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A novel method for day-ahead solar power prediction based on hidden Markov model and cosine similarity

机译:基于隐马尔可夫模型和余弦相似性的前方太阳能预测的一种新方法

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摘要

Nowadays, with the emergence of new technologies such as smart grid and increasing the use of renewable energy in the grid, energy prediction has become more important in the electricity industry. Furthermore, with growing the integration of power generated from renewable energy sources into grids, an accurate forecasting tool for the reduction in undesirable effects of this scenario is essential. This study has developed a novel approach based on the hidden Markov model (HMM) for forecasting day-ahead solar power. The aim is to find a pattern of solar power changes at a given time in consecutive days. The proposed approach consists of two steps. In the first step, the cosine similarity is used to determine the similarity of solar power variations on consecutive days to a particular vector. In the second step, the obtained information from the first step is fed to HMM as a feature vector. These data are used for training and forecasting day-ahead solar power. After obtaining the preliminary results of the prediction, two known filters are utilized as post-processing to remove spikes and smooth the results. Finally, the performance of the proposed method is tested on real NREL data. No meteorological data (even solar radiation) are used; moreover, the model is fed only from the solar power of the past 23 days. To evaluate the proposed method, a feed-forward neural network and a simple HMM are examined with the same data and conditions. All three methods are tested with and without the post-processing. The results show that the proposed model is superior to other examined methods in terms of accuracy and computational time.
机译:如今,随着智能电网等新技术的出现,增加了在电网中使用可再生能源,能量预测在电力行业中变得更加重要。此外,随着从可再生能源生成的电力集成到网格中,这种情况下,这种情况的不良效果的准确预测工具至关重要。本研究开发了一种基于隐马尔可夫模型(HMM)的新方法,用于预测前方太阳能的日子。目的是在连续日期在给定时间找到太阳能变化的模式。建议的方法包括两个步骤。在第一步中,余弦相似度用于确定太阳能变化对特定矢量的太阳能变化的相似性。在第二步中,从第一步中获得的信息被馈送到HMM作为特征向量。这些数据用于培训和预测前一天的太阳能。在获得预测的初步结果之后,使用两种已知的过滤器作为后处理以去除尖峰并平滑结果。最后,在真实的NREL数据上测试了所提出的方法的性能。没有使用气象数据(甚至太阳辐射);此外,该模型仅从过去23天的太阳能供给。为了评估所提出的方法,通过相同的数据和条件检查前馈神经网络和简单的HMM。所有三种方法都有和没有后处理测试。结果表明,在准确性和计算时间方面,所提出的模型优于其他检查方法。

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