Recent Progresses in Machine Learning Assisted Raman Spectroscopy

Author:

Qi Yaping12,Hu Dan1,Jiang Yucheng3,Wu Zhenping4,Zheng Ming5,Chen Esther Xinyi6,Liang Yong1,Sadi Mohammad A.7,Zhang Kang6,Chen Yong P.1278ORCID

Affiliation:

1. Department of Engineering Science Faculty of Innovation Engineering Macau University of Science and Technology Av. Wai Long Macau SAR 999078 China

2. Advanced Institute for Materials Research (WPI‐AIMR) Tohoku University Sendai 980–8577 Japan

3. Jiangsu Key Laboratory of Micro and Nano Heat Fluid Flow Technology and Energy Application School of Physical Science and Technology Suzhou University of Science and Technology Suzhou Jiangsu 215009 China

4. State Key Laboratory of Information Photonics and Optical Communications & School of Science Beijing University of Posts and Telecommunications Beijing 100876 China

5. School of Materials Science and Physics China University of Mining and Technology Xuzhou 221116 China

6. Faculty of Medicine Macau University of Science and Technology Av. Wai Long Macau SAR China

7. Department of Physics and Astronomy and Elmore Family School of Electrical and Computer Engineering and Birck Nanotechnology Center and Purdue Quantum Science and Engineering Institute Purdue University West Lafayette IN 47907 USA

8. Institute of Physics and Astronomy and Villum Center for Hybrid Quantum Materials and Devices Aarhus University Aarhus‐C 8000 Denmark

Abstract

AbstractWith the development of Raman spectroscopy and the expansion of its application domains, conventional methods for spectral data analysis have manifested many limitations. Exploring new approaches to facilitate Raman spectroscopy and analysis has become an area of intensifying focus for research. It has been demonstrated that machine learning techniques can more efficiently extract valuable information from spectral data, creating unprecedented opportunities for analytical science. This paper outlines traditional and more recently developed statistical methods that are commonly used in machine learning (ML) and ML‐algorithms for different Raman spectroscopy‐based classification and recognition applications. The methods include Principal Component Analysis, K‐Nearest Neighbor, Random Forest, and Support Vector Machine, as well as neural network‐based deep learning algorithms such as Artificial Neural Networks, Convolutional Neural Networks, etc. The bulk of the review is dedicated to the research advances in machine learning applied to Raman spectroscopy from several fields, including material science, biomedical applications, food science, and others, which reached impressive levels of analytical accuracy. The combination of Raman spectroscopy and machine learning offers unprecedented opportunities to achieve high throughput and fast identification in many of these application fields. The limitations of current studies are also discussed and perspectives on future research are provided.

Funder

Macau University of Science and Technology

Publisher

Wiley

Subject

Atomic and Molecular Physics, and Optics,Electronic, Optical and Magnetic Materials

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