognition analysisJournal of Chemical Information and Computer Sciences, 1993
- Gas chromatography-pattern recognition techniques in pollution monitoringAnalytica Chimica Acta, 1993
- Rapid spectroscopic determination of per cent aromatics, per cent saturates and freezing point of JP-4 aviation fuelFuel, 1993
- Finding suspected causes of measurement error in multivariate environmental dataJournal of Chemometrics, 1993
- Fingerprinting Petroleum Contamination Using Synchronous Scanning Fluorescence SpectroscopyGroundwater, 1992
- Separation of aliphatic hydrocarbon mixtures by gas chromatography using serial liquid-phase and solid-phase columnsAnalytical Chemistry, 1991
- Potential Pesticide Contamination of Groundwater from Agricultural UsesPublished by American Chemical Society (ACS) ,1984
- Detection of Multivariate Normal OutliersThe Annals of Statistics, 1982
- SIMCA: A Method for Analyzing Chemical Data in Terms of Similarity and AnalogyPublished by American Chemical Society (ACS) ,1977