Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Heating energy consumption forecasting based on machine learning
The author’s aim in this thesis project was to develop a machine learning model, which could create short-term forecasts regarding heating energy consumption of a building. Even short-term energy consumption forecasts can have a major impact on building automation and energy distribution systems. Possible application spheres include smart grid development and simpler maintenance. A feed forward artificial neural network was designed as a result of examination and testing of different models in order to get the most accurate predictions possible. To create an effective neural network various loss and activation functions as well as optimizers were reviewed. To obtain better results some preprocessing techniques were applied to filter corrupted and unreliable data. The designed model was successfully trained to perform forecasting on data from the same distribution as the training data.
Heating energy consumption forecasting based on machine learning
The author’s aim in this thesis project was to develop a machine learning model, which could create short-term forecasts regarding heating energy consumption of a building. Even short-term energy consumption forecasts can have a major impact on building automation and energy distribution systems. Possible application spheres include smart grid development and simpler maintenance. A feed forward artificial neural network was designed as a result of examination and testing of different models in order to get the most accurate predictions possible. To create an effective neural network various loss and activation functions as well as optimizers were reviewed. To obtain better results some preprocessing techniques were applied to filter corrupted and unreliable data. The designed model was successfully trained to perform forecasting on data from the same distribution as the training data.
Heating energy consumption forecasting based on machine learning
Trotskii, Igor (Autor:in) / Hämeen ammattikorkeakoulu
01.01.2018
10024/1769
Hochschulschrift
Elektronische Ressource
Englisch
DDC:
690
A New Deep Learning Restricted Boltzmann Machine for Energy Consumption Forecasting
DOAJ | 2022
|Personalized federated learning for buildings energy consumption forecasting
Elsevier | 2024
|