利用深度递归神经网络预测太阳辐照度

Ahmad Alzahrani, P. Shamsi, M. Ferdowsi, C. Dagli
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引用次数: 32

摘要

太阳辐照度预测对电力系统发电的各个方面都有重要的影响。该预测模型可用于改进可再生能源系统的规划和运行,并可改善购电过程,为电力公司带来诸多优势。辐照度受多种因素的影响,如云和尘埃,这对物理模型预测和捕获动力学变得具有挑战性。通常使用统计方法来预测辐照度。这些方法包括自回归移动平均、支持向量机和人工神经网络。现有方法的不足和挑战包括预测精度低、大数据可扩展性低、无法捕获长期依赖关系。本文采用深度递归神经网络对太阳辐照度进行预测。深度递归神经网络(Deep recurrent neural network, DRNN)是一种具有更多隐藏层的人工神经网络,其目的是提高模型的复杂性并能够提取高级特征。神经网络使用来自加拿大国家资源的真实数据进行训练、测试和验证。仿真和实验结果与其他方法进行了比较,说明了该方法的优越性。
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Solar irradiance forecasting using deep recurrent neural networks
Solar irradiance prediction has a significant impact on various aspects of power system generation. The predictive models can be deployed to improve the planning and operation of renewable systems and can improve the power purchase process and bring several advantages to the power utilities. The irradiance is affected by several factors, such as clouds and dust, and it becomes challenging for physical models to predict and capture the dynamics. The statistical methods are commonly used to predict the irradiance. These methods include autoregressive moving average, support vector machine, and artificial neural network. Deficiencies and challenges of existing methods include low prediction accuracy, low scalability for big data, and inability to capture long-term dependencies. In this paper, a deep recurrent neural network is used to predict the solar irradiance. Deep recurrent neural network (DRNN) is an artificial neural network with more hidden layers to improve the complexity of the model and enable the extraction of high-level features. The neural network is trained, tested, and validated using real data from the National Resources in Canada. The simulation and experimental results are compared to other methods to illustrate the advantages using the proposed approach.
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