Evaluation of Feature Selection Methods in Estimation of Precipitation Based on Deep Learning Artificial Neural Networks

被引:0
作者
Mohammad Taghi Sattari
Anca Avram
Halit Apaydin
Oliviu Matei
机构
[1] University of Tabriz,Department of Water Engineering, Faculty of Agriculture
[2] Technical University of Cluj-Napoca,Department of Electrical Engineering, Electronics and Computer Science
[3] North University Center of Baia Mare,Department of Agricultural Engineering, Faculty of Agriculture
[4] Ankara University,undefined
来源
Water Resources Management | 2023年 / 37卷
关键词
Precipitation; Artificial intelligence; Feature selection; Deep learning; Stochastic gradient descent; Feature weights; H; O cluster;
D O I
暂无
中图分类号
学科分类号
摘要
Precipitation is the most important element of the water cycle and an indispensable element of water resources management. This paper’s aim is to model the monthly precipitation in 8 precipitation observation stations in the province of Hamadan, Iran. The effects and role of different feature weights pre-processing methods (Weight by deviation, Weight by PCA, Weight by correlation and Weight by Support Vector Machine) on artificial intelligence modeling were investigated. Deep learning method based on a multi-layer feed-forward artificial neural network that is trained with Stochastic Gradient Descent using back-propagation (DL-SGD) and Convolutional Neural Networks (CNN) modelling were applied. The precipitation of each station is modeled using the precipitation values of the other stations. The best result, among all scenarios, at the Vasaj station according to the DL-SGD method (CC = 0.9845, NS = 0.9543 and RMSE = 10.4169 mm) and at the Varayineh station according to the CNN method (CC = 0.9679, NS = 0.9362 and RMSE = 16.0988 mm) were estimated.
引用
收藏
页码:5871 / 5891
页数:20
相关论文
共 50 条
  • [21] Distribution-dependent feature selection for deep neural networks
    Zhao, Xuebin
    Li, Weifu
    Chen, Hong
    Wang, Yingjie
    Chen, Yanhong
    John, Vijay
    APPLIED INTELLIGENCE, 2022, 52 (04) : 4432 - 4442
  • [22] Feature Selection Methods for Deep Learning Models of Soft Sensors in Oil Refining
    I. S. Lazukhin
    M. I. Petrovskiy
    I. V. Mashechkin
    Moscow University Physics Bulletin, 2024, 79 (Suppl 2) : S872 - S889
  • [23] Deep Learning Based Feature Selection and Ensemble Learning for Sintering State Recognition
    Xu, Xinran
    Zhou, Xiaojun
    Wozniak, Marcin
    SENSORS, 2023, 23 (22)
  • [24] Feature selection, ensemble learning, and artificial neural networks for short-range wind speed forecasts
    Papazek, Petrina
    Schicker, Irene
    Plant, Claudia
    Kann, Alexander
    Wang, Yong
    METEOROLOGISCHE ZEITSCHRIFT, 2020, 29 (04) : 307 - 322
  • [25] Feature Selection With Neural Networks
    Philippe Leray
    Patrick Gallinari
    Behaviormetrika, 1999, 26 (1) : 145 - 166
  • [26] TRAINING DATA REDUCTION IN DEEP NEURAL NETWORKS WITH PARTIAL MUTUAL INFORMATION BASED FEATURE SELECTION AND CORRELATION MATCHING BASED ACTIVE LEARNING
    Zheng, Jian
    Yang, Wei
    Li, Xiaohua
    2017 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2017, : 2362 - 2366
  • [27] Feature selection with neural networks
    Verikas, A
    Bacauskiene, M
    PATTERN RECOGNITION LETTERS, 2002, 23 (11) : 1323 - 1335
  • [28] Deep neural network-based feature selection with local false discovery rate estimation
    Cao, Zixuan
    Sun, Xiaoya
    Fu, Yan
    APPLIED INTELLIGENCE, 2025, 55 (01)
  • [29] Sentiment classification: Feature selection based approaches versus deep learning
    Uysal, Alper Kursat
    Murphey, Yi Lu
    2017 IEEE INTERNATIONAL CONFERENCE ON COMPUTER AND INFORMATION TECHNOLOGY (CIT), 2017, : 23 - 30
  • [30] Deep Neural Networks for Precipitation Estimation from Remotely Sensed Information
    Tao, Yumeng
    Gao, Xiaogang
    Ihler, Alexander
    Hsu, Kuolin
    Sorooshian, Soroosh
    2016 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2016, : 1349 - 1355