Short-Term Wind Speed Forecasting of Lelystad Wind Farm by Using ANN Algorithms

Kishan Bhushan Sahay, S. Srivastava
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引用次数: 1

Abstract

The installation of wind energy based electricity systems is growing at a very fast pace all over the world because of the increased urge of using renewable energy resources and environmental concerns regarding electricity generation. Forecasting wind speed is found to be critical for wind energy systems since it greatly influences its large-scale integration. The intermittent nature of wind speed leads to further problems in its large-scale integration in the power systems. Wind speed forecasting is essential to operate wind energy based power systems in an efficient and secure way. In this paper, different ANN algorithms have been applied to forecast short-term wind speed of Lelystad Wind Farm, Nederland using MATLAB R1 $\pmb{4}\mathbf{a}$. The data used in the forecasting are hourly historical data of the wind direction & wind speed. The simulation results have shown accurate one hour ahead forecasts with small error in wind speed forecasting.
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基于人工神经网络的leelystad风电场短期风速预测
由于使用可再生能源的需求增加以及对发电环境的关注,世界各地以风能为基础的电力系统的安装正在以非常快的速度增长。风速的预测对风能系统的大规模集成具有重要的影响。风速的间歇性导致其在电力系统中大规模集成的进一步问题。风速预报是保证风能发电系统高效、安全运行的关键。本文利用MATLAB R1 $\pmb{4}\mathbf{a}$,应用不同的人工神经网络算法对荷兰Lelystad风电场的短期风速进行预测。预报使用的数据是每小时的风向和风速的历史数据。模拟结果表明,提前1小时预报准确,风速预报误差小。
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