Ventilation and Temperature Control for Energy-efficient and Healthy Buildings: A Differentiable PDE Approach
In this paper, we introduce a novel framework for building learning and control, focusing on ventilation and thermal management to enhance energy efficiency. We validate the performance of the proposed framework in system model learning via two case studies: a synthetic study focusing on the joint l...
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Zusammenfassung: | In this paper, we introduce a novel framework for building learning and
control, focusing on ventilation and thermal management to enhance energy
efficiency. We validate the performance of the proposed framework in system
model learning via two case studies: a synthetic study focusing on the joint
learning of temperature and CO2 fields, and an application to a real-world
dataset for CO2 field learning. For building control, we demonstrate that the
proposed framework can optimize the control actions and significantly reduce
the energy cost while maintaining a comfort and healthy indoor environment.
When compared to existing traditional methods, an optimization-based method
with ODE models and reinforcement learning, our approach can significantly
reduce the energy consumption while guarantees all the safety-critical air
quality and control constraints. Promising future research directions involve
validating and improving the proposed PDE models through accurate estimation of
airflow fields within indoor environments. Additionally, incorporating
uncertainty modeling into the PDE framework for HVAC control presents an
opportunity to enhance the efficiency and reliability of building HVAC system
management. |
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DOI: | 10.48550/arxiv.2403.08996 |