Abstract
The rollout of smart meters (SMs) in distribution networks should enhance the observability of the demand side. In order to make this observability useful to the distribution network operator (DNO) and/or other demand response (DR) responsible parties, information about time varying demand composition and its flexibility (both in close to real time and forecast) should also be provided.
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Ponoćko, J. (2020). Advanced Demand Profiling. In: Data Analytics-Based Demand Profiling and Advanced Demand Side Management for Flexible Operation of Sustainable Power Networks. Springer Theses. Springer, Cham. https://doi.org/10.1007/978-3-030-39943-6_3
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