Forecasting Short-Term Solar PV Using Hierarchical Clustering and Cascade Model

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS International Journal of Grid and High Performance Computing Pub Date : 2023-01-20 DOI:10.4018/ijghpc.316154
Ben Wang, Kun-Ming Yu, Nattawat Sodsong, Ken H. Chuang
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Abstract

With the large-scale deployment of solar PV installations, managing the efficiency of the generation system became essential. Generally, the power output is heavily influenced by solar irradiance and sky conditions which are consistently changing. Thus, the ability to accurately forecast the solar PV power is critical for optimizing the generation system, estimating revenue, sustaining profits, and ensuring the quality of service. In this paper, the authors propose a solar PV forecasting model using multiple blocks of GRUs and RNN in a cascade model combined with hierarchical clustering to improve the overall prediction accuracy of solar PV forecast. This proposed model is a combination of hierarchical clustering, the Pearson correlation coefficient for feature selection, and the cascade model with GRU layer from k-means clustering and hierarchical clustering. These results, which are evaluated using NRMSE, show that hierarchical clustering is more suitable for solar PV forecast than k-means clustering.
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基于层次聚类和级联模型的短期太阳能光伏预测
随着太阳能光伏装置的大规模部署,管理发电系统的效率变得至关重要。一般来说,功率输出受到不断变化的太阳辐照度和天空条件的严重影响。因此,准确预测太阳能光伏发电的能力对于优化发电系统、估算收益、维持利润和确保服务质量至关重要。为了提高太阳能光伏预测的整体预测精度,本文提出了一种利用gru和RNN的多块串级模型结合层次聚类的太阳能光伏预测模型。该模型结合了层次聚类、用于特征选择的Pearson相关系数以及k-means聚类和层次聚类中具有GRU层的级联模型。结果表明,分层聚类比k-means聚类更适合于太阳能光伏预测。
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来源期刊
CiteScore
1.70
自引率
10.00%
发文量
24
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