Big Data Analytics: Energy Forecasting Computational Intelligence Methods
Publication type: Book Chapter
Publication date: 2024-08-27
scimago Q4
SJR: 0.166
CiteScore: 1.0
Impact factor: —
ISSN: 23673370, 23673389
Abstract
With forecasting models growing more common, energy forecasting will be utilized to enhance the energy infrastructure’s layout, management, and application. Energy is one of the most significant accelerators for social and environmental improvement and improving economies. To consistently and successfully fulfill consumer electrical requirements, it is necessary to use efficient methods, make cost-effective deliveries, and adhere to a timeframe. Estimating the generation of electricity, particularly from providers of clean energy, and consumer load is essential because power plants are so reliant on the unpredictable behavior of the environment. The reliability of predictions must be increased if we are to speed up the judging process. Although big data can handle huge-scale details and detect relationships provided to deep learning methods which decrease mistakes over traditional approaches, big data had only recently started to be employed in energy forecasting. The initial phase in enhancing the dependability of clean energy production and modernizing the overall grid is to investigate artificial intelligence and machine learning technologies in this endeavor and to determine their benefits and drawbacks. A forecasting model was developed using each of the data separation approaches studied in this study. There are now technical problems with energy forecasting algorithms that need to be rectified. The current moment and forthcoming years are the timeframes for forecasting in the short term. The medium-term projection window includes the upcoming days to weeks. Long-term predictions are made in terms of either months or years. These problems were noted, and solutions were also suggested. In our view, big data is crucial for forecasts’ accuracy.
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Tiwari S. Big Data Analytics: Energy Forecasting Computational Intelligence Methods // Lecture Notes in Networks and Systems. 2024. Vol. 981 LNNS. p. 174-190.
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Tiwari S. Big Data Analytics: Energy Forecasting Computational Intelligence Methods // Lecture Notes in Networks and Systems. 2024. Vol. 981 LNNS. p. 174-190.
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TY - GENERIC
DO - 10.1007/978-3-031-60591-8_15
UR - https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85203180560&origin=inward
TI - Big Data Analytics: Energy Forecasting Computational Intelligence Methods
T2 - Lecture Notes in Networks and Systems
AU - Tiwari, Seemant
PY - 2024
DA - 2024/08/27
PB - Springer Nature
SP - 174-190
VL - 981 LNNS
SN - 2367-3370
SN - 2367-3389
ER -
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@incollection{2024_Tiwari,
author = {Seemant Tiwari},
title = {Big Data Analytics: Energy Forecasting Computational Intelligence Methods},
publisher = {Springer Nature},
year = {2024},
volume = {981 LNNS},
pages = {174--190},
month = {aug}
}
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