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arxiv: 1810.07400 · v1 · pith:5ZFF56JXnew · submitted 2018-10-17 · 💻 cs.SY · cs.SY

Data-driven identification of a thermal network in multi-zone building

classification 💻 cs.SY cs.SY
keywords networkbuildingthermaltopologyalgorithmidentificationinteractionlearning
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System identification of smart buildings is necessary for their optimal control and application in demand response. The thermal response of a building around an operating point can be modeled using a network of interconnected resistors with capacitors at each node/zone called RC network. The development of the RC network involves two phases: obtaining the network topology, and estimating thermal resistances and capacitance's. In this article, we present a provable method to reconstruct the interaction topology of thermal zones of a building solely from temperature measurements. We demonstrate that our learning algorithm accurately reconstructs the interaction topology for a $5$ zone office building in EnergyPlus with real-world conditions. We show that our learning algorithm is able to recover the network structure in scenarios where prior research prove insufficient.

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