Forecasting of residential unit’s heat demands: a comparison of machine learning techniques in a real-world case study
Year of publication: |
2023
|
---|---|
Authors: | Kemper, Neele ; Heider, Michael ; Pietruschka, Dirk ; Hähner, Jörg |
Published in: |
Energy Systems. - Berlin, Heidelberg : Springer, ISSN 1868-3975. - 2023, p. 1-35
|
Publisher: |
Berlin, Heidelberg : Springer |
Subject: | Heat demand forecast | Machine learning | Time series | Smart buildings | Energy efficiency |
-
Dominant drivers of national inflation
Ditzen, Jan, (2022)
-
A comparison of machine learning model validation schemes for non-stationary time series data
Schnaubelt, Matthias, (2019)
-
Forecasting sales in the supply chain based on the LSTM network : the case of furniture industry
Pliszczuk, Damian, (2021)
- More ...
-
The voting premium : an empirical study on German stocks
Walk, Edgar, (1999)
-
Systematic design and analysis of solar thermal cooling systems in different climates
Eicker, Ursula, (2015)
-
Web 2.0 : Technologien und Trends
Schiele, Gregor Alexander, (2008)
- More ...