Model predictive control of bidirectional AC-DC converter for energy storage system

Energy storage system has been widely applied in power distribution sectors as well as in renewable energy sources to ensure uninterruptible power supply. This paper presents a model predictive algorithm to control a bidirectional AC-DC converter, which is used in an energy storage system for power...

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Main Authors: Akter, M.P., Mekhilef, Saad, Tan, N.M.L., Akagi, H.
Format: Article
Language:English
Published: 2015
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Online Access:http://eprints.um.edu.my/13861/1/Model_Predictive_Control_of_Bidirectional_AC-DC_.pdf
http://eprints.um.edu.my/13861/
http://umexpert.um.edu.my/file/publication/00005361_115166.pdf
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spelling my.um.eprints.138612019-10-25T05:32:43Z http://eprints.um.edu.my/13861/ Model predictive control of bidirectional AC-DC converter for energy storage system Akter, M.P. Mekhilef, Saad Tan, N.M.L. Akagi, H. T Technology (General) TK Electrical engineering. Electronics Nuclear engineering Energy storage system has been widely applied in power distribution sectors as well as in renewable energy sources to ensure uninterruptible power supply. This paper presents a model predictive algorithm to control a bidirectional AC-DC converter, which is used in an energy storage system for power transferring between the three-phase AC voltage supply and energy storage devices. This model predictive control (MPC) algorithm utilizes the discrete behavior of the converter and predicts the future variables of the system by defining cost functions for all possible switching states. Subsequently, the switching state that corresponds to the minimum cost function is selected for the next sampling period for firing the switches of the AC-DC converter. The proposed model predictive control scheme of the AC-DC converter allows bidirectional power flow with instantaneous mode change capability and fast dynamic response. The performance of the MPC controlled bidirectional AC-DC converter is simulated with MATLAB/Simulink (R) and further verified with 3.0kW experimental prototypes. Both the simulation and experimental results show that, the AC-DC converter is operated with unity power factor, acceptable THD (3.3 during rectifier mode and 3.5 during inverter mode) level of AC current and very low DC voltage ripple. Moreover, an efficiency comparison is performed between the proposed MPC and conventional VOC-based PWM controller of the bidirectional AC-DC converter which ensures the effectiveness of MPC controller. 2015-01 Article PeerReviewed application/pdf en http://eprints.um.edu.my/13861/1/Model_Predictive_Control_of_Bidirectional_AC-DC_.pdf Akter, M.P. and Mekhilef, Saad and Tan, N.M.L. and Akagi, H. (2015) Model predictive control of bidirectional AC-DC converter for energy storage system. Journal of Electrical Engineering & Technology, 10 (1). pp. 165-175. ISSN 1975-0102 http://umexpert.um.edu.my/file/publication/00005361_115166.pdf Doi 10.5370/Jeet.2015.10.1.165
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
language English
topic T Technology (General)
TK Electrical engineering. Electronics Nuclear engineering
spellingShingle T Technology (General)
TK Electrical engineering. Electronics Nuclear engineering
Akter, M.P.
Mekhilef, Saad
Tan, N.M.L.
Akagi, H.
Model predictive control of bidirectional AC-DC converter for energy storage system
description Energy storage system has been widely applied in power distribution sectors as well as in renewable energy sources to ensure uninterruptible power supply. This paper presents a model predictive algorithm to control a bidirectional AC-DC converter, which is used in an energy storage system for power transferring between the three-phase AC voltage supply and energy storage devices. This model predictive control (MPC) algorithm utilizes the discrete behavior of the converter and predicts the future variables of the system by defining cost functions for all possible switching states. Subsequently, the switching state that corresponds to the minimum cost function is selected for the next sampling period for firing the switches of the AC-DC converter. The proposed model predictive control scheme of the AC-DC converter allows bidirectional power flow with instantaneous mode change capability and fast dynamic response. The performance of the MPC controlled bidirectional AC-DC converter is simulated with MATLAB/Simulink (R) and further verified with 3.0kW experimental prototypes. Both the simulation and experimental results show that, the AC-DC converter is operated with unity power factor, acceptable THD (3.3 during rectifier mode and 3.5 during inverter mode) level of AC current and very low DC voltage ripple. Moreover, an efficiency comparison is performed between the proposed MPC and conventional VOC-based PWM controller of the bidirectional AC-DC converter which ensures the effectiveness of MPC controller.
format Article
author Akter, M.P.
Mekhilef, Saad
Tan, N.M.L.
Akagi, H.
author_facet Akter, M.P.
Mekhilef, Saad
Tan, N.M.L.
Akagi, H.
author_sort Akter, M.P.
title Model predictive control of bidirectional AC-DC converter for energy storage system
title_short Model predictive control of bidirectional AC-DC converter for energy storage system
title_full Model predictive control of bidirectional AC-DC converter for energy storage system
title_fullStr Model predictive control of bidirectional AC-DC converter for energy storage system
title_full_unstemmed Model predictive control of bidirectional AC-DC converter for energy storage system
title_sort model predictive control of bidirectional ac-dc converter for energy storage system
publishDate 2015
url http://eprints.um.edu.my/13861/1/Model_Predictive_Control_of_Bidirectional_AC-DC_.pdf
http://eprints.um.edu.my/13861/
http://umexpert.um.edu.my/file/publication/00005361_115166.pdf
_version_ 1648736130705653760
score 13.18916