Model for sustainable carbon emission reduction energy development and smart grid technology strategy

In the context of sustainable energy development to reduce carbon emissions, the application of new energy sources and smart grid technologies in power systems is becoming more widespread. However, current research results on power system technology strategies for carbon emission reduction are not s...

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Main Authors: Kangli Xiang, Keren Chen, Simin Chen, Wanqing Chen, Jinyu Chen
Format: Article
Language:English
Published: AIMS Press 2024-11-01
Series:AIMS Energy
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/energy.2024055
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author Kangli Xiang
Keren Chen
Simin Chen
Wanqing Chen
Jinyu Chen
author_facet Kangli Xiang
Keren Chen
Simin Chen
Wanqing Chen
Jinyu Chen
author_sort Kangli Xiang
collection DOAJ
description In the context of sustainable energy development to reduce carbon emissions, the application of new energy sources and smart grid technologies in power systems is becoming more widespread. However, current research results on power system technology strategies for carbon emission reduction are not satisfactory. To address this problem, a model for optimal power system operation and scheduling based on the prediction error mechanism and synthetic fuel technology is proposed. The model used the carbon trading mechanism to further reduce carbon emissions and the carnivorous plant algorithm to optimize the scheduling strategy. The results indicate that the model demonstrates significant advantages in terms of carbon emission, total operating cost, prediction accuracy, and energy utilization efficiency, respectively, at 60.8 kg, 2517.5 yuan, 96.5%, and 90.2%, indicating that it utilizes energy more fully and helps to enhance the overall energy efficiency of the system. The calculation time of the optimized power system was only 12.5 s, the stability was as high as 98.7%, and the satisfaction rate was 95.6% in terms of user satisfaction. Compared to other contemporary designs, the proposed model can successfully reduce the system's carbon emissions while increasing energy efficiency. The model has positive implications for smart grid and sustainable development.
format Article
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institution Kabale University
issn 2333-8334
language English
publishDate 2024-11-01
publisher AIMS Press
record_format Article
series AIMS Energy
spelling doaj-art-a1f0d628262748178a6f53f7047d727f2025-01-24T01:35:07ZengAIMS PressAIMS Energy2333-83342024-11-011261206122410.3934/energy.2024055Model for sustainable carbon emission reduction energy development and smart grid technology strategyKangli Xiang0Keren Chen1Simin Chen2Wanqing Chen3Jinyu Chen4Power Economic Research Institute of State Grid Fujian Electric Power Company, Fuzhou, 350000, ChinaPower Economic Research Institute of State Grid Fujian Electric Power Company, Fuzhou, 350000, ChinaPower Economic Research Institute of State Grid Fujian Electric Power Company, Fuzhou, 350000, ChinaPower Economic Research Institute of State Grid Fujian Electric Power Company, Fuzhou, 350000, ChinaPower Economic Research Institute of State Grid Fujian Electric Power Company, Fuzhou, 350000, ChinaIn the context of sustainable energy development to reduce carbon emissions, the application of new energy sources and smart grid technologies in power systems is becoming more widespread. However, current research results on power system technology strategies for carbon emission reduction are not satisfactory. To address this problem, a model for optimal power system operation and scheduling based on the prediction error mechanism and synthetic fuel technology is proposed. The model used the carbon trading mechanism to further reduce carbon emissions and the carnivorous plant algorithm to optimize the scheduling strategy. The results indicate that the model demonstrates significant advantages in terms of carbon emission, total operating cost, prediction accuracy, and energy utilization efficiency, respectively, at 60.8 kg, 2517.5 yuan, 96.5%, and 90.2%, indicating that it utilizes energy more fully and helps to enhance the overall energy efficiency of the system. The calculation time of the optimized power system was only 12.5 s, the stability was as high as 98.7%, and the satisfaction rate was 95.6% in terms of user satisfaction. Compared to other contemporary designs, the proposed model can successfully reduce the system's carbon emissions while increasing energy efficiency. The model has positive implications for smart grid and sustainable development.https://www.aimspress.com/article/doi/10.3934/energy.2024055sustainabilitycarbon emission reductionsmart gridoperation optimizationnew energycarbon trading
spellingShingle Kangli Xiang
Keren Chen
Simin Chen
Wanqing Chen
Jinyu Chen
Model for sustainable carbon emission reduction energy development and smart grid technology strategy
AIMS Energy
sustainability
carbon emission reduction
smart grid
operation optimization
new energy
carbon trading
title Model for sustainable carbon emission reduction energy development and smart grid technology strategy
title_full Model for sustainable carbon emission reduction energy development and smart grid technology strategy
title_fullStr Model for sustainable carbon emission reduction energy development and smart grid technology strategy
title_full_unstemmed Model for sustainable carbon emission reduction energy development and smart grid technology strategy
title_short Model for sustainable carbon emission reduction energy development and smart grid technology strategy
title_sort model for sustainable carbon emission reduction energy development and smart grid technology strategy
topic sustainability
carbon emission reduction
smart grid
operation optimization
new energy
carbon trading
url https://www.aimspress.com/article/doi/10.3934/energy.2024055
work_keys_str_mv AT kanglixiang modelforsustainablecarbonemissionreductionenergydevelopmentandsmartgridtechnologystrategy
AT kerenchen modelforsustainablecarbonemissionreductionenergydevelopmentandsmartgridtechnologystrategy
AT siminchen modelforsustainablecarbonemissionreductionenergydevelopmentandsmartgridtechnologystrategy
AT wanqingchen modelforsustainablecarbonemissionreductionenergydevelopmentandsmartgridtechnologystrategy
AT jinyuchen modelforsustainablecarbonemissionreductionenergydevelopmentandsmartgridtechnologystrategy