Application of reinforcement learning for energy consumption optimization of district heating system

Jifei Deng*, Miro Eklund, Seppo Sierla, Jouni Savolainen, Hannu Niemistö, Tommi Karhela, Valeriy Vyatkin

*Korresponderande författare för detta arbete

Forskningsoutput: Kapitel i bok/konferenshandlingKonferensbidragVetenskapligPeer review

4 Nedladdningar (Pure)

Sammanfattning

Heating residential spaces consumed 64 percent of total household energy consumption in Finland. Considering the heat transfer and time delay in the district heating system, the calculation of setpoints of supply temperature requires a comprehensive understanding of the real system, and experienced operators need to manually determine the setpoints. To save energy, a more effective and accurate method is needed for setpoints calculation. In this paper, a reinforcement learning based method is proposed. Through interacting with an Apros-based simulation model, the agents learn to calculate supply temperature parallelly for lowering energy costs. Simulation results show that the proposed method outperforms the existing method and has the potential to address the problem in real factories.

OriginalspråkEngelska
Titel på värdpublikation2023 IEEE 32nd International Symposium on Industrial Electronics (ISIE)
FörlagIEEE
ISBN (elektroniskt)979-8-3503-9971-4
ISBN (tryckt)979-8-3503-9972-1
DOI
StatusPublicerad - 2023
MoE-publikationstypA4 Artikel i en konferenspublikation
EvenemangIEEE International Symposium on Industrial Electronics -
Varaktighet: 19 juni 202321 juni 2023

Publikationsserier

Namn Proceedings of the IEEE International Symposium on Industrial Electronics
ISSN (tryckt)2163-5137

Konferens

KonferensIEEE International Symposium on Industrial Electronics
Förkortad titelISIE
Period19/06/2321/06/23

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