AIJul 13, 2015

Experimental analysis of data-driven control for a building heating system

arXiv:1507.03638v2128 citations
Originality Synthesis-oriented
AI Analysis

This work addresses energy efficiency and demand response in building climate control, representing an incremental application of existing methods to a specific domain.

The paper tackled building heating control under dynamic pricing using a data-driven reinforcement learning approach, achieving a policy within 90% of the mathematical optimum after about 20 days of convergence.

Driven by the opportunity to harvest the flexibility related to building climate control for demand response applications, this work presents a data-driven control approach building upon recent advancements in reinforcement learning. More specifically, model assisted batch reinforcement learning is applied to the setting of building climate control subjected to a dynamic pricing. The underlying sequential decision making problem is cast on a markov decision problem, after which the control algorithm is detailed. In this work, fitted Q-iteration is used to construct a policy from a batch of experimental tuples. In those regions of the state space where the experimental sample density is low, virtual support samples are added using an artificial neural network. Finally, the resulting policy is shaped using domain knowledge. The control approach has been evaluated quantitatively using a simulation and qualitatively in a living lab. From the quantitative analysis it has been found that the control approach converges in approximately 20 days to obtain a control policy with a performance within 90% of the mathematical optimum. The experimental analysis confirms that within 10 to 20 days sensible policies are obtained that can be used for different outside temperature regimes.

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