2025-03-25T09:48:15Z
2025-03-25T09:48:15Z
2022-06-10
2025-03-17T15:02:29Z
Gas Chromatography Ion Mobility Spectrometry (GC-IMS) is a fast, non-expensive analytical technique that allows obtaining relevant chemical information from vapor mixtures. However, the technique presents some difficulties that should be solved to ensure reliable and reproducible results, namely: 1) data exhibits simultaneously high dimensionality and sparsity on their chemical information content, 2) data samples must usually be corrected even within a batch because of baseline and misalignment problems, 3) additional data corrections must be performed to prevent from chemical fingerprinting variations among batches. In this work, we have acquired data from two different batches (A and B) of ketone mixtures (2-Butanone, 2-Pentanone, 2-Hexanone, and 2-Heptanone). The analytical method for batch A and B was the same, except for the value of carrier gas flow parameter, which was approximately doubled for batch B. We have addressed problems 1) and 2) independently for each batch, obtaining as a result two peak tables. 3). Common peaks present in batches A and B were found after scaling the retention time axis of batch B and perform k-medoids clustering. Using this information, test data from batch B has been corrected through a linear transformation.
Object of conference
Accepted version
English
Cromatografia de gasos; Dactiloscòpia; Gas chromatography; Fingerprints
IEEE
Versió postprint del document publicat a: https://doi.org/10.1109/ISOEN54820.2022.9789646
Comunicació a: 2022 IEEE International Symposium on Olfaction and Electronic Nose (ISOEN), International Society for Olfaction and Chemical Sensing (ISOCS), Aveiro, Portugal, 29 de maig - 1 de juny 2022
https://doi.org/10.1109/ISOEN54820.2022.9789646
(c) IEEE, 2022