人工智能技术在7天太阳能光伏发电功率预测中的应用

Raymond O. Kene, S. Chowdhury, T. Olwal
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引用次数: 1

摘要

为了能够有效地将电力分配给使用太阳能光伏(SPV)电池的消费者,需要有关于SPV发电的信息。这些信息最好来自于在任何电源之前预测SPV功率。本研究采用人工神经网络智能技术,对7天的SPV电功率进行预测。确定了每天产生的最大功率以及每天产生和预测的平均功率。有了这些资料,就可以最大限度地提高每日太阳辐照的短期可用性。统计回归分析已用于建立生产和预测功率之间的关系,使用统计函数,如平均偏差误差(MBE),均方误差(MSE),均方根误差(RMSE),平均绝对偏差(MAD),平均绝对百分比误差(MAPE)和相关系数(CC)。训练网络的算法是带前馈神经网络的反向传播算法。本研究共使用14300个数据集,并应用人工神经网络(ANN)进行预测分析。结果表明,使用人工神经网络预测其性能可以减轻SPV发电的不确定性,从而使SPV系统可以产生什么可见性。这使得负载均衡,高效的电力调度和准确的调度。
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Application of Artificial Intelligence Technique in Predicting 7-Days Solar Photovoltaic Electrical Power
To be able to dispatch electrical power effectively to consumers using solar photovoltaic (SPV) cells, there is a need to have information about the SPV power generation. This information is best derived from predicting the SPV power ahead of any supply. Artificial neural network intelligence technique is employed in this study with the aim of predicting SPV electrical power for a period of 7 days. The maximum power produced on a daily basis is been identified as well as the daily average power that is produced and predicted. With this information, the short-term availability of daily solar irradiation can be maximized. A statistical regression analysis has been used to establish the relationship between the produced and predicted power, using statistical functions like the mean bias error (MBE), the mean square error (MSE), root mean square error (RMSE), mean absolute deviation (MAD), mean absolute percentage error (MAPE), and the correlation coefficient (CC). The algorithm used in training the network is the backpropagation algorithm with feed-forward neural network. A total of 14,300 datasets have been used to establish this study with the application of artificial neural network (ANN) for prediction analysis. The result indicates that, the uncertainty in SPV power generation can be mitigated using ANN to predict its performance, thereby creating visibility as to what the SPV system can generate. This enables load balancing, efficient power dispatch and accurate scheduling.
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