LAPSE:2023.19099
Published Article

LAPSE:2023.19099
Real-Time Load Variability Control Using Energy Storage System for Demand-Side Management in South Korea
March 9, 2023
Abstract
In today’s power systems, the widespread adoption of smart grid applications requires sophisticated control of load variability for effective demand-side management (DSM). Conventional Energy Storage System (ESS)-based DSM methods in South Korea are limited to real-time variability control owing to difficulties with model development using customers’ load profiles from sampling with higher temporal resolution. Herein, this study thus proposes a method of controlling the variability of customers’ load profiles for real-time DSM using customer-installed ESSs. To optimize the reserved capacity for the proposed maximum demand control within ESSs, this study also proposes a hybrid method of load generation, which synthesizes approaches based on Markov Transition Matrix (MTM) and Artificial Neuron Network (ANN) to estimate load variations every 15 min and, in turn reserve capacity in ESSs. The proposed ESS-based DSM strategy primarily reserves capacity in ESSs based on estimated variation in load, and performs real-time maximum demand control with the reserved capacity during scheduled peak shaving operations. To validate the proposed methods, this study used load profiles accumulated from industrial and general (i.e., commercial) customers under the time-of-use (TOU) rate. Simulation verified the improved performance of the proposed ESS-based DSM method for all customers, and results of Kolmogorov-Smirnov (K−S) testing indicate advances in the proposed hybrid estimation beyond the stand-alone estimation using the MTM- or ANN-based approach.
In today’s power systems, the widespread adoption of smart grid applications requires sophisticated control of load variability for effective demand-side management (DSM). Conventional Energy Storage System (ESS)-based DSM methods in South Korea are limited to real-time variability control owing to difficulties with model development using customers’ load profiles from sampling with higher temporal resolution. Herein, this study thus proposes a method of controlling the variability of customers’ load profiles for real-time DSM using customer-installed ESSs. To optimize the reserved capacity for the proposed maximum demand control within ESSs, this study also proposes a hybrid method of load generation, which synthesizes approaches based on Markov Transition Matrix (MTM) and Artificial Neuron Network (ANN) to estimate load variations every 15 min and, in turn reserve capacity in ESSs. The proposed ESS-based DSM strategy primarily reserves capacity in ESSs based on estimated variation in load, and performs real-time maximum demand control with the reserved capacity during scheduled peak shaving operations. To validate the proposed methods, this study used load profiles accumulated from industrial and general (i.e., commercial) customers under the time-of-use (TOU) rate. Simulation verified the improved performance of the proposed ESS-based DSM method for all customers, and results of Kolmogorov-Smirnov (K−S) testing indicate advances in the proposed hybrid estimation beyond the stand-alone estimation using the MTM- or ANN-based approach.
Record ID
Keywords
demand-side management (DSM), energy storage system (ESS), maximum demand control, peak shaving, synthetic load generation
Subject
Suggested Citation
Han KB, Jung J, Kang BO. Real-Time Load Variability Control Using Energy Storage System for Demand-Side Management in South Korea. (2023). LAPSE:2023.19099
Author Affiliations
Han KB: Department of Electrical Engineering, Dong-A University, Saha-gu, Busan 49315, Korea
Jung J: Department of Energy Systems Research, Ajou University, Suwon 16499, Korea [ORCID]
Kang BO: Department of Electrical Engineering, Dong-A University, Saha-gu, Busan 49315, Korea
Jung J: Department of Energy Systems Research, Ajou University, Suwon 16499, Korea [ORCID]
Kang BO: Department of Electrical Engineering, Dong-A University, Saha-gu, Busan 49315, Korea
Journal Name
Energies
Volume
14
Issue
19
First Page
6292
Year
2021
Publication Date
2021-10-02
ISSN
1996-1073
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Original Submission
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PII: en14196292, Publication Type: Journal Article
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LAPSE:2023.19099
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https://doi.org/10.3390/en14196292
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Mar 9, 2023
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