2020
DOI: 10.1109/access.2020.2967900
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Day-Ahead Solar Irradiation Forecasting Utilizing Gramian Angular Field and Convolutional Long Short-Term Memory

Abstract: The operations of power systems are becoming more challenging on account of the high penetration of renewable power generation, including photovoltaic systems. One method for improving the power system operation involves making accurate forecasts of day-ahead solar irradiation, enabling operators to minimize uncertainty in managing the balance between generation and load. To overcome the limitations of Long Short-term Memory (LSTM) in a one-dimensional forecasting problem, this work proposes a novel method in … Show more

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Cited by 65 publications
(34 citation statements)
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“…where • means hadamard product, and W means weight [4,11,17]. Deep fully connected-LSTM (DFC-LSTM), which is a multivariate type of LSTM that uses multiple LSTM layers, was applied in this study as it is easy to learn with the FC layer, and learns temporal features [18,19]. DFC-LSTM is composed of five LSTM layers and one FC layer.…”
Section: Dfc-lstmmentioning
confidence: 99%
See 2 more Smart Citations
“…where • means hadamard product, and W means weight [4,11,17]. Deep fully connected-LSTM (DFC-LSTM), which is a multivariate type of LSTM that uses multiple LSTM layers, was applied in this study as it is easy to learn with the FC layer, and learns temporal features [18,19]. DFC-LSTM is composed of five LSTM layers and one FC layer.…”
Section: Dfc-lstmmentioning
confidence: 99%
“…CLSTM system combines CNN (convolutional neural network) and LSTM to improve the solving capability of sequential images. CLSTM is known for being able to learn representation from spatiotemporal features and learning processes by sequence to sequence that uses the input of the image [4,11,19]. Figure 5 shows the inner structure of CLSTM that uses convolutional structure in state-to-state and inputto-state transitions [4,11].…”
Section: Dclstmmentioning
confidence: 99%
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“…By presenting a different perspective in time series data representation, the studies that transform time series into images have gained importance in recent years. These studies, which are used in many different application areas, were carried out for the following purposes: human activity recognition (Qin et al, 2020), day-ahead solar irradiation forecasting (Hong et al, 2020), traffic incident detection (Liu et al, 2020), single residential load forecasting (Estebsari et al, 2020), fault diagnosis of induction motors (Hsueh et al, 2020), and fraud detection (Zhang et al, 2018).…”
Section: Introductionmentioning
confidence: 99%
“…The success of this alternative relies on the low computational burden it imposes on the forecast algorithm. On the other hand, ANNs have been extensively used for daily solar irradiance forecasts [28]- [33]. The forecast performance of an ANN relies on the learning algorithm along with the data available for the training process, the transfer function, the architecture, the nonlinear mapping capacity and the choice of input variables.…”
Section: Introductionmentioning
confidence: 99%