Robust MPC with data-driven demand forecasting for frequency regulation with heat pumps
Felix B\"unning, Joseph Warrington, Philipp Heer, Roy S. Smith, John, Lygeros

TL;DR
This paper presents a robust model predictive control framework utilizing data-driven demand forecasting and affine policies to enable frequency regulation with heat pumps, ensuring comfort and reducing reliance on detailed building models.
Contribution
It introduces a novel combination of robust MPC, affine policies, and neural network-based demand forecasting for frequency regulation using heat pumps and buffer storage.
Findings
Offers 13.4% of electricity consumption as flexible reserves.
Demonstrates effective regulation and demand satisfaction in real building system.
Shows affine policies reduce costs and increase reserves compared to baseline methods.
Abstract
With the increased amount of volatile renewable energy sources connected to the electricity grid, and the phase-out of fossil fuel based power plants, there is an increased need for frequency regulation. On the demand side, frequency regulation services can be offered by buildings or districts that are equipped with electric heating or cooling systems, by exploiting their thermal inertia. Existing approaches for tapping into this potential typically rely on dynamic building models, which in practice can be challenging to obtain and maintain. As a result, practical implementations of such systems are scarce. Moreover, actively controlling buildings requires extensive control infrastructure and may cause privacy concerns in district energy systems. Motivated by this, we exploit the thermal inertia of buffer storage for reserves, reducing the building models to demand forecasts here. By…
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