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首页> 外文期刊>IEEE Transactions on Instrumentation and Measurement >FPGA-Based Implementation of an Artificial Neural Network for Measurement Acceleration in BOTDA Sensors
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FPGA-Based Implementation of an Artificial Neural Network for Measurement Acceleration in BOTDA Sensors

机译:基于FPGA的BOTDA传感器中用于测量加速的人工神经网络实现

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摘要

In recent years, using distributed fiber-optic sensors based on Brillouin scattering, for monitoring pipelines, tunnels, and other constructional structures have gained huge popularity. However, these sensors have a low signal-to-noise ratio (SNR), which usually increases their measurement error. To alleviate this issue, ensemble averaging is used which improves the SNR but in return increases the measurement time. Reducing the noise by averaging requires hundreds or thousands of scans of the optical fiber; hence averaging is usually responsible for a large percent of the entire system latency. In this paper, we propose a novel method based on artificial neural network for SNR enhancement and measurement acceleration in distributed fiber-optic sensors based on the Brillouin scattering. Our method takes the noisy Brillouin spectrums and improves their SNR by 20 dB, which reduces the measurement time significantly. It also improves the accuracy of the Brillouin frequency shift estimation process and its latency by more than 50 & x0025; in comparison with the state-of-the-art software and hardware solutions.
机译:近年来,使用基于布里渊散射的分布式光纤传感器来监视管道,隧道和其他建筑结构已广受欢迎。但是,这些传感器的信噪比(SNR)低,通常会增加其测量误差。为了缓解此问题,使用了集成平均,可以提高SNR,但反过来又会增加测量时间。通过平均减少噪声需要对光纤进行数百或数千次扫描。因此,平均通常占整个系统延迟的很大一部分。在本文中,我们提出了一种基于人工神经网络的新方法,用于基于布里渊散射的分布式光纤传感器中的SNR增强和测量加速。我们的方法采用了嘈杂的布里渊频谱,并将其SNR提高了20 dB,从而显着减少了测量时间。它还将布里渊频移估计过程的精度及其等待时间提高了50倍以上。与最新的软件和硬件解决方案相比。

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