Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan

Increased concerns over global warming and air pollution has pushed governments to consider renewable energy as an alternative to meet the required energy demands of countries. Many government policies are deployed in Taiwan to promote solar and wind energy to cope with air pollution and self-depend...

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Main Authors: Kumar Shivam, Jong-Chyuan Tzou, Shang-Chen Wu
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/13/10/2505
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spelling doaj-25c2168043814f0a9458ee13c660546c2020-11-25T02:05:54ZengMDPI AGEnergies1996-10732020-05-01132505250510.3390/en13102505Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern TaiwanKumar Shivam0Jong-Chyuan Tzou1Shang-Chen Wu2Department of Mechanical Engineering, Kun Shan University, No.195, Kunda Rd., Yongkang Dist., Tainan City 710, TaiwanDepartment of Mechanical Engineering, Kun Shan University, No.195, Kunda Rd., Yongkang Dist., Tainan City 710, TaiwanDepartment of Mechanical Engineering, Kun Shan University, No.195, Kunda Rd., Yongkang Dist., Tainan City 710, TaiwanIncreased concerns over global warming and air pollution has pushed governments to consider renewable energy as an alternative to meet the required energy demands of countries. Many government policies are deployed in Taiwan to promote solar and wind energy to cope with air pollution and self-dependency for energy generation. However, the residential sector contribution is not significant despite higher feed-in tariff rates set by government. This study analyzes wind and solar power availability of four different locations of southern Taiwan, based on the Köppen–Geiger climate classification system. The solar–wind hybrid system (SWHS) considered in this study consists of multi-crystalline photovoltaic (PV) modules, vertical wind turbines, inverters and batteries. Global reanalysis weather data and a climate-based electricity load profile at a 1-h resolution was used for the simulation. A general framework for multi-objective optimization using this simulation technique is proposed for solar–wind hybrid system, considering the feed-in tariff regulations, environmental regulations and installation area constraints of Taiwan. The hourly load profile is selected using a climate classification system. A decomposition-based differential evolutionary algorithm is used for finding the optimal Pareto set of two economic objectives and one environmental objective with maximum installation area and maximum PV capacity constraints. Two types of buildings are chosen for analysis at four climate locations. Analysis of Pareto sets revealed that the photovoltaic modules are economic options for a grid-connected mode at all four locations, whereas solar–wind hybrid systems are more environmentally friendly. A method of finding the fitness index for the Pareto front sets and a balanced strategy for choosing the optimal configuration is proposed. The proposed balanced strategy provides savings to users—up to 49% for urban residential buildings and up to 32% for rural residential buildings with respect to buildings without a hybrid energy system (HES)—while keeping carbon dioxide (CO<sub>2</sub>) emissions lower than 50% for the total project lifecycle time of 20 years. The case study reveals that for all four locations and two building types an HES system comprising a 15 kW photovoltaic system and a small capacity battery bank provides the optimal balance between economic and environmental objectives.https://www.mdpi.com/1996-1073/13/10/2505climate classificationconstrained optimizationdecompositiondifferential evolutionary algorithmhybrid power systemsmulti-objective optimization
collection DOAJ
language English
format Article
sources DOAJ
author Kumar Shivam
Jong-Chyuan Tzou
Shang-Chen Wu
spellingShingle Kumar Shivam
Jong-Chyuan Tzou
Shang-Chen Wu
Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
Energies
climate classification
constrained optimization
decomposition
differential evolutionary algorithm
hybrid power systems
multi-objective optimization
author_facet Kumar Shivam
Jong-Chyuan Tzou
Shang-Chen Wu
author_sort Kumar Shivam
title Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
title_short Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
title_full Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
title_fullStr Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
title_full_unstemmed Multi-Objective Sizing Optimization of a Grid-Connected Solar–Wind Hybrid System using Climate Classification: A Case Study of Four Locations in Southern Taiwan
title_sort multi-objective sizing optimization of a grid-connected solar–wind hybrid system using climate classification: a case study of four locations in southern taiwan
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2020-05-01
description Increased concerns over global warming and air pollution has pushed governments to consider renewable energy as an alternative to meet the required energy demands of countries. Many government policies are deployed in Taiwan to promote solar and wind energy to cope with air pollution and self-dependency for energy generation. However, the residential sector contribution is not significant despite higher feed-in tariff rates set by government. This study analyzes wind and solar power availability of four different locations of southern Taiwan, based on the Köppen–Geiger climate classification system. The solar–wind hybrid system (SWHS) considered in this study consists of multi-crystalline photovoltaic (PV) modules, vertical wind turbines, inverters and batteries. Global reanalysis weather data and a climate-based electricity load profile at a 1-h resolution was used for the simulation. A general framework for multi-objective optimization using this simulation technique is proposed for solar–wind hybrid system, considering the feed-in tariff regulations, environmental regulations and installation area constraints of Taiwan. The hourly load profile is selected using a climate classification system. A decomposition-based differential evolutionary algorithm is used for finding the optimal Pareto set of two economic objectives and one environmental objective with maximum installation area and maximum PV capacity constraints. Two types of buildings are chosen for analysis at four climate locations. Analysis of Pareto sets revealed that the photovoltaic modules are economic options for a grid-connected mode at all four locations, whereas solar–wind hybrid systems are more environmentally friendly. A method of finding the fitness index for the Pareto front sets and a balanced strategy for choosing the optimal configuration is proposed. The proposed balanced strategy provides savings to users—up to 49% for urban residential buildings and up to 32% for rural residential buildings with respect to buildings without a hybrid energy system (HES)—while keeping carbon dioxide (CO<sub>2</sub>) emissions lower than 50% for the total project lifecycle time of 20 years. The case study reveals that for all four locations and two building types an HES system comprising a 15 kW photovoltaic system and a small capacity battery bank provides the optimal balance between economic and environmental objectives.
topic climate classification
constrained optimization
decomposition
differential evolutionary algorithm
hybrid power systems
multi-objective optimization
url https://www.mdpi.com/1996-1073/13/10/2505
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