Comparison of Different Wind Speed Prediction Models for Wind Power Application

T. Ayodele, R. Olarewaju, J. Munda
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引用次数: 6

Abstract

In this paper, the capability of prediction models is compared for wind speed forecast at different time horizons (i.e. very-short term, short-term, medium term and long term horizons) with the aim of determining their prediction accuracy. The models include: Persistence, second order Markov chain, autoregressive moving average (ARMA) and Weibull models. The models have applications in the areas of electricity market clearing, regulation actions and maintenance scheduling to achieve optimal operating cost. The data used for the study consist of ten-minute average wind speeds for Alexander Bay region of South Africa. Statistical measure and error measures were employed for model validation. The key result reveals that the autoregressive model is best suited for very short and long term wind speed prediction while second order Markov chain is the most appropriate model for short and medium term prediction. Persistence model appears to be the least accurate of all the models for all time horizons.
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风电应用中不同风速预测模型的比较
本文比较了不同时间尺度(极短期、短期、中期和长期)风速预报模式的预报能力,以确定其预报精度。模型包括:持续模型、二阶马尔可夫链模型、自回归移动平均模型和威布尔模型。该模型可应用于电力市场结算、监管行动和维护调度等领域,以实现最优运行成本。这项研究使用的数据包括南非亚历山大湾地区10分钟的平均风速。采用统计度量和误差度量对模型进行验证。关键结果表明,自回归模型最适合于极短期和长期风速预测,二阶马尔可夫链模型最适合于中短期风速预测。对于所有的时间范围,持续模型似乎是所有模型中最不准确的。
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