Bob05757 / PINNs-for-building-thermal-modeling-and-Demand-Response
a novel framework based on a physics-informed neural network dubbed as PhysCon that combines the interpretable ability of physical laws and the expressive power of neural networks for control-oriented demand response of grid-integrated buildings.
☆11Updated 2 years ago
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