VB-NET: A physics-constrained gray-box deep learning framework for modeling air conditioning systems as virtual batteries
Yuchen Qi, Ye Guo, Yinliang Xu

TL;DR
VB-NET is a physics-constrained deep learning framework that models air conditioning systems as virtual batteries, improving accuracy, interpretability, and data efficiency for demand-side energy management.
Contribution
It introduces a novel gray-box deep learning model that enforces physical laws, enabling accurate, interpretable, and data-efficient AC system modeling as virtual batteries.
Findings
VB-NET outperforms traditional black-box models in state of charge tracking.
It recovers thermodynamic laws to produce physically consistent parameters.
Achieves high-precision modeling with only 2-6% of historical data.
Abstract
The increasing penetration of renewable energy necessitates unlocking demand-side flexibility. While air conditioning (AC) systems offer significant thermal inertia, existing physical and data-driven models struggle with parameter acquisition, interpretability, and data scarcity. This paper proposes VB-NET, a physics-constrained gray-box deep learning framework that transforms complex AC thermodynamics into a standardized Virtual Battery (VB) model. We first mathematically prove the isomorphic equivalence between the AC and VB models. Subsequently, VB-NET is designed to strictly enforces physical laws by decoupling shared meteorological drivers from private building thermal fingerprints and embedding a differentiable physics layer. Experimental results demonstrate that VB-NET significantly outperforms conventional black-box models in state of charge tracking while successfully…
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Taxonomy
TopicsSmart Grid Energy Management · Advanced Battery Technologies Research · Integrated Energy Systems Optimization
