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Neural-network-integrated electronic nose system for identification of spoiled beef

Authors :
Suranjan Panigrahi
S. Balasubramanian
M. J. Marchello
H. Gu
Catherine M. Logue
Source :
LWT - Food Science and Technology. 39:135-145
Publication Year :
2006
Publisher :
Elsevier BV, 2006.

Abstract

A commercially available Cyranose-320™ conducting polymer-based electronic nose system was used to analyse the headspace from fresh beef strip loins (M. Longissimus lumborum ) stored at 4° and 10 °C. The raw signals obtained from the electronic nose system were pre-processed by various signal-processing techniques to extract area-based features. Principal component analysis was subsequently performed on the processed signals to further reduce the dimensionalities. Classification models using radial basis function neural networks were developed using the extracted features. The performance of the developed models was validated using leave-1-out cross-validation method. The developed models classified meat samples stored at two storage temperatures into two groups, i.e., “unspoiled” (microbial counts 10 cfu/g) and “spoiled” (microbial counts ⩾6.0 log 10 cfu/g). Maximum total classification accuracies of 100% were obtained for both the samples stored at 10 and 4 °C. Classification models based on “Area scaled” feature showed higher accuracies than that obtained using “Area unscaled feature.”

Details

ISSN :
00236438
Volume :
39
Database :
OpenAIRE
Journal :
LWT - Food Science and Technology
Accession number :
edsair.doi...........cae3bcd2e5d65ec0d860e3b0f437c39e
Full Text :
https://doi.org/10.1016/j.lwt.2005.01.002