Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.

To fully explore the regulation resources on both sides of the source and load under uncertain environment and collaboratively achieve the energy saving and emission reduction goals, a low-carbon economic optimization dispatch model combining demand response and carbon trading mechanism is proposed...

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Main Authors: Ze Ye, Deping Liang, Meihui Wang, Lei Chen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0324470
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author Ze Ye
Deping Liang
Meihui Wang
Lei Chen
author_facet Ze Ye
Deping Liang
Meihui Wang
Lei Chen
author_sort Ze Ye
collection DOAJ
description To fully explore the regulation resources on both sides of the source and load under uncertain environment and collaboratively achieve the energy saving and emission reduction goals, a low-carbon economic optimization dispatch model combining demand response and carbon trading mechanism is proposed in this paper. Firstly, the economic principle of demand response (DR) is analyzed, as well as the demand response compensation model is constructed for shiftable loads and curtailable loads respectively. Second, we describe the source-load synergistic low-carbon effect. The source side further reduces carbon emissions by establishing a reward-punishment laddered carbon trading model. Accordingly, the optimization model is constructed with the objective of minimizing the sum of DR compensation cost, carbon trading cost and system operation cost. The triangular fuzzy method is used to deal with the uncertainty problem of new energy and load forecasting. Finally, the economic and low-carbon nature of this proposed model is verified by simulation and example analysis.
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publisher Public Library of Science (PLoS)
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spelling doaj-art-c1fece9ac1ab4a5cb4b9fd47ae6f84592025-08-20T03:20:29ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01206e032447010.1371/journal.pone.0324470Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.Ze YeDeping LiangMeihui WangLei ChenTo fully explore the regulation resources on both sides of the source and load under uncertain environment and collaboratively achieve the energy saving and emission reduction goals, a low-carbon economic optimization dispatch model combining demand response and carbon trading mechanism is proposed in this paper. Firstly, the economic principle of demand response (DR) is analyzed, as well as the demand response compensation model is constructed for shiftable loads and curtailable loads respectively. Second, we describe the source-load synergistic low-carbon effect. The source side further reduces carbon emissions by establishing a reward-punishment laddered carbon trading model. Accordingly, the optimization model is constructed with the objective of minimizing the sum of DR compensation cost, carbon trading cost and system operation cost. The triangular fuzzy method is used to deal with the uncertainty problem of new energy and load forecasting. Finally, the economic and low-carbon nature of this proposed model is verified by simulation and example analysis.https://doi.org/10.1371/journal.pone.0324470
spellingShingle Ze Ye
Deping Liang
Meihui Wang
Lei Chen
Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
PLoS ONE
title Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
title_full Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
title_fullStr Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
title_full_unstemmed Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
title_short Day-ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment.
title_sort day ahead optimal dispatch considering demand response compensation and carbon trading under uncertain environment
url https://doi.org/10.1371/journal.pone.0324470
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AT depingliang dayaheadoptimaldispatchconsideringdemandresponsecompensationandcarbontradingunderuncertainenvironment
AT meihuiwang dayaheadoptimaldispatchconsideringdemandresponsecompensationandcarbontradingunderuncertainenvironment
AT leichen dayaheadoptimaldispatchconsideringdemandresponsecompensationandcarbontradingunderuncertainenvironment