Sustainable energy: Advancing wind power forecasting with grey wolf optimization and GRU models

被引:0
|
作者
Al-Ibraheemi, Zainab [1 ]
Al-Janabi, Samaher [1 ]
机构
[1] Univ Babylon, Fac Sci Women SCIW, Dept Comp Sci, Babylon, Iraq
关键词
GWO; PCA; GRU; Return energy; Enhanced performance; Renewable energy;
D O I
10.1016/j.rineng.2024.102930
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Wind power forecasting is critical for optimizing energy use and ensuring the reliability of wind power systems in renewable energy. This paper introduces a novel method that combines the Grey Wolf Optimization (GWO) algorithm with data compression techniques to enhance feature selection and reduce redundancy in wind speed prediction. By employing GWO, essential features were identified by grouping the dataset into intervals and analyzing their frequencies. Performance evaluation was conducted using various compression measures, including Rate DC-Miss, Rate DC-MEF, and Rate DC-BDG, compared with other models such as extreme gradient boosting, space-time graph neural networks, and deep learning models. The study's results show significant improvements in accuracy and efficiency for predicting wind speed compared to existing techniques. The proposed approach addresses both larger datasets and the impact of noise samples on prediction errors. Additionally, an MLDDR model was introduced to predict DC power generated from wind datasets, encompassing five stages: Data Preparation, Feature Selection, Data Compression, GRU-Based Predictions, and Rate of Reduction. Data reduction results are notable. The original wind dataset (104857613) was reduced to 1093913 after processing missing values, achieving a reduction rate of 0.136. Applying the MEF-GWO algorithm further reduced the dataset to 109395, with a reduction rate of 0.385. The BDG dataset was compressed to 1805, with a reduction rate of 0.607. In terms of prediction performance, the GRU model was evaluated on three datasets: the original, MEF, and BDG-GWO datasets. The GRU model demonstrated the highest accuracy (99.20 %) with the BDG-GWO dataset, with precision (0.9965), recall (0.9978), and F1 scores (0.9897) indicating superior performance. Training and testing times varied significantly, highlighting the computational challenges associated with deep learning techniques. This research addresses both programming and application challenges. Programming challenges include high computational demands and the trial-and-error nature of parameter determination in deep learning, mitigated by using GWO. Application challenges involve reducing large datasets, grouping them into intervals, and evaluating performance using different compression measures. The main research questions addressed include the suitability of the GWO algorithm for dataset reduction in terms of dimensions (features and records) and the effectiveness of combining GWO with deep learning, specifically GRU, for enhanced prediction results. The study concludes that the GWO-PCA and GRU combination significantly improves prediction accuracy and reduces implementation time.
引用
收藏
页数:21
相关论文
共 50 条
  • [1] Wind Power Curve Modeling With Hybrid Copula and Grey Wolf Optimization
    Wei, Danxiang
    Wang, Jianzhou
    Li, Zhiwu
    Wang, Rui
    IEEE TRANSACTIONS ON SUSTAINABLE ENERGY, 2022, 13 (01) : 265 - 276
  • [2] Grey Wolf Optimization based Improved Protection of Wind Power Generation Systems
    Rezaei, Nima
    Uddin, M. Nasir
    Amin, I. Khairul
    Othman, M. Lutfi
    Abidin, I. Z.
    2018 IEEE INDUSTRY APPLICATIONS SOCIETY ANNUAL MEETING (IAS), 2018,
  • [3] Wind power forecasting using a GRU attention model for efficient energy management systems
    Boucetta, Lakhdar Nadjib
    Amrane, Youssouf
    Arezki, Saliha
    ELECTRICAL ENGINEERING, 2024, : 2595 - 2620
  • [4] Forecasting the wind power generation in China by seasonal grey forecasting model based on collaborative optimization
    Sui, Aodi
    Qian, Wuyong
    RAIRO-OPERATIONS RESEARCH, 2021, 55 (05) : 3049 - 3072
  • [5] A Framework-Based Wind Forecasting to Assess Wind Potential with Improved Grey Wolf Optimization and Support Vector Regression
    Hameed, Siddik Shakul
    Ramadoss, Ramesh
    Raju, Kannadasan
    Shafiullah, G. M.
    SUSTAINABILITY, 2022, 14 (07)
  • [6] A Combined Fuzzy GMDH Neural Network and Grey Wolf Optimization Application for Wind Turbine Power Production Forecasting Considering SCADA Data
    Heydari, Azim
    Nezhad, Meysam Majidi
    Neshat, Mehdi
    Garcia, Davide Astiaso
    Keynia, Farshid
    De Santoli, Livio
    Tjernberg, Lina Bertling
    ENERGIES, 2021, 14 (12)
  • [7] A novel MPPT design for a wind energy conversion system using grey wolf optimization
    Rashmi, G.
    Linda, M. Mary
    AUTOMATIKA, 2023, 64 (04) : 798 - 806
  • [8] A Hybrid of Grey Wolf Optimization and Genetic Algorithm for Optimization of Hybrid Wind and Solar Renewable Energy System
    Diriba Kajela Geleta
    Mukhdeep Singh Manshahia
    Journal of the Operations Research Society of China, 2022, 10 : 749 - 762
  • [9] A Hybrid of Grey Wolf Optimization and Genetic Algorithm for Optimization of Hybrid Wind and Solar Renewable Energy System
    Geleta, Diriba Kajela
    Manshahia, Mukhdeep Singh
    JOURNAL OF THE OPERATIONS RESEARCH SOCIETY OF CHINA, 2022, 10 (04) : 749 - 762
  • [10] Wind power system based state estimation and measurement using weighted Grey Wolf Optimization
    Liu, Chao
    Li, Qingquan
    Wei, Linjun
    Li, Changgang
    COMPUTERS & ELECTRICAL ENGINEERING, 2023, 110