A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems

In this study, the combination of crossover algorithm and particle swarm optimization—crossover algorithm-particle swarm optimization (CS-PSO) algorithm—to optimize photovoltaic hybrid energy storage scheduling, improving global search and convergence speed, is discussed. The new method reduces ener...

Full description

Saved in:
Bibliographic Details
Main Authors: Shuaijie Wang, Xin Guan, Shu Liu
Format: Article
Language:English
Published: AIP Publishing LLC 2024-12-01
Series:AIP Advances
Online Access:http://dx.doi.org/10.1063/5.0234096
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1846093380338057216
author Shuaijie Wang
Xin Guan
Shu Liu
author_facet Shuaijie Wang
Xin Guan
Shu Liu
author_sort Shuaijie Wang
collection DOAJ
description In this study, the combination of crossover algorithm and particle swarm optimization—crossover algorithm-particle swarm optimization (CS-PSO) algorithm—to optimize photovoltaic hybrid energy storage scheduling, improving global search and convergence speed, is discussed. The new method reduces energy storage costs and energy losses, ensures supply–demand balance and interaction power constraints, and maintains population diversity through cross-search. The CS-PSO algorithm introduces battery state of charge optimization for energy storage scheduling, improving global search and convergence speed, and obtaining accurate multi-objective scheduling results. The experiment shows that the optimal configuration for photovoltaic energy storage is 10 045 batteries + 687 244 supercapacitors, with a cost of 3.452 × 105 yuan and an energy loss of less than 5%. CS-PSO has similar costs but lower losses and faster convergence compared to traditional methods.
format Article
id doaj-art-8922dc0c221f48c38debb82bb77b879f
institution Kabale University
issn 2158-3226
language English
publishDate 2024-12-01
publisher AIP Publishing LLC
record_format Article
series AIP Advances
spelling doaj-art-8922dc0c221f48c38debb82bb77b879f2025-01-02T17:23:45ZengAIP Publishing LLCAIP Advances2158-32262024-12-011412125308125308-910.1063/5.0234096A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systemsShuaijie WangXin GuanShu LiuIn this study, the combination of crossover algorithm and particle swarm optimization—crossover algorithm-particle swarm optimization (CS-PSO) algorithm—to optimize photovoltaic hybrid energy storage scheduling, improving global search and convergence speed, is discussed. The new method reduces energy storage costs and energy losses, ensures supply–demand balance and interaction power constraints, and maintains population diversity through cross-search. The CS-PSO algorithm introduces battery state of charge optimization for energy storage scheduling, improving global search and convergence speed, and obtaining accurate multi-objective scheduling results. The experiment shows that the optimal configuration for photovoltaic energy storage is 10 045 batteries + 687 244 supercapacitors, with a cost of 3.452 × 105 yuan and an energy loss of less than 5%. CS-PSO has similar costs but lower losses and faster convergence compared to traditional methods.http://dx.doi.org/10.1063/5.0234096
spellingShingle Shuaijie Wang
Xin Guan
Shu Liu
A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
AIP Advances
title A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
title_full A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
title_fullStr A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
title_full_unstemmed A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
title_short A multi-objective optimization algorithm-based capacity scheduling method for photovoltaic power hybrid energy storage systems
title_sort multi objective optimization algorithm based capacity scheduling method for photovoltaic power hybrid energy storage systems
url http://dx.doi.org/10.1063/5.0234096
work_keys_str_mv AT shuaijiewang amultiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems
AT xinguan amultiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems
AT shuliu amultiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems
AT shuaijiewang multiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems
AT xinguan multiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems
AT shuliu multiobjectiveoptimizationalgorithmbasedcapacityschedulingmethodforphotovoltaicpowerhybridenergystoragesystems