Abstract

This paper presents a novel unsupervised representation learning-based demodulation framework for Fabry-Perot interferometer (FPI) sensors, which is a straightforward and effective solution for obtaining interferometric spectrum without any optical spectrum analyzers. The proposed framework utilizes a simple spectrum reconstruction method to reconstruct the FPI sensor’s spectrum using relatively low-scale sample points, requiring less manual effort than conventional approaches. The proposed approach involves two steps: first, an optical system converts the FPI sensing signal to transmitted intensity, and second, the unsupervised representation learning-based reconstruction framework establishes a nonlinear relationship between the intensity signal and the actual changing spectrum. The proposed approach is validated using real-world datasets generated from pressure performance tests, achieving excellent performance with a reconstruction error of 0.039nm and a range of 73nm. The results demonstrate the practical potential viability of the proposed framework for large-scale remote monitoring systems.

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