Evaluation of the generalization performance of a CNN-assisted BOFDA system

Conference: Sensoren und Messsysteme - 21. ITG/GMA-Fachtagung
05/10/2022 - 05/11/2022 at Nürnberg

Proceedings: ITG-Fb. 303: Sensoren und Messsysteme

Pages: 4Language: englishTyp: PDF

Authors:
Karapanagiotis, Christos (Bundesanstalt für Materialforschung und -prüfung (BAM), Berlin, Germany)

Abstract:
Brillouin Optical Frequency Domain Analysis (BOFDA) is a powerful and well-established method for static distributed sensing of temperature and strain. Recently, we demonstrated a BOFDA system based on convolutional neural network which shortens the measurement time considerably. In this paper, we apply leave-one-out cross validation to evaluate the generalization performance and provide an unbiased and reliable machine learning model for a time-efficient BOFDA system.