Physics-informed Modularized Neural Network for Advanced Building Control by Deep Reinforcement Learning
By: Zixin Jiang, Xuezheng Wang, Bing Dong
Potential Business Impact:
Saves energy by teaching computers to control buildings.
Physics-informed machine learning (PIML) provides a promising solution for building energy modeling and can serve as a virtual environment to enable reinforcement learning (RL) agents to interact and learn. However, challenges remain in efficiently integrating physics priors, evaluating the effectiveness of physics constraints, balancing model accuracy and physics consistency, and enabling real-world implementation. To address these gaps, this study introduces a Physics-Informed Modularized Neural Network (PI-ModNN), which incorporates physics priors through a physics-informed model structure, loss functions, and hard constraints. A new evaluation metric called "temperature response violation" is developed to quantify the physical consistency of data-driven building dynamic models under varying control inputs and training data sizes. Additionally, a physics prior evaluation framework based on rule importance is proposed to assess the contribution of each individual physics prior, offering guidance on selecting appropriate PIML techniques. Results indicate that incorporating physical priors does not always improve model performance; inappropriate priors may decrease model accuracy and consistency. However, hard constraints are effective in enforcing model consistency. Furthermore, we present a general workflow for developing control-oriented PIML models and integrating them with deep reinforcement learning (DRL). Following this framework, a case study implementing DRL in an office space over three months demonstrates potential energy savings of 31.4%. Finally, we provide a general guideline for integrating data-driven models with advanced building control through a four-step evaluation framework, paving the way for reliable and scalable deployment of advanced building controls.
Similar Papers
Physics-informed machine learning for building performance simulation-A review of a nascent field
Systems and Control
Helps buildings save energy by learning from data.
Physics-Informed Machine Learning in Biomedical Science and Engineering
Machine Learning (CS)
Teaches computers to understand body science rules.
Transforming physics-informed machine learning to convex optimization
Computational Engineering, Finance, and Science
Makes smart science programs solve problems faster.