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Interference Fringe Suppression for Oxygen Concentration Measurement Using Adaptive Harmonic Feeding Generative Adversarial Network

Luo, Qiwu; Zhou, Jian; Li, Weichuang; Yang, Chunhua*; Gui, Weihua
Science Citation Index Expanded
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摘要

This paper proposes an efficient interference fringe suppression method for the oxygen concentration measurement system by adopting emerging machine learning techniques. First, the interfered and interference-free signal datasets are generated on HITRAN molecular spectroscopic database after a transmission factor is considered in the wavelength-modulation-based TDLAS (TDLAS/WMS) theory. Then, an adaptive harmonic feeding generative adversarial network (AHFGAN) is developed to deal with the task of interference fringe suppression, where a novel adaptive weighted scheme is proposed to guide the weight learning process based on the data prior knowledge of dispersion degree refined from a large number of harmonic signals. Based on the AHFGAN, nearly perfect interference-free harmonic signals are directly learnt from the real-world TDLAS system, with an average absolute oxygen concentration inversion error of 0.57% when applied in an actual pharmaceutical production line, which performs better than other five recent state-of-the-arts.

关键词

Harmonic analysis Interference Power harmonic filters Generative adversarial networks Glass Optical sensors Noise measurement Automated optical inspection (AOI) generative adversarial network (GAN) interference fringe oxygen concentration measurement