Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model

Distributed generation equipment improves renewable energy utilization and economic benefits through an energy storage system (ESS). However, dominated by short-term data, the configuration of long-period ESS capacity is absent based on the dynamic change of load, which leads to a large deviation fr...

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Main Authors: Jifang Li, Shuo Feng, Tao Zhang, Lidong Ma, Xiaoyang Shi, Xingyao Zhou
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10093882/
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author Jifang Li
Shuo Feng
Tao Zhang
Lidong Ma
Xiaoyang Shi
Xingyao Zhou
author_facet Jifang Li
Shuo Feng
Tao Zhang
Lidong Ma
Xiaoyang Shi
Xingyao Zhou
author_sort Jifang Li
collection DOAJ
description Distributed generation equipment improves renewable energy utilization and economic benefits through an energy storage system (ESS). However, dominated by short-term data, the configuration of long-period ESS capacity is absent based on the dynamic change of load, which leads to a large deviation from the expected return. Considering the system characteristics of lack of data and less information, after introducing the grey theory, we propose a new long-term capacity configuration method for ESS and establish the long-term grey forecasting model (GFM) of user load, improving the basic forecasting model to improve the accuracy of the long-term forecasting model. Then, the scheduling model is established with the maximum economic and social benefits as the optimization objective. Based on the forecast data of the improved grey forecasting model (IGFM), the hierarchical solution method is used to solve the scheduling model. Finally, the parameters are configured based on the service life of the equipment and the expected rate of return. The simulation results show that higher accuracy is realized in the improved prediction model, and the improved algorithm gets higher convergence speed and precision. Apart from that, the nonlinear correlation trend of the EES return rate between the capacity and life cycle is revealed. Compared with the ESS configuration in a short period, this study provides more comprehensive and accurate data support for the capacity configuration of the ESS, reducing the error between the actual return and the expected return significantly.
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spelling doaj.art-73dcf67b2bbc4406b3eb64e970908e572023-04-13T23:00:54ZengIEEEIEEE Access2169-35362023-01-0111349773498910.1109/ACCESS.2023.326508310093882Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting ModelJifang Li0https://orcid.org/0000-0002-4970-4557Shuo Feng1https://orcid.org/0009-0009-2822-4544Tao Zhang2https://orcid.org/0009-0006-2178-3624Lidong Ma3https://orcid.org/0009-0003-5987-2719Xiaoyang Shi4Xingyao Zhou5School of Electric Power, North China University of Water Resources and Electric Power, Zhengzhou, ChinaSchool of Electric Power, North China University of Water Resources and Electric Power, Zhengzhou, ChinaState Grid Henan Electric Power Company Luoyang Power Supply Company, Luoyang, ChinaSchool of Electric Power, North China University of Water Resources and Electric Power, Zhengzhou, ChinaSchool of Electric Power, North China University of Water Resources and Electric Power, Zhengzhou, ChinaSchool of Electric Power, North China University of Water Resources and Electric Power, Zhengzhou, ChinaDistributed generation equipment improves renewable energy utilization and economic benefits through an energy storage system (ESS). However, dominated by short-term data, the configuration of long-period ESS capacity is absent based on the dynamic change of load, which leads to a large deviation from the expected return. Considering the system characteristics of lack of data and less information, after introducing the grey theory, we propose a new long-term capacity configuration method for ESS and establish the long-term grey forecasting model (GFM) of user load, improving the basic forecasting model to improve the accuracy of the long-term forecasting model. Then, the scheduling model is established with the maximum economic and social benefits as the optimization objective. Based on the forecast data of the improved grey forecasting model (IGFM), the hierarchical solution method is used to solve the scheduling model. Finally, the parameters are configured based on the service life of the equipment and the expected rate of return. The simulation results show that higher accuracy is realized in the improved prediction model, and the improved algorithm gets higher convergence speed and precision. Apart from that, the nonlinear correlation trend of the EES return rate between the capacity and life cycle is revealed. Compared with the ESS configuration in a short period, this study provides more comprehensive and accurate data support for the capacity configuration of the ESS, reducing the error between the actual return and the expected return significantly.https://ieeexplore.ieee.org/document/10093882/Capacity configurationenergy storage systemgrey theoryhierarchical optimizationscheduling
spellingShingle Jifang Li
Shuo Feng
Tao Zhang
Lidong Ma
Xiaoyang Shi
Xingyao Zhou
Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
IEEE Access
Capacity configuration
energy storage system
grey theory
hierarchical optimization
scheduling
title Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
title_full Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
title_fullStr Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
title_full_unstemmed Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
title_short Study of Long-Term Energy Storage System Capacity Configuration Based on Improved Grey Forecasting Model
title_sort study of long term energy storage system capacity configuration based on improved grey forecasting model
topic Capacity configuration
energy storage system
grey theory
hierarchical optimization
scheduling
url https://ieeexplore.ieee.org/document/10093882/
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AT xiaoyangshi studyoflongtermenergystoragesystemcapacityconfigurationbasedonimprovedgreyforecastingmodel
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