Národní úložiště šedé literatury Nalezeno 1 záznamů.  Hledání trvalo 0.00 vteřin. 
Aplikace posilovaného učení v řízení Smart Home
Biel, Gabriel ; Zbořil, František (oponent) ; Janoušek, Vladimír (vedoucí práce)
This thesis investigates how machine learning can improve smart home management by focusing on optimizing temperature control and boosting energy efficiency. Specifically, it examines and compares two sophisticated reinforcement learning algorithms, Deep Q-Learning (DQL) and Proximal Policy Optimization (PPO). These models are tested in a simulated environment that replicates real-world conditions to evaluate their effectiveness in adapting to user behaviors and environmental changes. The study finds that the PPO model is particularly effective due to its stability and ability to predict when occupants will return, thus maintaining a comfortable temperature more efficiently. This research offers valuable insights into the practical applications of AI technologies in smart homes.

Chcete být upozorněni, pokud se objeví nové záznamy odpovídající tomuto dotazu?
Přihlásit se k odběru RSS.