解调
灵敏度(控制系统)
压力传感器
光纤传感器
电子工程
光纤
材料科学
光学
声学
计算机科学
工程类
物理
电信
机械工程
频道(广播)
作者
Yuren Chen,Ning Li,Yang Yu,Qiang Bian,Wenjie Xu,Zhencheng Wang,Minming Geng,Yijiang Shen,Zhenrong Zhang
出处
期刊:IEEE Sensors Journal
[Institute of Electrical and Electronics Engineers]
日期:2023-08-28
卷期号:23 (22): 28294-28303
被引量:2
标识
DOI:10.1109/jsen.2023.3308079
摘要
The pressure and temperature of seawater are two important parameters. At present, people mainly rely on various types of temperature and depth measurement instruments to monitor the temperature and pressure of seawater. Optical temperature–depth (TD) sensors have advantages such as antielectromagnetic interference, corrosion resistance, and multiplexing capability. By using polydimethylsiloxane with a high thermo-optical coefficient and a high elastic-optical coefficient to encapsulate optical microfiber coupler combined sagnac loop (OMCSL) structure with large abrupt field characteristic, a simultaneous temperature and pressure fiber optic sensor with high stability and high sensitivity could be achieved. However, when using the conventional sensitivity matrix method (SMM) to demodulate the sensor, the demodulation results were unstable and encountered large error. One of the main reasons for the errors in the demodulation of the sensor using SMM is that the sensitivity matrix is an ill-conditioned matrix under certain conditions, and SMM in this state would greatly amplify the errors in the demodulation results. The other reason is that the feature wavelengths of the sensor would show a nonlinear relationship with temperature when sensing in some environments. To reduce the demodulation error, in this article, we researched and used various machine learning methods (MLMs) to demodulate the sensor. The experimental results showed that the demodulation error of the sensor could be greatly reduced by using the MLM compared to the traditional SMM. This article provides a method to reduce the demodulation error of sensors with sensitivity nonlinear variation characteristics and reduce the demodulation error of sensors demodulated using SMM.
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