TY - GEN
T1 - Optimization of Complex Thermally Electrically Coupled Buildings using Genetic Programming to Identify Optimal Energy Flow Controllers
AU - Kefer, Kathrin
AU - Kefer, Patrick
AU - Hanghofer, Roland
AU - Stöger, Markus
AU - Hofer, Bernd
AU - Affenzeller, Michael
AU - Winkler, Stephan
N1 - Publisher Copyright:
© 2021 9th International Workshop on Simulation for Energy, Sustainable Development and Environment, SESDE 2021. All rights reserved.
PY - 2021
Y1 - 2021
N2 - During the last years, renewable energy sources and their management have become increasingly important to help driving forward the energy transition and slow down the global warming. Current energy management systems are either simple but not optimal or very complex, computationally intensive and optimal. Despite that, they also often focus on the optimization of just the electrical energy flows of buildings so far. This work focuses on the development of a linear model predictive controller as well as heuristic energy flow controllers for optimizing a complex thermally-electrically coupled system. For that, a real world building is modelled in MATLAB Simulink and used for the training process of the heuristic controllers as well as for the evaluation of the different optimizers in simulation with different timespans. It is found that the linear MPC works better than a rule-based self consumption optimization and that the heuristic controllers work significantly better than these two for all evaluation timespans up to 180 days, while they perform significantly worse for 364 days.
AB - During the last years, renewable energy sources and their management have become increasingly important to help driving forward the energy transition and slow down the global warming. Current energy management systems are either simple but not optimal or very complex, computationally intensive and optimal. Despite that, they also often focus on the optimization of just the electrical energy flows of buildings so far. This work focuses on the development of a linear model predictive controller as well as heuristic energy flow controllers for optimizing a complex thermally-electrically coupled system. For that, a real world building is modelled in MATLAB Simulink and used for the training process of the heuristic controllers as well as for the evaluation of the different optimizers in simulation with different timespans. It is found that the linear MPC works better than a rule-based self consumption optimization and that the heuristic controllers work significantly better than these two for all evaluation timespans up to 180 days, while they perform significantly worse for 364 days.
KW - Energy Management System
KW - Genetic Programming
KW - Symbolic Regression
UR - http://www.scopus.com/inward/record.url?scp=85143198722&partnerID=8YFLogxK
U2 - 10.46354/i3m.2021.sesde.007
DO - 10.46354/i3m.2021.sesde.007
M3 - Conference contribution
AN - SCOPUS:85143198722
T3 - 9th International Workshop on Simulation for Energy, Sustainable Development and Environment, SESDE 2021
SP - 55
EP - 65
BT - 9th International Workshop on Simulation for Energy, Sustainable Development and Environment, SESDE 2021
A2 - Bruzzone, Agostino
A2 - Janosy, Janos Sebestyen
A2 - Nicoletti, Letizia
A2 - Zacharewicz, Gregory
PB - DIME UNIVERSITY OF GENOA
T2 - 9th International Workshop on Simulation for Energy, Sustainable Development and Environment, SESDE 2021
Y2 - 15 September 2021 through 17 September 2021
ER -