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Feng Hu
Feng Hu
School of Electrical and Information Engineering, Anhui University of Science and Technology
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Title
Cited by
Cited by
Year
A new DBSCAN parameters determination method based on improved MVO
W Lai, M Zhou, F Hu, K Bian, Q Song
Ieee Access 7, 104085-104095, 2019
1042019
Multispectral imaging: A new solution for identification of coal and gangue
F Hu, M Zhou, P Yan, K Bian, R Dai
Ieee Access 7, 169697-169704, 2019
542019
Identification of mine water inrush using laser-induced fluorescence spectroscopy combined with one-dimensional convolutional neural network
F Hu, M Zhou, P Yan, D Li, W Lai, K Bian, R Dai
RSC advances 9 (14), 7673-7679, 2019
422019
Selection of characteristic wavelengths using SPA for laser induced fluorescence spectroscopy of mine water inrush
F Hu, M Zhou, P Yan, D Li, W Lai, S Zhu, Y Wang
Spectrochimica Acta Part A: Molecular and Biomolecular Spectroscopy 219, 367-374, 2019
362019
A study of multispectral technology and two-dimension autoencoder for coal and gangue recognition
W Lai, M Zhou, F Hu, K Bian, H Song
Ieee Access 8, 61834-61843, 2020
352020
The study of coal gangue segmentation for location and shape predicts based on multispectral and improved Mask R-CNN
W Lai, F Hu, X Kong, P Yan, K Bian, X Dai
Powder Technology 407, 117655, 2022
272022
A Bayesian optimal convolutional neural network approach for classification of coal and gangue with multispectral imaging
F Hu, M Zhou, P Yan, Z Liang, M Li
Optics and Lasers in Engineering 156, 107081, 2022
222022
Multi-objective membrane search algorithm: A new solution for economic emission dispatch
W Lai, X Zheng, Q Song, F Hu, Q Tao, H Chen
Applied Energy 326, 119969, 2022
212022
Short-term electric load forecasting based on variational mode decomposition and grey wolf optimization
M Zhou, T Hu, K Bian, W Lai, F Hu, O Hamrani, Z Zhu
Energies 14 (16), 4890, 2021
212021
RF-PCA: A new solution for rapid identification of breast cancer categorical data based on attribute selection and feature extraction
K Bian, M Zhou, F Hu, W Lai
Frontiers in genetics 11, 566057, 2020
192020
A day-ahead industrial load forecasting model using load change rate features and combining FA-ELM and the AdaBoost algorithm
Z Zhu, M Zhou, F Hu, S Wang, J Ma, B Gao, K Bian, W Lai
Energy Reports 9, 971-981, 2023
172023
Accurate identification strategy of coal and gangue using infrared imaging technology combined with convolutional neural network
F Hu, K Bian
Ieee Access 10, 8758-8766, 2022
162022
Recognition method of coal and gangue combined with structural similarity index measure and principal component analysis network under multispectral imaging
F Hu, Y Hu, E Cui, Y Guan, B Gao, X Wang, K Wang, Y Liu, X Yao
Microchemical Journal 186, 108330, 2023
152023
Deep learning-based non-intrusive commercial load monitoring
M Zhou, S Shao, X Wang, Z Zhu, F Hu
Sensors 22 (14), 5250, 2022
152022
Rapid identification model of mine water inrush sources based on extreme learning machine
Y Wang, M Zhou, P Yan, F Hu, W Lai, Y Yang, Y Zhang
International Journal of Wireless and Mobile Computing 13 (4), 286-290, 2017
152017
基于多光谱成像和改进 YOLO v4 的煤矸石检测
来文豪, 周孟然, 胡锋, 卞凯, 宋红萍
Acta Optica Sinica 40 (24), 2411001, 2020
122020
PCANet: A common solution for laser-induced fluorescence spectral classification
F Hu, M Zhou, P Yan, K Bian, R Dai
IEEE Access 7, 107129-107141, 2019
112019
Recognition method of coal and gangue based on multispectral spectral characteristics combined with one-dimensional convolutional neural network
F Hu, M Zhou, R Dai, Y Liu
Frontiers in Earth Science 10, 893485, 2022
102022
CEEMD: A new method to identify mine water inrush based on the signal processing and laser-induced fluorescence
K Bian, M Zhou, F Hu, W Lai, M Huang
IEEE Access 8, 107076-107086, 2020
82020
Application of CNN in LIF fluorescence spectrum image recognition of mine water inrush
Z Meng-ran, L Wen-hao, W Ya, H Feng, L Da-tong, W Rui
Spectroscopy and Spectral Analysis 38 (7), 2262-2266, 2018
82018
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Articles 1–20