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Publications by Sunyong Kim
Reinforcement Learning Based Energy Management Algorithm for Smart Energy Buildings
Energies
Control
Electronic Engineering
Energy Engineering
Renewable Energy
Energy
Fuel Technology
Sustainability
Optimization
Electrical
Power Technology
the Environment
Reinforcement Learning Based Resource Management for Network Slicing
Applied Sciences (Switzerland)
Instrumentation
Materials Science
Fluid Flow
Engineering
Computer Science Applications
Process Chemistry
Transfer Processes
Technology
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Deep Reinforcement Learning for Energy Microgrids Management Considering Flexible Energy Sources
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Reinforcement Learning–Based Energy Management Strategy for a Hybrid Electric Tracked Vehicle
Energies
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Machine Learning for Energy Consumption Prediction and Scheduling in Smart Buildings
SN Applied Sciences
IoT-based Dependable Control of Solar Energy for Smart Buildings
IET Smart Cities
A Distributed Demand Side Energy Management Algorithm for Smart Grid
Energies
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Sustainability
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Energy Management and Smart Grids for Energy Productivity
International Journal of Economics, Finance and Management Sciences
RLMan: An Energy Manager Based on Reinforcement Learning for Energy Harvesting Wireless Sensor Networks
IEEE Transactions on Green Communications and Networking
Computer Networks
the Environment
Sustainability
Renewable Energy
Communications
Real Time Energy Management System for Smart Buildings to Minimize the Electricity Bill