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Laser induced breakdown spectroscopy (LIBS) combined with adaptive particle swarm optimization-based radial basis neural network (APSO-RBF) for rapid identification of soils from different regions

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posted on 2024-04-01, 06:40 authored by Junjie Chen, Xiaojian Hao, Shuaijun Li, Biming Mo, Junjie Ma, Wang Zheng, HongKai Wei, heng zhang
Traditional soil identification methods require a lot of time, while this paper proposes a combination of laser-induced breakdown spectroscopy (LIBS) and adaptive particle swarm optimization-based radial basis neural network (APSO-RBF), which is able to quickly and accurately classify soils from different regions, and the experimental results show that the classification accuracy in the test set reaches 99.8148%, which is verified by comparing with the backpropagation ( BP) algorithm, Adaptive Particle Swarm Optimization-Based Backpropagation (APSO-BP) algorithm and Radial Basis Neural Network (RBF) algorithm, which verifies the powerful classification performance of the model.

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Funder Name

National Natural Science Foundation of China (52075504); Shanxi Provincial Key Research and Development Project (202302150101016); State Key Laboratory of Quantum Optics and Optical Quantum Devices (KF202301); Shanxi Key Subjects Construction (1331KSC); the Open Project Program of Shanxi Key Laboratory of Advanced Semiconductor Optoelectronic Devices and Systems (2023SZKF11); Postgraduate Scientific Research Innovation Project of Shanxi Province (2023KY584); Postgraduate Scientific Research Innovation Project (2023KY608)

Preprint ID

112311

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