Solar Forecasting Using Remote Solar Monitoring Stations and Artificial Neural Networks

Graeme Vanderstar, P. Musílek, A. Nassif
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引用次数: 19

Abstract

The need to accurately forecast available solar irradiance is a significant issue for the power industry and poses special challenges for utilities who serve customers in isolated regions where weather forecast data may not be abundant. This paper proposes a method to forecast two hour ahead solar irradiance levels at a site in Northwestern Alberta, Canada using real-time solar irradiance measured both locally and at remote monitoring stations. This paper makes use of an Artificial Neural Network (ANN) to forecast the solar irradiance levels and uses the genetic algorithm to determine the optimal array size and positioning of solar monitoring stations to obtain the most accurate forecast from the ANN. The findings of this paper are that it is possible to use as few as five remote monitoring stations to obtain a near-peak forecasting accuracy from the algorithm and that providing adequate geospatial separation of the remote monitoring sites around the target site is more desirable than clustering the sites in the strictly upwind directions.
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利用远程太阳监测站和人工神经网络进行太阳预报
准确预测可用太阳辐照度的需求是电力行业的一个重要问题,这对那些服务于天气预报数据可能不丰富的偏远地区的客户的公用事业公司提出了特殊挑战。本文提出了一种利用当地和远程监测站实时测量的太阳辐照度,提前两小时预报加拿大阿尔伯塔西北部某地点太阳辐照度水平的方法。本文利用人工神经网络(Artificial Neural Network, ANN)对太阳辐照度水平进行预测,并利用遗传算法确定太阳监测站的最优阵列大小和位置,以获得最准确的预测结果。本文的研究结果表明,只需使用5个远程监测站就可以从算法中获得接近峰值的预测精度,并且在目标站点周围提供足够的远程监测站点的地理空间分离比在严格的逆风方向聚集站点更可取。
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