基于深度学习的小样本光纤光谱精确温度预测

IF 2.3 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Photonics Technology Letters Pub Date : 2024-10-18 DOI:10.1109/LPT.2024.3483210
Yin Zhang;Jian Wang;Zhiyuan Xu;Peng Ren;Yuan Li-Bo
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引用次数: 0

摘要

本研究针对光纤光谱技术在温度预测中存在的数据依赖性强、预测精度有限等问题,提出了一种利用深度学习的基于小样本光纤光谱的温度预测方法。该方法旨在通过深度学习模型强大的特征提取和泛化能力,利用有限的数据样本实现高精度温度预测。为了实现这一目标,我们首先设计了一套精确的实验方案,采集光纤光谱数据,温度范围从30℃到130℃,在可控的温度变化下获得了84个高质量的数据样本。在数据处理阶段,我们采用先进的信号处理技术去除噪声和异常值,并对数据进行归一化处理,以确保数据的可靠性和一致性。随后,利用深度学习领域的各种模型对处理后的光谱数据进行训练和学习。通过优化模型结构和参数,我们成功建立了光谱与温度之间的非线性映射关系。实验结果表明,与传统方法相比,深度学习模型在光谱温度预测方面表现出更高的预测精度和更强的鲁棒性,尤其是在小样本条件下。这项研究不仅为有限样本下的光谱温度预测提供了一种新颖有效的方法,还拓展了深度学习在光谱分析中的应用范围。此外,该方法在工业生产、环境监测、生物医学等多个领域都具有广阔的应用前景,有望为相关领域的温度监测和控制提供更精确、更高效的解决方案。
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Precise Temperature Prediction for Small-Sample Fiber Optic Spectra Based on Deep Learning
This study addresses the issues of strong data dependency and limited prediction accuracy in temperature prediction using optical fiber spectroscopy technology by proposing a small-sample optical fiber spectroscopy-based temperature prediction method leveraging deep learning. This method aims to achieve high-precision temperature prediction with limited data samples through the powerful feature extraction and generalization capabilities of deep learning models. To achieve this goal, we first designed a precise experimental protocol to collect optical fiber spectroscopy data covering a temperature range from 30°C to 130°C, resulting in 84 high-quality data samples under controlled temperature variations. In the data processing stage, advanced signal processing techniques were employed to remove noise and outliers, and the data were normalized to ensure reliability and consistency. Subsequently, various models from the deep learning domain were utilized to train and learn from the processed spectroscopy data. By optimizing the model structures and parameters, we successfully established a nonlinear mapping relationship between spectroscopy and temperature. Experimental results demonstrate that compared to traditional methods, the deep learning model exhibits higher prediction accuracy and stronger robustness in spectroscopic temperature prediction, particularly under small-sample conditions. This study not only provides a novel and effective approach for spectroscopic temperature prediction with limited samples but also expands the application scope of deep learning in spectral analysis. Furthermore, this method holds broad application prospects in various fields such as industrial production, environmental monitoring, and biomedicine, promising to offer more precise and efficient solutions for temperature monitoring and control in related areas.
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来源期刊
IEEE Photonics Technology Letters
IEEE Photonics Technology Letters 工程技术-工程:电子与电气
CiteScore
5.00
自引率
3.80%
发文量
404
审稿时长
2.0 months
期刊介绍: IEEE Photonics Technology Letters addresses all aspects of the IEEE Photonics Society Constitutional Field of Interest with emphasis on photonic/lightwave components and applications, laser physics and systems and laser/electro-optics technology. Examples of subject areas for the above areas of concentration are integrated optic and optoelectronic devices, high-power laser arrays (e.g. diode, CO2), free electron lasers, solid, state lasers, laser materials'' interactions and femtosecond laser techniques. The letters journal publishes engineering, applied physics and physics oriented papers. Emphasis is on rapid publication of timely manuscripts. A goal is to provide a focal point of quality engineering-oriented papers in the electro-optics field not found in other rapid-publication journals.
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