Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das

Photovoltaic (PV) is widely used to mitigate the impact of global warming and climate change, and meet the growing electricity demand. However, inaccurate forecasting of PV power generation is a great concern in the planning and operation of stable and reliable electric grid system, and large-scale...

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Main Author: Utpal, Kumar Das
Format: Thesis
Published: 2019
Subjects:
Online Access:http://studentsrepo.um.edu.my/10669/
http://studentsrepo.um.edu.my/10669/1/Utpal_Kumar_Das.pdf
http://studentsrepo.um.edu.my/10669/2/Utpal_Kumar_Das_%E2%80%93_Thesis.pdf
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author Utpal, Kumar Das
author_facet Utpal, Kumar Das
author_sort Utpal, Kumar Das
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description Photovoltaic (PV) is widely used to mitigate the impact of global warming and climate change, and meet the growing electricity demand. However, inaccurate forecasting of PV power generation is a great concern in the planning and operation of stable and reliable electric grid system, and large-scale PV deployment. In order to forecast the PV power generation accurately, this study proposes a particle swarm optimization (PSO) optimized support vector regression (SVR) based forecasting model. In this process, an SVR-based model is developed based on the historical PV output power and most influential meteorological data of real PV station. A PSO-based algorithm is adopted for the appropriate selection of dominated parameters of SVR-based model to achieve better performance. In addition, a novel data preparation algorithm is also developed to prepare the solar irradiance (SI) pattern of the forecasted day for forecasting PV output power based on the online-weather-report. The proposed model is applied and experimentally validated by deploying it to three different PV stations. One of the most important uses of PV power is to charge the electric batteries for night time electricity supply in rural and isolated areas, and electric vehicles (EVs). However, a significant amount of PV power is wasted due to the inability to exploit the maximum power to maintain the appropriate charging rate of the batteries. Therefore, the maximum utilization of PV generated power is improbable especially in stand-alone PV based battery charging system. In order to ensure the maximum utilization of PV generated power, a novel battery charging management (BCM) algorithm based on the forecasted PV output power has been proposed in the present study. To extract the maximum power from the PV system, the proposed BCM algorithm selects a suitable set of battery cells to charge for a particular time by referring to the forecasted PV output power. In most of the applications of electric battery, especially Li-ion battery, the battery pack consists of a number of series connected cells to meet the required voltage demand. However, the voltage variation among the series connected cells is a great obstacle for safe and effective battery operation. In order to equalize the cell voltages completely within a very short time, this study proposes a new structure of resonant switched capacitor (SC) equalizer. In this case, the resonant tank is designed besides considering the zero-current-switching (ZCS) and zero-voltage-gap (ZVG) for minimizing the switching losses and equalizing the cell voltages completely. Additional capacitor tier is included to improve the balancing speed. The nRMSE of the proposed forecasting model is found as 2.841% and 9.422% in testing and online dataset, respectively. The proposed algorithm ensures 87.47% utilization of PV generated power in battery charging. The proposed cell equalizer confirms 99.95% equalization of the cell voltages in a very short time at an energy transferring efficiency of 97.34%. It reduces the 61.25% and 46.55% balancing time from conventional SC and conventional resonant SC equalizers, respectively. The results show that the proposed model, algorithm, and circuit perform better compare to the existing system.
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spelling um-106692020-01-18T02:51:59Z Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das Utpal, Kumar Das QA75 Electronic computers. Computer science Photovoltaic (PV) is widely used to mitigate the impact of global warming and climate change, and meet the growing electricity demand. However, inaccurate forecasting of PV power generation is a great concern in the planning and operation of stable and reliable electric grid system, and large-scale PV deployment. In order to forecast the PV power generation accurately, this study proposes a particle swarm optimization (PSO) optimized support vector regression (SVR) based forecasting model. In this process, an SVR-based model is developed based on the historical PV output power and most influential meteorological data of real PV station. A PSO-based algorithm is adopted for the appropriate selection of dominated parameters of SVR-based model to achieve better performance. In addition, a novel data preparation algorithm is also developed to prepare the solar irradiance (SI) pattern of the forecasted day for forecasting PV output power based on the online-weather-report. The proposed model is applied and experimentally validated by deploying it to three different PV stations. One of the most important uses of PV power is to charge the electric batteries for night time electricity supply in rural and isolated areas, and electric vehicles (EVs). However, a significant amount of PV power is wasted due to the inability to exploit the maximum power to maintain the appropriate charging rate of the batteries. Therefore, the maximum utilization of PV generated power is improbable especially in stand-alone PV based battery charging system. In order to ensure the maximum utilization of PV generated power, a novel battery charging management (BCM) algorithm based on the forecasted PV output power has been proposed in the present study. To extract the maximum power from the PV system, the proposed BCM algorithm selects a suitable set of battery cells to charge for a particular time by referring to the forecasted PV output power. In most of the applications of electric battery, especially Li-ion battery, the battery pack consists of a number of series connected cells to meet the required voltage demand. However, the voltage variation among the series connected cells is a great obstacle for safe and effective battery operation. In order to equalize the cell voltages completely within a very short time, this study proposes a new structure of resonant switched capacitor (SC) equalizer. In this case, the resonant tank is designed besides considering the zero-current-switching (ZCS) and zero-voltage-gap (ZVG) for minimizing the switching losses and equalizing the cell voltages completely. Additional capacitor tier is included to improve the balancing speed. The nRMSE of the proposed forecasting model is found as 2.841% and 9.422% in testing and online dataset, respectively. The proposed algorithm ensures 87.47% utilization of PV generated power in battery charging. The proposed cell equalizer confirms 99.95% equalization of the cell voltages in a very short time at an energy transferring efficiency of 97.34%. It reduces the 61.25% and 46.55% balancing time from conventional SC and conventional resonant SC equalizers, respectively. The results show that the proposed model, algorithm, and circuit perform better compare to the existing system. 2019-01 Thesis NonPeerReviewed application/pdf http://studentsrepo.um.edu.my/10669/1/Utpal_Kumar_Das.pdf application/pdf http://studentsrepo.um.edu.my/10669/2/Utpal_Kumar_Das_%E2%80%93_Thesis.pdf Utpal, Kumar Das (2019) Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das. PhD thesis, University of Malaya. http://studentsrepo.um.edu.my/10669/
spellingShingle QA75 Electronic computers. Computer science
Utpal, Kumar Das
Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title_full Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title_fullStr Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title_full_unstemmed Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title_short Improved power output forecastingtechnique for effective battery management in photovoltaic system / Utpal Kumar Das
title_sort improved power output forecastingtechnique for effective battery management in photovoltaic system / utpal kumar das
topic QA75 Electronic computers. Computer science
url http://studentsrepo.um.edu.my/10669/
http://studentsrepo.um.edu.my/10669/1/Utpal_Kumar_Das.pdf
http://studentsrepo.um.edu.my/10669/2/Utpal_Kumar_Das_%E2%80%93_Thesis.pdf