Application of Artificial Neural Network to Predict Wind Speed: Case Study in Duhok City, Iraq

Author:

Mahdi Berivan H,Yousif Kamil M,Melhum Amera I

Abstract

Abstract Wind speed prediction is very critical for clean energy electricity generation, commitment decision-making, and wind farms planning strategy studies. It is also important for the wind energy industry to determine the characteristics of wind speed for site selection and to know the output of the wind turbine. A prediction of Daily Average Wind Speed (DAWS) for Duhok city, Iraq using Feed Forward (FF) Artificial Neural Network (ANN) is investigated using weather records for Duhok city, Iraq. To build and train the suggested network, MATLAB software is used. The variables that used as inputs are a daily average of the Humidity (H), Pressure (P), Minimum Temperature (Tmin), Solar Radiation (SR), Maximum Temperature (Tmax), day (D) and month (M) to estimate DAWS. The suggested networks are analyzed using Mean Absolute Error (MAE) and Root Mean Square Error (RMSE) as statistical values. The proposed network forecasts accurate daily wind speed values based on the outcomes. This suggested method helps to predict the weather and to estimate the output strength of wind turbines.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference25 articles.

1. A Neural Networks Approach for Wind Speed Prediction;Mohamed;Pergamon Renewable Energy,1998

2. Short-term Wind Speed Forecasting by Using Hysteretic ELM Model;L C;Computer Technology and Development,2017

3. Stacked-Locally Weighted Ensemble Learning for Wind Speed Prediction;Shi;International Journal of Machine Learning and Computing,2016

4. Wind speed trends over the contiguous United States;Pryor;J Geophys Res,2010

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