Heating, Ventilation, and Air Conditioning (HVAC) systems play a crucial role in maintaining indoor air quality, occupant comfort, and energy efficiency. Traditionally, HVAC control systems relied on predefined settings, such as simple thermostatic controls, on/off cycles, and Proportional-Integral-Derivative (PID) controllers. While these methods have served well for decades, they often struggle to adapt to dynamic environmental conditions, occupancy changes, and evolving energy demands.
Today, buildings are becoming smarter, energy regulations are stricter, and sustainability is a priority. Conventional HVAC control systems are no longer sufficient to meet modern efficiency and comfort requirements. This is where adaptive control systems come into play.
What is Adaptive HVAC Control?
Adaptive control is a self-learning, intelligent approach that continuously adjusts HVAC parameters in real-time based on sensor feedback, environmental changes, and user behavior. Unlike traditional systems that follow fixed rules, adaptive control leverages machine learning (ML), artificial intelligence (AI), and predictive algorithms to optimize performance dynamically.
https://bit.ly/m/HVAC