Identification and Discrimination of Brands of Fuels by Gas Chromatography and Neural Networks Algorithm in Forensic Research.
L UgenaS MoncayoS ManzoorD RosalesJorge O CáceresPublished in: Journal of analytical methods in chemistry (2016)
The detection of adulteration of fuels and its use in criminal scenes like arson has a high interest in forensic investigations. In this work, a method based on gas chromatography (GC) and neural networks (NN) has been developed and applied to the identification and discrimination of brands of fuels such as gasoline and diesel without the necessity to determine the composition of the samples. The study included five main brands of fuels from Spain, collected from fifteen different local petrol stations. The methodology allowed the identification of the gasoline and diesel brands with a high accuracy close to 100%, without any false positives or false negatives. A success rate of three blind samples was obtained as 73.3%, 80%, and 100%, respectively. The results obtained demonstrate the potential of this methodology to help in resolving criminal situations.
Keyphrases
- gas chromatography
- neural network
- mass spectrometry
- tandem mass spectrometry
- high resolution mass spectrometry
- gas chromatography mass spectrometry
- solid phase extraction
- bioinformatics analysis
- liquid chromatography
- particulate matter
- high resolution
- machine learning
- deep learning
- air pollution
- loop mediated isothermal amplification