Aggregators have emerged as crucial tools for the coordination of distributed, controllable loads. To be used effectively, an aggregator must be able to communicate the available flexibility of the loads they control, as known as the aggregate flexibility to a system operator. However, most of existing aggregate flexibility measures often are slow-timescale estimations and much less attention has been paid to real-time coordination between an aggregator and an operator. In this paper, we consider solving an online optimization in a closed-loop system and present a design of real-time aggregate flexibility feedback, termed the maximum entropy feedback (MEF). In addition to deriving analytic properties of the MEF, combining learning and contr...
Cyber-physical systems (CPS) encounter a large volume of data which is added to the system gradually...
The increasing trend in adopting electric vehicles (EVs) will significantly impact the residential e...
Real-time demand response is essential for handling the uncertainties of renewable generation. Tradi...
Aggregators have emerged as crucial tools for the coordination of distributed, controllable loads. H...
Achieving carbon neutrality by 2050 does not only lead to the increasing penetration of renewable en...
In modern power systems with high penetration of renewable energy sources, the flexibility provided ...
Increased uptake of variable renewable generation and further electrification of energy demand neces...
Real-time quantification of residential building energy flexibility is needed to enable a cost-effic...
Energy flexibility is the ability to change power production or consumption over time. It is require...
Frequency regulation is becoming increasingly important with deeper penetration of variable generati...
Due to the increased use of variable renewable energy sources, more capacity for reserves is require...
Electric power systems are shifting away from conventional fuel-burning generation and moving toward...
peer reviewedThis paper compares reinforcement learning (RL) with model predictive control (MPC) in ...
This chapter deals with hierarchical model predictive control (MPC) of smart grid systems. The desig...
Demand response (DR) becomes critical to manage the charging load of a growing electric vehicle (EV)...
Cyber-physical systems (CPS) encounter a large volume of data which is added to the system gradually...
The increasing trend in adopting electric vehicles (EVs) will significantly impact the residential e...
Real-time demand response is essential for handling the uncertainties of renewable generation. Tradi...
Aggregators have emerged as crucial tools for the coordination of distributed, controllable loads. H...
Achieving carbon neutrality by 2050 does not only lead to the increasing penetration of renewable en...
In modern power systems with high penetration of renewable energy sources, the flexibility provided ...
Increased uptake of variable renewable generation and further electrification of energy demand neces...
Real-time quantification of residential building energy flexibility is needed to enable a cost-effic...
Energy flexibility is the ability to change power production or consumption over time. It is require...
Frequency regulation is becoming increasingly important with deeper penetration of variable generati...
Due to the increased use of variable renewable energy sources, more capacity for reserves is require...
Electric power systems are shifting away from conventional fuel-burning generation and moving toward...
peer reviewedThis paper compares reinforcement learning (RL) with model predictive control (MPC) in ...
This chapter deals with hierarchical model predictive control (MPC) of smart grid systems. The desig...
Demand response (DR) becomes critical to manage the charging load of a growing electric vehicle (EV)...
Cyber-physical systems (CPS) encounter a large volume of data which is added to the system gradually...
The increasing trend in adopting electric vehicles (EVs) will significantly impact the residential e...
Real-time demand response is essential for handling the uncertainties of renewable generation. Tradi...