Model Predictive Control for Smart Energy Systems
In this PhD project, Economic Model Predictive Control is
proposed to balance the production and consumption of electricity
in a Smart Grid such that the total cost is minimized. A predictive
control system has the ability to embed forecasting methodologies
for the stochastic variables like electricity production,
consumption, and price and even weather conditions like wind speed,
temperature, or solar radiation. As well as forecasts, the
predictive models used by the controllers are uncertain due to
unknown events, model reduction and parameter uncertainty.
Algorithms based on convex optimization and decomposition will
solve this stochastic optimization problem. Control methods ranging
from centralized to decentralized model predictive control using
various hierarchical levels and levels of information exchange
between the individual controllers are the scope of the project. In
particular decomposition techniques based on price signals and
predictions of future price will be investigated. |