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Simultaneous temperature and strain discrimination in a conventional BOTDA via artificial neural networks

Abstract: A system based on the use of artificial neural networks allowing discrimination of strain and temperature in a conventional Brillouin optical time domain analyzer setup is presented and demonstrated in this paper. This solution allows to perform an automatic discrimination of both parameters without compromising the complexity or cost of the interrogation unit. The classification results, achieved by considering a preprocessing stage with dimensionality reduction via principal component analysis and spatial filtering, improve those obtained in a previous feasibility study.

 Authorship: Ruiz-Lombera R., Fuentes A., Rodriguez-Cobo L., Lopez-Higuera J., Mirapeix J.,

 Fuente: Journal of Lightwave Technology, 2018, 36(11), 2114-2121

 Publisher: OSA e IEEE

 Publication date: 01/06/2018

 No. of pages: 8

 Publication type: Article

 DOI: 10.1109/JLT.2018.2805362

 ISSN: 0733-8724,1558-2213

 Spanish project: TEC2013-47264-C2-1-R

 Publication Url: https://doi.org/10.1109/JLT.2018.2805362

Authorship

RUBEN RUIZ LOMBERA

ALBERTO FUENTES CAYON