Enabling variable high spatial resolution retrieval from a long pulse BOTDA sensor
Zhao Ge, Li Shen, Can Zhao, Hao Wu, Zhiyong Zhao, and Ming Tang

TL;DR
This paper introduces a CNN-based method to enhance spatial resolution in BOTDA sensors, enabling high-resolution sensing with long pump pulses and reducing measurement time significantly.
Contribution
A novel CNN approach that surpasses theoretical limits of spatial resolution in BOTDA sensors using long pulses without hardware changes.
Findings
Achieves higher spatial resolution than theoretical limits.
Reduces measurement time by half compared to DPP.
Provides tunable high-resolution retrieval through dataset modification.
Abstract
In the field of Internet of Things, there is an urgent need for sensors with large-scale sensing capability for scenarios such as intelligent monitoring of production lines and urban infrastructure. Brillouin optical time domain analysis (BOTDA) sensors, which can monitor thousands of continuous points simultaneously, show great advantages in these applications. We propose a convolutional neural network (CNN) to process the data of conventional Brillouin optical time domain analysis (BOTDA) sensors, which achieves unprecedented performance improvement that allows to directly retrieve higher spatial resolution (SR) from the sensing system that use long pump pulses. By using the simulated Brillouin gain spectrums (BGSs) as the CNN input and the corresponding high SR BFS as the output target, the trained CNN is able to obtain a SR higher than the theoretical value determined by the pump…
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Taxonomy
TopicsAdvanced Fiber Optic Sensors · Photonic and Optical Devices · Advanced Optical Sensing Technologies
