About this Research Topic
This Research Topic solicits the latest and original contributions on a wide range of data-driven demand side management techniques, including cutting-edge modelling methodologies of demand-side energy entities, DSM algorithms, and innovative data-driven DSM applications in smart grid context. Works that focus on machine learning based applications in energy demand side are particularly welcome. All the submissions will go into a quick and high-quality peer-review process for fast publication.
The Research Topic invites submissions on all topics of data-driven theories, algorithms and applications for energy demand side management, including but not limited to:
• Deep neural model for demand side management,
• Customer energy consumption data-driven energy pricing,
• Non-intrusive appliance load monitoring techniques,
• Behavior learning and analysis of energy customers,
• Data-driven building/home energy management systems,
• Vehicle-to-grid, vehicle-to-community, and vehicle-to-building/home integrations,
• Peer-to-peer energy trading in local energy markets,
• Social knowledge based demand side management techniques,
• Data security and integrity issues in demand side management,
• Reinforcement learning based demand side management applications,
• Complex behavior modeling and analysis for energy prosumers,
• Psychology-driven building/home energy management systems.
Keywords: Internet-of-Things, Demand Response, Demand Side Management, Machine Learning, Smart Grid
Important Note: All contributions to this Research Topic must be within the scope of the section and journal to which they are submitted, as defined in their mission statements. Frontiers reserves the right to guide an out-of-scope manuscript to a more suitable section or journal at any stage of peer review.