Development and testing of a micro-grid excess power production forecasting algorithms
Author(s) -
Angeliki Mavrigiannaki,
Nikos Kampelis,
Dionysia Kolokotsa,
Daniele Marchegiani,
Laura Standardi,
Daniela Isidori,
Cristina Christalli
Publication year - 2017
Publication title -
energy procedia
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.474
H-Index - 81
ISSN - 1876-6102
DOI - 10.1016/j.egypro.2017.09.583
Subject(s) - smart grid , flexibility (engineering) , production (economics) , scheduling (production processes) , grid , power grid , electricity , computer science , reliability engineering , process (computing) , electricity generation , engineering , power (physics) , real time computing , industrial engineering , operations management , electrical engineering , geometry , mathematics , physics , quantum mechanics , economics , macroeconomics , operating system , statistics
Traditional electricity grids lack flexibility in power generation and load operation in contrast to smart-micro grids that form semi-autonomous entities with energy management capabilities. Load forecasting is invaluable to smart micro-grids towards assisting the implementation of energy management schedules for cost-efficient and secure operation. In the present paper is examined the 24h forecasting of excess production in an existing micro-grid. Alternative input parameters are considered for achieving an accurate prediction. The prediction can be used for scheduling the charging process of a thermal storage during weekends based on excess power production levels.
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