LAPSE:2023.34619
Published Article

LAPSE:2023.34619
Deep-Learning-Based Adaptive Model for Solar Forecasting Using Clustering
April 27, 2023
Abstract
Accurate short-term solar forecasting is challenging due to weather uncertainties associated with cloud movements. Typically, a solar station comprises a single prediction model irrespective of time and cloud condition, which often results in suboptimal performance. In the proposed model, different categories of cloud movement are discovered using K-medoid clustering. To ensure broader variation in cloud movements, neighboring stations were also used that were selected using a dynamic time warping (DTW)-based similarity score. Next, cluster-specific models were constructed. At the prediction time, the current weather condition is first matched with the different weather groups found through clustering, and a cluster-specific model is subsequently chosen. As a result, multiple models are dynamically used for a particular day and solar station, which improves performance over a single site-specific model. The proposed model achieved 19.74% and 59% less normalized root mean square error (NRMSE) and mean rank compared to the benchmarks, respectively, and was validated for nine solar stations across two regions and three climatic zones of India.
Accurate short-term solar forecasting is challenging due to weather uncertainties associated with cloud movements. Typically, a solar station comprises a single prediction model irrespective of time and cloud condition, which often results in suboptimal performance. In the proposed model, different categories of cloud movement are discovered using K-medoid clustering. To ensure broader variation in cloud movements, neighboring stations were also used that were selected using a dynamic time warping (DTW)-based similarity score. Next, cluster-specific models were constructed. At the prediction time, the current weather condition is first matched with the different weather groups found through clustering, and a cluster-specific model is subsequently chosen. As a result, multiple models are dynamically used for a particular day and solar station, which improves performance over a single site-specific model. The proposed model achieved 19.74% and 59% less normalized root mean square error (NRMSE) and mean rank compared to the benchmarks, respectively, and was validated for nine solar stations across two regions and three climatic zones of India.
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Keywords
clearness index forecasting, cloud cover, clustering, DTW
Subject
Suggested Citation
Malakar S, Goswami S, Ganguli B, Chakrabarti A, Roy SS, Boopathi K, Rangaraj AG. Deep-Learning-Based Adaptive Model for Solar Forecasting Using Clustering. (2023). LAPSE:2023.34619
Author Affiliations
Malakar S: A.K. Choudhury School of Information Technology, University of Calcutta, Kolkata 700073, India [ORCID]
Goswami S: Bangabasi Morning College, University of Calcutta, Kolkata 700073, India
Ganguli B: Department of Statistics, University of Calcutta, Kolkata 700073, India
Chakrabarti A: A.K. Choudhury School of Information Technology, University of Calcutta, Kolkata 700073, India
Roy SS: Department of Statistics, University of Calcutta, Kolkata 700073, India
Boopathi K: National Institute of Wind Energy (NIWE), The Ministry of New and Renewable Energy, Government of India, New Delhi 110003, India
Rangaraj AG: National Institute of Wind Energy (NIWE), The Ministry of New and Renewable Energy, Government of India, New Delhi 110003, India
Goswami S: Bangabasi Morning College, University of Calcutta, Kolkata 700073, India
Ganguli B: Department of Statistics, University of Calcutta, Kolkata 700073, India
Chakrabarti A: A.K. Choudhury School of Information Technology, University of Calcutta, Kolkata 700073, India
Roy SS: Department of Statistics, University of Calcutta, Kolkata 700073, India
Boopathi K: National Institute of Wind Energy (NIWE), The Ministry of New and Renewable Energy, Government of India, New Delhi 110003, India
Rangaraj AG: National Institute of Wind Energy (NIWE), The Ministry of New and Renewable Energy, Government of India, New Delhi 110003, India
Journal Name
Energies
Volume
15
Issue
10
First Page
3568
Year
2022
Publication Date
2022-05-13
ISSN
1996-1073
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PII: en15103568, Publication Type: Journal Article
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LAPSE:2023.34619
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https://doi.org/10.3390/en15103568
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Apr 27, 2023
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