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Deep reinforcement learning for fuel cost optimization in district heating

Publiceringsår

2023

Upphovspersoner

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

Abstrakt

<p>This study delves into the application of deep reinforcement learning (DRL) frameworks for optimizing setpoints in district heating systems, which experience hourly fluctuations in air temperature, customer demand, and fuel prices. The potential for energy conservation and cost reduction through setpoint optimization, involving adjustments to supply temperature and thermal energy storage utilization, is significant. However, the inherent nonlinear complexities of the system render conventional manual methods ineffective. To address these challenges, we introduce a novel learning framework with an expert knowledge module tailored for DRL techniques. The framework leverages system status information to facilitate learning. The training is performed by employing model-free DRL methods and a refined digital twin of the Espoo district heating system. The expert module, accounting for power plant capacities, ensures actionable directives aligned with operational feasibility. Empirical validation through comprehensive simulations demonstrates the efficacy of the proposed approach. Comparative analyses against manual methods and evolutionary techniques highlight the approach's superior ability to curtail fuel costs. This study advances the understanding of DRL in district heating optimization, offering a promising avenue for enhanced energy efficiency and cost savings.</p>
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Organisationer och upphovspersoner

Aalto-universitetet

Deng Jifei Orcid -palvelun logo

Sierla Seppo Orcid -palvelun logo

Karhela Tommi

Vyatkin Valeriy Orcid -palvelun logo

Åbo Akademi

Eklund Miro

Publikationstyp

Publikationsform

Artikel

Moderpublikationens typ

Tidning

Artikelstyp

En originalartikel

Målgrupp

Vetenskaplig

Kollegialt utvärderad

Kollegialt utvärderad

UKM:s publikationstyp

A1 Originalartikel i en vetenskaplig tidskrift

Publikationskanalens uppgifter

Förläggare

Elsevier

Volym

99

Artikelnummer

104955

Publikationsforum

71527

Publikationsforumsnivå

1

Öppen tillgång

Öppen tillgänglighet i förläggarens tjänst

Ja

Öppen tillgång till publikationskanalen

Delvis öppen publikationskanal

Parallellsparad

Ja

Övriga uppgifter

Vetenskapsområden

Data- och informationsvetenskap; El-, automations- och telekommunikationsteknik, elektronik

Identifierade tema

[object Object]

Förlagets internationalitet

Internationell

Språk

engelska

Internationell sampublikation

Ja

Sampublikation med ett företag

Ja

DOI

10.1016/j.scs.2023.104955

Publikationen ingår i undervisnings- och kulturministeriets datainsamling

Ja