Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm

The Power Internet of Things (PIoT) is a significant technology for realizing the transformation of future energy systems, with the Integrated Energy System (IES) playing a crucial role in realizing the value of PIoT. Traditional IES planning methods typically focus on a single-stage planning appro...

Full description

Saved in:
Bibliographic Details
Main Authors: Peng Ye, Guanxian Liu, Shuo Yang, Shaotao Guo, Huan Wang, Yi Zhao, Mingli Zhang
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2025-04-01
Series:EAI Endorsed Transactions on Energy Web
Subjects:
Online Access:https://publications.eai.eu/index.php/ew/article/view/9093
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850199642334035968
author Peng Ye
Guanxian Liu
Shuo Yang
Shaotao Guo
Huan Wang
Yi Zhao
Mingli Zhang
author_facet Peng Ye
Guanxian Liu
Shuo Yang
Shaotao Guo
Huan Wang
Yi Zhao
Mingli Zhang
author_sort Peng Ye
collection DOAJ
description The Power Internet of Things (PIoT) is a significant technology for realizing the transformation of future energy systems, with the Integrated Energy System (IES) playing a crucial role in realizing the value of PIoT. Traditional IES planning methods typically focus on a single-stage planning approach and involve complex solution models, often resulting in inefficient equipment configurations and resource wastage. This study proposes a multi-stage IES planning method aimed at enhancing both energy efficiency and the economic performance of IES. The method models the IES based on electric, gas, and thermal buses, considering the coupling, storage, and conversion of multiple energy sources. A range of constraints, such as energy coupling, equipment capacity, and energy purchases, are considered. The planning cycle is divided into multiple stages, and an economic model is developed that accounts for both system investment and operating costs. Given the complexity of the multi-stage planning model, the Seagull Optimization Algorithm (SOA) is introduced to solve the problem. The SOA leverages its strong global and local search capabilities to determine the optimal capacity configuration at each stage. The comparison of the single-stage planning method by a calculation example proves the economic advantage of the multi-stage planning scheme and effectiveness of SOA.
format Article
id doaj-art-2b4eb90f28e44e179936bd535fc37af2
institution OA Journals
issn 2032-944X
language English
publishDate 2025-04-01
publisher European Alliance for Innovation (EAI)
record_format Article
series EAI Endorsed Transactions on Energy Web
spelling doaj-art-2b4eb90f28e44e179936bd535fc37af22025-08-20T02:12:34ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on Energy Web2032-944X2025-04-011210.4108/ew.9093Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithmPeng Ye0Guanxian Liu1Shuo Yang2Shaotao Guo3Huan Wang4Yi Zhao5Mingli Zhang6Shenyang Institute of EngineeringShenyang Institute of Engineering State Grid Fushun Electric Power Supply CO., LTD, Fushun, ChinaShenyang Institute of Engineering Shenyang Institute of Engineering Shenyang Institute of Engineering State Grid Liaoning Electric Power CO., LTD, Shenyang, China The Power Internet of Things (PIoT) is a significant technology for realizing the transformation of future energy systems, with the Integrated Energy System (IES) playing a crucial role in realizing the value of PIoT. Traditional IES planning methods typically focus on a single-stage planning approach and involve complex solution models, often resulting in inefficient equipment configurations and resource wastage. This study proposes a multi-stage IES planning method aimed at enhancing both energy efficiency and the economic performance of IES. The method models the IES based on electric, gas, and thermal buses, considering the coupling, storage, and conversion of multiple energy sources. A range of constraints, such as energy coupling, equipment capacity, and energy purchases, are considered. The planning cycle is divided into multiple stages, and an economic model is developed that accounts for both system investment and operating costs. Given the complexity of the multi-stage planning model, the Seagull Optimization Algorithm (SOA) is introduced to solve the problem. The SOA leverages its strong global and local search capabilities to determine the optimal capacity configuration at each stage. The comparison of the single-stage planning method by a calculation example proves the economic advantage of the multi-stage planning scheme and effectiveness of SOA. https://publications.eai.eu/index.php/ew/article/view/9093Power internet of things (PIoT)Integrated energy system (IES)Multi-stageSeagull optimization algorithm (SOA)Planning method
spellingShingle Peng Ye
Guanxian Liu
Shuo Yang
Shaotao Guo
Huan Wang
Yi Zhao
Mingli Zhang
Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
EAI Endorsed Transactions on Energy Web
Power internet of things (PIoT)
Integrated energy system (IES)
Multi-stage
Seagull optimization algorithm (SOA)
Planning method
title Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
title_full Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
title_fullStr Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
title_full_unstemmed Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
title_short Research on multi-stage optimization planning of power internet of things based on seagull optimization algorithm
title_sort research on multi stage optimization planning of power internet of things based on seagull optimization algorithm
topic Power internet of things (PIoT)
Integrated energy system (IES)
Multi-stage
Seagull optimization algorithm (SOA)
Planning method
url https://publications.eai.eu/index.php/ew/article/view/9093
work_keys_str_mv AT pengye researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT guanxianliu researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT shuoyang researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT shaotaoguo researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT huanwang researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT yizhao researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm
AT minglizhang researchonmultistageoptimizationplanningofpowerinternetofthingsbasedonseagulloptimizationalgorithm