Input Convex Neural Networks for Building MPC
- URL: http://arxiv.org/abs/2011.13227v1
- Date: Thu, 26 Nov 2020 10:51:50 GMT
- Title: Input Convex Neural Networks for Building MPC
- Authors: Felix B\"unning, Adrian Schalbetter, Ahmed Aboudonia, Mathias Hudoba
de Badyn, Philipp Heer, John Lygeros
- Abstract summary: We introduce additional constraints to Input Convex Neural Networks to achieve a convex input-output relationship for multistep ahead predictions.
In two five-day cooling experiments, MPC with Input Convex Neural Networks is able to keep room temperatures within comfort constraints while minimizing cooling energy consumption.
- Score: 3.7597202216941783
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Model Predictive Control in buildings can significantly reduce their energy
consumption. The cost and effort necessary for creating and maintaining first
principle models for buildings make data-driven modelling an attractive
alternative in this domain. In MPC the models form the basis for an
optimization problem whose solution provides the control signals to be applied
to the system. The fact that this optimization problem has to be solved
repeatedly in real-time implies restrictions on the learning architectures that
can be used. Here, we adapt Input Convex Neural Networks that are generally
only convex for one-step predictions, for use in building MPC. We introduce
additional constraints to their structure and weights to achieve a convex
input-output relationship for multistep ahead predictions. We assess the
consequences of the additional constraints for the model accuracy and test the
models in a real-life MPC experiment in an apartment in Switzerland. In two
five-day cooling experiments, MPC with Input Convex Neural Networks is able to
keep room temperatures within comfort constraints while minimizing cooling
energy consumption.
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