基于 2D-CNN 的多模型短期光伏功率预测嵌入拉普拉奇注意点

IF 4.7 3区 工程技术 Q2 ENERGY & FUELS
Tuyen Nguyen-Duc , Hieu Do-Dinh , Goro Fujita , Son Tran-Thanh
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引用次数: 0

摘要

随着可再生能源(RE)并入电网的蓬勃发展,准确的光伏发电功率预测被认为是维持电力系统可靠性和稳定性的关键任务,因为该技术严重依赖于各种外部因素,从而导致输出功率的波动。然而,由于低成本的测量和数据采集设备,输入数据的质量较差在实际情况中非常普遍,这给预测模型深入提取输入数据的空间和时间相关性带来了巨大挑战。本研究提出了一种嵌入拉普拉斯注意机制的多二维卷积神经网络(2D-CNN),用于短期光伏功率预测。通过以二维形式查看输入序列,可以构建输入图,并通过卷积操作捕捉变量之间的相互关联特征。此外,由于多个 CNN 层以并行架构工作,可以检测到隐藏在输入图中的不同表征,从而使所提出的模型能够在不修改初始参数的情况下,在各个预测时间步长内发挥出良好的性能。为了减少输入数据中存在的无关变量的衰减影响,采用了拉普拉斯注意机制。注意力矩阵在训练过程中动态修改,以产生准确的注意力矩阵,该矩阵代表变量之间的相关性。因此,模型能够关注信息特征,忽略负面特征。在两个具有相反特征的不同数据集上进行的实验深入揭示了所提模型相对于基线模型的优势,这有力地证明了所提模型的效率,尤其是在处理具有韧性特征的数据集时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi 2D-CNN-based model for short-term PV power forecast embedded with Laplacian Attention

Amid the bloom of Renewable energy (RE) integrated into the grid, an accurate Photovoltaic(PV) power forecast is considered to be a crucial task in maintaining the reliability and stability of the power systems since this technology strongly depends on various external factors, causing the fluctuation in the output power. However, the poor quality of input data, which is very common in practical circumstances owing to the low-cost measurement and data acquisition devices, poses an enormous challenge for the predictive model to deeply extract the spatial and temporal correlation of the input data. This study proposes a Multi Two-Dimensional Convolutional Neural Network (2D-CNN) for short-term PV power forecast embedded with Laplacian Attention mechanism. By viewing the input sequences in a 2D form, the input map is constructed, and the interconnected feature among variables can be captured by convolution operation. Moreover, with the multiple CNN layers working in parallel architecture, different representations hidden inside the input map can be detected, enabling the proposed model to bring out promising performance across forecast time-step without modifying its initial parameters. In order to reduce the decay impact of irrelevant variables existing inside the input data, the Laplacian Attention mechanism is employed. The Attention matrix is dynamically modified during the training process to produce an accurate attention matrix, which represents the correlation between variables. Therefore, the model is able to focus on informative features and ignore negative ones. The experiments conducted on two different datasets with opposite characteristics provide deep insights into the strength of the proposed model over the baseline model, which strongly demonstrates the efficiency of the proposed model, especially when dealing with datasets bearing tough characteristics.

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来源期刊
Energy Reports
Energy Reports Energy-General Energy
CiteScore
8.20
自引率
13.50%
发文量
2608
审稿时长
38 days
期刊介绍: Energy Reports is a new online multidisciplinary open access journal which focuses on publishing new research in the area of Energy with a rapid review and publication time. Energy Reports will be open to direct submissions and also to submissions from other Elsevier Energy journals, whose Editors have determined that Energy Reports would be a better fit.
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