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Wind speed and power forecasting based on spatial correlation models

机译:基于空间相关模型的风速和功率预测

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Wind energy conversion systems (WECS) cannot be dispatched like conventional generators. This can pose problems for power system schedulers and dispatchers, especially if the schedule of wind power availability is not known in advance. However, if the wind speed can be reliably forecasted up to several hours ahead, the generating schedule can efficiently accommodate the wind generation. This paper illustrates a technique for forecasting wind speed and power output up to several hours ahead, based on cross correlation at neighboring sites. The authors develop an artificial neural network (ANN) that significantly improves forecasting accuracy comparing to the persistence forecasting model. The method is tested at different sites over a year.
机译:风能转换系统(WECS)不能像常规发电机那样进行调度。这可能给电力系统调度员和调度员带来问题,特别是如果事先不知道风力可用性的调度的话。但是,如果可以可靠地预测到几个小时以后的风速,则发电时间表可以有效地适应风力发电。本文说明了一种基于相邻站点的互相关性来预测长达数小时的风速和功率输出的技术。作者开发了一种人工神经网络(ANN),与持久性预测模型相比,该神经网络可显着提高预测准确性。该方法在一年中的不同地点进行了测试。

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