Optimization Ensemble Weights Model for Wind Forecasting System
Computers, Materials & Continua , Tech Science Press • 2022
Publication Information
Authors
Amel Ali Alhussan1, El-Sayed M. El-kenawy2,3, Hussah Nasser AlEisa1,*, M. El-SAID4,5,
Amel Ali Alhussan, El-Sayed M. El-kenawy, Hussah Nasser AlEisa, M. El-SAID,Sayed A. Wardand Doaa Sami Khafaga
Keywords
Guided Whale Optimization Algorithm (Guided WOA); forecast-
Guided Whale Optimization Algorithm (Guided WOA); forecast-ing; machine learning; weighted ensemble model; wind direction
Journal
Computers, Materials & Continua , Tech Science Press
Publisher
Computers, Materials & Continua , Tech Science Press
Volume
CMC, 2022, vol.73, no.2
Issue
CMC, 2022, vol.73, no.2
Pages
2619-2635
publication.type
Local
Paper Link
Not Available
Supplementary Materials
Not Available
Abstract
Abstract: Effective technology for wind direction forecasting can be realized using the recent advances in machine learning. Consequently, the stability and safety of power systems are expected to be significantly improved. However,
the unstable and unpredictable qualities of the wind predict the wind direction a challenging problem. This paper proposes a practical forecasting approach based on the weighted ensemble of machine learning models. This weighted ensemble is optimized using a whale optimization algorithm guided by particle
swarm optimization (PSO-Guided WOA). The proposed optimized weighted ensemble predicts the wind direction given a set of input features. The conducted experiments employed the wind power forecasting dataset, freely available on Kaggle and developed to predict the regular power generation at seven wind farms over forty-eight hours. The recorded results of the conducted
experiments emphasize the effectiveness of the proposed ensemble in achieving accurate predictions of the wind direction. In addition, a comparison is established between the proposed optimized ensemble and other competing
optimized ensembles to prove its superiority. Moreover, statistical analysis using one-way analysis of variance (ANOVA) and Wilcoxon’s rank-sum are provided based on the recorded results to confirm the excellent accuracy achieved by the proposed optimized weighted ensemble.
the unstable and unpredictable qualities of the wind predict the wind direction a challenging problem. This paper proposes a practical forecasting approach based on the weighted ensemble of machine learning models. This weighted ensemble is optimized using a whale optimization algorithm guided by particle
swarm optimization (PSO-Guided WOA). The proposed optimized weighted ensemble predicts the wind direction given a set of input features. The conducted experiments employed the wind power forecasting dataset, freely available on Kaggle and developed to predict the regular power generation at seven wind farms over forty-eight hours. The recorded results of the conducted
experiments emphasize the effectiveness of the proposed ensemble in achieving accurate predictions of the wind direction. In addition, a comparison is established between the proposed optimized ensemble and other competing
optimized ensembles to prove its superiority. Moreover, statistical analysis using one-way analysis of variance (ANOVA) and Wilcoxon’s rank-sum are provided based on the recorded results to confirm the excellent accuracy achieved by the proposed optimized weighted ensemble.
Staff Members - Benha University