Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions

For an efficient energy harvesting by the PV/thermoelectric system, the maximum power point tracking (MPPT) principle is targeted, aiming to operate the system close to peak power point. Under a uniform distribution of the solar irradiance, there is only one maximum power point (MPP), which easily c...

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Main Authors: Hegazy Rezk, Ziad M. Ali, Omer Abdalla, Obai Younis, Mohamed R. Gomaa, Mauia Hashim
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/7/10/875
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spelling doaj-07f8b66b0593437aa03283a94397481f2020-11-25T01:57:36ZengMDPI AGMathematics2227-73902019-09-0171087510.3390/math7100875math7100875Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different ConditionsHegazy Rezk0Ziad M. Ali1Omer Abdalla2Obai Younis3Mohamed R. Gomaa4Mauia Hashim5College of Engineering at Wadi Addawaser, Prince Sattam Bin Abdulaziz University, Al Kharj, Saudi ArabiaCollege of Engineering at Wadi Addawaser, Prince Sattam Bin Abdulaziz University, Al Kharj, Saudi ArabiaCollege of Engineering at Wadi Addawaser, Prince Sattam Bin Abdulaziz University, Al Kharj, Saudi ArabiaCollege of Engineering at Wadi Addawaser, Prince Sattam Bin Abdulaziz University, Al Kharj, Saudi ArabiaMechanical Department, Faculty of Engineering, Mu’tah University, Al-Karak, JordanSudan Academy of Science, Khartoum, SudanFor an efficient energy harvesting by the PV/thermoelectric system, the maximum power point tracking (MPPT) principle is targeted, aiming to operate the system close to peak power point. Under a uniform distribution of the solar irradiance, there is only one maximum power point (MPP), which easily can be efficiently determined by any traditional MPPT method, such as the incremental conductance (INC). A different situation will occur for the non-uniform distribution of solar irradiance, where more than one MPP will exist on the power versus voltage plot of the PV/thermoelectric system. The determination of the global MPP cannot be achieved by conventional methods. To deal with this issue the application of soft computing techniques based on optimization algorithms is used. However, MPPT based on optimization algorithms is very tedious and time consuming, especially under normal conditions. To solve this dilemma, this research examines a hybrid MPPT method, consisting of an incremental conductance (INC) approach and a moth-flame optimizer (MFO), referred to as (INC-MFO) procedure, to reach high adaptability at different environmental conditions. In this way, the combination of the two different algorithms facilitates the utilization of the advantages of the two methods, thereby resulting in a faster speed tracking with uniform radiation distribution and a high accuracy in the case of a non-uniform distribution. It is very important to mention that the INC method is used to track the maximum power point under normal conditions, whereas the MFO optimizer is most relevant for the global search under partial shading. The obtained results revealed that the proposed strategy performed best in both of the dynamic and the steady-state conditions at uniform and non-uniform radiation.https://www.mdpi.com/2227-7390/7/10/875energy efficiencyphotovoltaic moduleMPPToptimizationcomputational fluid dynamics (CFD)
collection DOAJ
language English
format Article
sources DOAJ
author Hegazy Rezk
Ziad M. Ali
Omer Abdalla
Obai Younis
Mohamed R. Gomaa
Mauia Hashim
spellingShingle Hegazy Rezk
Ziad M. Ali
Omer Abdalla
Obai Younis
Mohamed R. Gomaa
Mauia Hashim
Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
Mathematics
energy efficiency
photovoltaic module
MPPT
optimization
computational fluid dynamics (CFD)
author_facet Hegazy Rezk
Ziad M. Ali
Omer Abdalla
Obai Younis
Mohamed R. Gomaa
Mauia Hashim
author_sort Hegazy Rezk
title Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
title_short Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
title_full Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
title_fullStr Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
title_full_unstemmed Hybrid Moth-Flame Optimization Algorithm and Incremental Conductance for Tracking Maximum Power of Solar PV/Thermoelectric System under Different Conditions
title_sort hybrid moth-flame optimization algorithm and incremental conductance for tracking maximum power of solar pv/thermoelectric system under different conditions
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2019-09-01
description For an efficient energy harvesting by the PV/thermoelectric system, the maximum power point tracking (MPPT) principle is targeted, aiming to operate the system close to peak power point. Under a uniform distribution of the solar irradiance, there is only one maximum power point (MPP), which easily can be efficiently determined by any traditional MPPT method, such as the incremental conductance (INC). A different situation will occur for the non-uniform distribution of solar irradiance, where more than one MPP will exist on the power versus voltage plot of the PV/thermoelectric system. The determination of the global MPP cannot be achieved by conventional methods. To deal with this issue the application of soft computing techniques based on optimization algorithms is used. However, MPPT based on optimization algorithms is very tedious and time consuming, especially under normal conditions. To solve this dilemma, this research examines a hybrid MPPT method, consisting of an incremental conductance (INC) approach and a moth-flame optimizer (MFO), referred to as (INC-MFO) procedure, to reach high adaptability at different environmental conditions. In this way, the combination of the two different algorithms facilitates the utilization of the advantages of the two methods, thereby resulting in a faster speed tracking with uniform radiation distribution and a high accuracy in the case of a non-uniform distribution. It is very important to mention that the INC method is used to track the maximum power point under normal conditions, whereas the MFO optimizer is most relevant for the global search under partial shading. The obtained results revealed that the proposed strategy performed best in both of the dynamic and the steady-state conditions at uniform and non-uniform radiation.
topic energy efficiency
photovoltaic module
MPPT
optimization
computational fluid dynamics (CFD)
url https://www.mdpi.com/2227-7390/7/10/875
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