Solar Power Prediction using LTC Models
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Published:2022-09-30
Issue:3
Volume:10
Page:475-480
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ISSN:2347-470X
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Container-title:International Journal of Electrical and Electronics Research
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language:en
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Short-container-title:IJEER
Author:
Gupta Anunay1, Gupta Anindya1, Bansal Apoorv1, Tripathi Madan Mohan1
Affiliation:
1. Electrical Engineering, DTU, New Delhi, India
Abstract
Renewable energy production has been increasing at a tremendous rate in the past decades. This increase in production has led to various benefits such as low cost of energy production and making energy production independent of fossil fuels. However, in order to fully reap the benefits of renewable energy and produce energy in an optimum manner, it is essential that we forecast energy production. Historically deep learning-based techniques have been successful in accurately forecasting solar energy production. In this paper we develop an ensemble model that utilizes ordinary differential based neural networks (Liquid Time constant Networks and Recurrent Neural networks) to forecast solar power production 24 hours ahead. Our ensemble is able to achieve superior result with MAPE of 5.70% and an MAE of 1.07 MW.
Publisher
FOREX Publication
Subject
Electrical and Electronic Engineering,Engineering (miscellaneous)
Reference22 articles.
1. Z. Andreopoulou, C. Koliouska, E. Galariotis, and C. Zopounidis, “Renewable energy sources: Using PROMETHEE II for ranking websites to support market opportunities,” Technol. Forecast. Soc. Change, vol. 131, no. July 2017, pp. 3137, 2018. 2. E. Zafeiriou, G. Arabatzis, and T. Koutroumanidis, “The fuelwood market in Greece: An empirical approach,” Renew. Sustain. Energy Rev., vol. 15, no. 6, pp. 30083018, 2011. 3. D. Gielen, “Renewable energy technologies: Cost analysis serieswind turbine,” Int. Renew. Energy Agency, vol. 1, no. 5, pp. 164, Jun. 2012. 4. M. Q. Raza, M. Nadarajah, and C. Ekanayake, “On recent advances in PV output power forecast,” Sol. Energy, vol. 136, no. September 2019, pp. 125144, 2016. 5. A. Tuohy, J. Zack, S. E. Haupt, J. Sharp, M. Ahlstrom, S. Dise, E. Grimit, C. Mohrlen, M. Lange, M. G. Casado, J. Black, M. Marquis, and C. Collier, ”Solar forecasting: Methods, challenges, and performance,” IEEE Power and Energy Magazine, vol. 13, no. 6, pp. 50-59, November/December 2015.
Cited by
1 articles.
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