基于随机森林回归的长周期光纤光栅曲率预测

IF 2.3 4区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Xingliu Hu, Haifei Si, Quanyi Ye, Yan Zhang
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引用次数: 0

摘要

针对现有曲率评估方法采用多项式拟合的缺点,提出了一种基于随机森林回归(RFR)的长周期光纤光栅曲率估计方法;这些缺点使模型难以达到足够的规律性和应用的通用性。该方法以LPFG的谐振波长和谐振峰值幅值作为输入变量,建立曲率估计的RFR模型,实现对样品曲率的准确预测。结果表明,基于rfr的LPFG曲率预测模型比反向传播神经网络能更好地表征输入输出回归关系。RFR模型的平均R2值为0.9826,实际实测曲率值与模型预测曲率值高度相关。与反向传播神经网络相比,RFR模型具有更高的曲率估计精度,均方根和平均绝对误差的平均值分别为0.1314和0.1173。该方法可以为机器人学习在LPFG曲率测量中的应用提供更全面的理论依据,具有实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Curvature prediction of long-period fibre grating based on random forest regression

Curvature prediction of long-period fibre grating based on random forest regression

This study proposes a long-period fibre grating (LPFG) curvature estimation method based on random forest regression (RFR) to address the shortcomings of the existing curvature evaluation method, namely, polynomial fitting; these shortcomings cause difficulty in achieving adequate model regularity and application universality. The resonant wavelength and resonant peak amplitude of the LPFG are used as input variables in this method to develop an RFR model for curvature estimation, allowing for accurate curvature prediction of the sample. The results show that the RFR-based LPFG curvature prediction model can better characterise the input–output regression relationship than back-propagation neural networks. The average R2 value of the RFR model is 0.9826, and the actual measured curvature value is highly correlated with the model predicted curvature value. Compared to that exhibited by back-propagation neural networks, the RFR model exhibits higher accuracy for curvature estimation, with average values of 0.1314 and 0.1173 for root mean square and mean absolute errors, respectively. This method can provide a more comprehensive theoretical basis for the application of robot learning in the curvature measurement of LPFG and has practical value.

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来源期刊
Iet Optoelectronics
Iet Optoelectronics 工程技术-电信学
CiteScore
4.50
自引率
0.00%
发文量
26
审稿时长
6 months
期刊介绍: IET Optoelectronics publishes state of the art research papers in the field of optoelectronics and photonics. The topics that are covered by the journal include optical and optoelectronic materials, nanophotonics, metamaterials and photonic crystals, light sources (e.g. LEDs, lasers and devices for lighting), optical modulation and multiplexing, optical fibres, cables and connectors, optical amplifiers, photodetectors and optical receivers, photonic integrated circuits, photonic systems, optical signal processing and holography and displays. Most of the papers published describe original research from universities and industrial and government laboratories. However correspondence suggesting review papers and tutorials is welcomed, as are suggestions for special issues. IET Optoelectronics covers but is not limited to the following topics: Optical and optoelectronic materials Light sources, including LEDs, lasers and devices for lighting Optical modulation and multiplexing Optical fibres, cables and connectors Optical amplifiers Photodetectors and optical receivers Photonic integrated circuits Nanophotonics and photonic crystals Optical signal processing Holography Displays
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