Short-Term Load Forecasting in a microgrid environment: Investigating the series-specific and cross-learning forecasting methods

Evgenii Genov, Stefanos Petridis, Petros Iliadis, Nikos Nikopoulos, Thierry Coosemans, Maarten Messagie, Luis Ramirez Camargo

Research output: Chapter in Book/Report/Conference proceedingConference paper

3 Citations (Scopus)

Abstract

A reliable and accurate load forecasting method is key to successful energy management of smart grids. Due to the non-linear relations in data generating process and data availability issues, load forecasting remains a challenging task. Here, we investigate the application of feed forward artificial neural networks, recurrent neural networks and crosslearning methods for day-ahead and three days-ahead load forecasting. The effectiveness of the proposed methods is evaluated against a statistical benchmark, using multiple accuracy metrics. The test data sets are high resolution multi-seasonal time series of electricity demand of buildings in Belgium, Canada and the UK from private measurements and open access sources. Both FFNN and RNN methods show competitive results on benchmarking datasets. Best method varies depending on the accuracy metric selected. The use of cross-learning in fitting a global RNN model has an improvement on the final accuracy.
Original languageEnglish
Title of host publicationJournal of Physics: Conference Series (JPCS)
PublisherIOP Publishing Ltd.
Number of pages6
Volume2042
Edition1
DOIs
Publication statusPublished - 18 Nov 2021
EventCISBAT 2021 Carbon-neutral cities - energy efficiency and renewables in the digital era - EPFL, Lausanne, Switzerland
Duration: 8 Sep 202110 Dec 2021
https://cisbat.epfl.ch/

Conference

ConferenceCISBAT 2021 Carbon-neutral cities - energy efficiency and renewables in the digital era
Abbreviated titleCISBAT
Country/TerritorySwitzerland
CityLausanne
Period8/09/2110/12/21
Internet address

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