Examining different approaches for short-term load demand forecasting in microgrid management: a case study of a university in Nigeria
In remote regions, microgrids are increasingly recognized as dependable electricity sources, underscoring the necessity for precise short-term load demand forecasts to ensure efficient microgrid management. This study assessed three forecasting methodologies—Ridge Regression (RG), Autoreg...
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Main Author: | Barnabas Iliya Gwaivangmin |
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Format: | Article |
Language: | English |
Published: |
Academia.edu Journals
2024-05-01
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Series: | Academia Green Energy |
Online Access: | https://www.academia.edu/118710636/Examining_different_approaches_for_short_load_demand_forecasting_in_microgrid_management_a_case_study_of_a_university_in_Nigeria |
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