Dynamic Control of HVAC Attributes. Improving Energy Efficiency of HVAC System Using Machine Learning and Computational Fluid Dynamics
| dc.contributor.author | Subramani Venkatachalam, Raj Gopalakrishna | |
| dc.contributor.department | Chalmers tekniska högskola / Institutionen för mekanik och maritima vetenskaper | sv |
| dc.contributor.department | Chalmers University of Technology / Department of Mechanics and Maritime Sciences | en |
| dc.contributor.examiner | Davidson, Lars | |
| dc.contributor.supervisor | Jayanath Vivek, Anthony | |
| dc.date.accessioned | 2025-11-12T12:43:07Z | |
| dc.date.issued | 2025 | |
| dc.date.submitted | ||
| dc.description.abstract | Heating, Ventilation and Air-Conditioning (HVAC) accounts for a major share of building energy use. This thesis develops a data-driven HVAC control framework that couples high-fidelity Computational Fluid Dynamics (CFD) with machine learning. Three-dimensional CFD simulation is performed to model the flow field in the room using Star-CCM+. 973 steady state CFD simulations representing realistic boundary conditions were performed to form a comprehensive dataset of temperature and velocity fields. Fourier Neural Operator (FNO) was trained as a surrogate model to CFD. This model reproduces the temperature and velocity flow fields with adequate resolution, with over 90% of predicted temperature and velocity fields across unseen samples deviating within a 5% error, making it suitable for closed-loop use. The error distribution analysis shows that the median temperature error is at 0.0169 °C and median velocity error is 0.0034 m/s, indicating that the surrogate model is reliable to predict temperature and velocity fields. The surrogate model coupled with a Soft Actor-Critic (SAC) controller, which was designed to regulate inlet air temperature, inlet mass-flow rate, and radiator surface temperature to maximize the reward, that provides an optimal control solution to reduce the energy cost. The controller was evaluated for a year of weather data with a 20-minute control step and benchmarked against a PID controller. Results show that the SAC consumed 4,836 kWh compared to 7,460 kWh for PID, which corresponds to approximately 35% in energy cost reduction. SAC occasionally produces larger deviations than PID, leading to a higher median temperature error (0.487 °C vs 0.273 °C), but fluctuations beyond ±2.5 °C occurred only 2.3% of the time, indicating that comfort violations remained rare. Seasonal analysis shows SAC controller’s energy savings persist across the year and strengthen in the late-year window (36% vs 34% earlier), reflecting adaptive use of outdoor conditions and smoother control. Overall, the work demonstrates that combining CFD data trained surrogate model with entropy-regularized reinforcement learning can deliver substantial energy savings with acceptable comfort tracking, and provides a practical route to incorporate detailed physics (e.g. radiative gains, occupancy, humidity/CO2) and more advanced control designs in future studies. | |
| dc.identifier.coursecode | MMSX30 | |
| dc.identifier.uri | http://hdl.handle.net/20.500.12380/310738 | |
| dc.language.iso | eng | |
| dc.setspec.uppsok | Technology | |
| dc.subject | HVAC control | |
| dc.subject | Computational Fluid Dynamics (CFD) | |
| dc.subject | Fourier Neural Operator (FNO) | |
| dc.subject | Surrogate modelling | |
| dc.subject | Reinforcement learning | |
| dc.subject | Soft Actor-Critic (SAC) | |
| dc.subject | Thermal comfort | |
| dc.subject | Data-Driven Control | |
| dc.title | Dynamic Control of HVAC Attributes. Improving Energy Efficiency of HVAC System Using Machine Learning and Computational Fluid Dynamics | |
| dc.type.degree | Examensarbete för masterexamen | sv |
| dc.type.degree | Master's Thesis | en |
| dc.type.uppsok | H | |
| local.programme | Applied mechanics (MPAME), MSc |
