2024
DOI: 10.1049/dgt2.12012
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Online demand peak shaving with machine‐learned advice in digital twins

Minxi Feng,
Wei Li,
Boyu Qin
et al.

Abstract: As the use of physical instruments grows, control algorithms are being increasingly deployed to enhance efficiency and reliability through digital twin technology. Demand load management is central to energy systems within digital twins, which significantly impacts operational costs. Peak demand loads can lead to substantial monthly utility expenses without proper management. AMPAMOD, a randomised online algorithm incorporating machine‐learned insights is introduced to optimise battery operations and mitigate … Show more

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