Mohammad Esrafilian-Najafabadi
- Transfer learning for occupancy-based HVAC control: A data-driven approach using unsupervised learning of occupancy profiles and deep reinforcement learning. In: Energy and Buildings, v. 300 (Dezember 2023). (2023):
- Towards self-learning control of HVAC systems with the consideration of dynamic occupancy patterns: Application of model-free deep reinforcement learning. In: Building and Environment, v. 226 (Dezember 2022). (2022):
- Impact of predictor variables on the performance of future occupancy prediction: Feature selection using genetic algorithms and machine learning. In: Building and Environment, v. 219 (Juli 2022). (2022):
- Impact of occupancy prediction models on building HVAC control system performance: Application of machine learning techniques. In: Energy and Buildings, v. 257 (Februar 2022). (2022):
- Occupancy-based HVAC control using deep learning algorithms for estimating online preconditioning time in residential buildings. In: Energy and Buildings, v. 252 (Dezember 2021). (2021):
- Occupancy-based HVAC control systems in buildings: A state-of-the-art review. In: Building and Environment, v. 197 (Juni 2021). (2021):