[1] |
ZHANG Dai-feng, CUI Dong-wen.
Prediction of Daily Inflow Runoff of Three Gorges Reservoir Using Regularized Extreme Learning Machine Optimized by Three New Swarm Intelligent Algorithms
[J]. Journal of Changjiang River Scientific Research Institute, 2024, 41(7): 16-24.
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[2] |
LI Ju, CUI Dong-Wen.
Monthly Runoff Prediction Using Hybrid Kernel Extreme Learning Machine Based on Data Decomposition and Zebra Algorithm Optimization
[J]. Journal of Changjiang River Scientific Research Institute, 2024, 41(6): 42-50.
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[3] |
SONG Bao-gang, BAO Teng-fei, XIANG Zhen-yang, WANG Rui-jie.
Wavelet-based SSA-ELM Spatio-temporal Prediction Model for Dam Deformation
[J]. Journal of Changjiang River Scientific Research Institute, 2023, 40(8): 145-151.
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[4] |
CAO En-hua, BAO Teng-fei, HU Shao-pei, YUAN Rong-yao, YAN Tao.
A Deformation Prediction Model for Concrete Dam Based on Extreme Learning Machine Optimized by Variable Selection
[J]. Journal of Changjiang River Scientific Research Institute, 2022, 39(7): 59-65.
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[5] |
WU Hua-li, JIN Zhong-wu, ZHOU Yin-jun, LI Zhi-jing.
Evolution of Water and Sediment Processes in the Mainstream of National Nature Reserve for Rare and Endemic Fishes in the Upper Reaches of the Yangtze River under Changing Environment
[J]. Journal of Changjiang River Scientific Research Institute, 2021, 38(7): 7-13.
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[6] |
ZHANG Ying, ZHI Huan-le, JIANG Shui-hua.
Multi-risk Index Evaluation Approach for Levee Engineering Based on Extreme Learning Machine
[J]. Journal of Changjiang River Scientific Research Institute, 2021, 38(11): 80-85.
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[7] |
ZHAO Yu-luan, DONG Shun-zhou, KUANG Cheng-hua.
Spatiotemporal Pattern and Simulation of Forest Transition in Typical Mountainous Areas in the Upper Reaches of Yangtze River: A Case Study of Zunyi City, Guizhou Province
[J]. Journal of Changjiang River Scientific Research Institute, 2020, 37(4): 37-42.
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[8] |
ZHU Jing.
Study on Deformation Law of Foundation Pit by Multifractal Detrended Fluctuation Analysis and Extreme Learning Machine Improved by Particle Swarm Optimization
[J]. Journal of Changjiang River Scientific Research Institute, 2019, 36(3): 53-58.
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[9] |
XIA Wei, CHEN He-chun, WANG Ji-bao, LIU Chao-fan, CHEN Yan-chao, CHEN Shi-tong.
Characteristics of Turbulent Velocity in Open Channel Based on Chaos Theory
[J]. Journal of Changjiang River Scientific Research Institute, 2019, 36(12): 65-70.
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[10] |
SONG Yong-dong, SU Li-jun, ZHANG Chong-lei,SUN Chang-ning, QU Xin.
Reliability Analysis of Slopes Based on Extreme Learning Machine
[J]. Journal of Changjiang River Scientific Research Institute, 2018, 35(8): 78-83.
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[11] |
CHEN Jian-hong, LI Xiao-long, LIANG Wei-zhang.
PCA-ELM Model for Classification of Expansive Soil and Its Application
[J]. Journal of Changjiang River Scientific Research Institute, 2018, 35(12): 96-101.
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[12] |
LI Hua-jin,XU Qiang,WANG Si-cheng,QI Xing,PENG Da-lei,HE Yu-sen.
Application of a Novel Predictive Model Integrating Wavelet Analysis,Boosting Regression Tree and Extreme Learning Machine toLoess Landslide Displacement
[J]. Journal of Changjiang River Scientific Research Institute, 2017, 34(9): 63-69.
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[13] |
DAI Xing-lan.
Application of SVR Ensemble Model to Annual Runoff Forecasting
[J]. Journal of Changjiang River Scientific Research Institute, 2015, 32(4): 12-17.
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[14] |
LI Dai-hua, CUI Dong-wen.
Phase Space Reconstruction of Support Vector Machine in Runoff Simulation
[J]. Journal of Changjiang River Scientific Research Institute, 2013, 30(10): 21-26.
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[15] |
WANG Wen-Mei, SUN Rong-Lin, GAO Yan.
Modified BP Neural Network for Runoff Forecasting in the Karst Area
[J]. Journal of Changjiang River Scientific Research Institute, 2012, 29(4): 11-16.
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