EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location
With EV adoption increasing, balancing and stabilizing power grids has become increasingly challenging. As Singapore suffers from limited land and resources, the surge in EV charging can lead to potential strain and overloads to the power grid, which could cause drastic problems such as reduced r...
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sg-ntu-dr.10356-1811292024-11-15T11:59:26Z EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location Wong, Xiang Rui Lee Bu Sung, Francis College of Computing and Data Science EBSLEE@ntu.edu.sg Computer and Information Science EV Electric vehicle Energy With EV adoption increasing, balancing and stabilizing power grids has become increasingly challenging. As Singapore suffers from limited land and resources, the surge in EV charging can lead to potential strain and overloads to the power grid, which could cause drastic problems such as reduced reserve margins and supply reliability issues. Thus, this report explores the strategies to mitigate those impacts by looking into areas such as vehicle-to-grid (V2G), smart charging, and solar photovoltaic (PV) while providing recommendations for possible future charger locations based on demand. This study aims to investigate the current state of EV adoption in Singapore, the current charging infrastructure, and the capacity of our power grid by utilising previously collected datasets obtained in 2019. Furthermore, by reviewing government reports and publications, this study aims to identify trends and patterns using a quantitative approach with the help of machine learning and routing algorithms, such as the Open-Source Routing Machine (OSRM), to ensure that Singapore’s current infrastructure is adequate to support the increasing demand. This study's approach is a multi-layered strategy combining clustering, classification models, and the Analytic Hierarchy Process (AHP) weighted scoring to address the challenges of increasing charging demand. The AHP scoring would evaluate factors such as peak energy demand, geographical distribution data, and traffic intensity before identifying an optimal location for new chargers. Additionally, this study considers Singapore’s unique space constraints and building infrastructure before making decisions to ensure a sustainable expansion. The analysis would reveal populated and high-demand locations for new charging stations and strategies for peak pressure management while providing opportunities to integrate renewable energy sources. These recommendations offer a path to enhancing the EV charging infrastructure while supposing grid stability. Bachelor's degree 2024-11-15T11:59:26Z 2024-11-15T11:59:26Z 2024 Final Year Project (FYP) Wong, X. R. (2024). EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/181129 https://hdl.handle.net/10356/181129 en SCSE23-1032 application/pdf Nanyang Technological University |
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Computer and Information Science EV Electric vehicle Energy Wong, Xiang Rui EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
description |
With EV adoption increasing, balancing and stabilizing power grids has become increasingly
challenging. As Singapore suffers from limited land and resources, the surge in EV charging
can lead to potential strain and overloads to the power grid, which could cause drastic
problems such as reduced reserve margins and supply reliability issues. Thus, this report
explores the strategies to mitigate those impacts by looking into areas such as
vehicle-to-grid (V2G), smart charging, and solar photovoltaic (PV) while providing
recommendations for possible future charger locations based on demand.
This study aims to investigate the current state of EV adoption in Singapore, the current
charging infrastructure, and the capacity of our power grid by utilising previously collected
datasets obtained in 2019. Furthermore, by reviewing government reports and publications,
this study aims to identify trends and patterns using a quantitative approach with the help of
machine learning and routing algorithms, such as the Open-Source Routing Machine
(OSRM), to ensure that Singapore’s current infrastructure is adequate to support the
increasing demand.
This study's approach is a multi-layered strategy combining clustering, classification models,
and the Analytic Hierarchy Process (AHP) weighted scoring to address the challenges of
increasing charging demand. The AHP scoring would evaluate factors such as peak energy
demand, geographical distribution data, and traffic intensity before identifying an optimal
location for new chargers. Additionally, this study considers Singapore’s unique space
constraints and building infrastructure before making decisions to ensure a sustainable
expansion.
The analysis would reveal populated and high-demand locations for new charging stations
and strategies for peak pressure management while providing opportunities to integrate
renewable energy sources. These recommendations offer a path to enhancing the EV
charging infrastructure while supposing grid stability. |
author2 |
Lee Bu Sung, Francis |
author_facet |
Lee Bu Sung, Francis Wong, Xiang Rui |
format |
Final Year Project |
author |
Wong, Xiang Rui |
author_sort |
Wong, Xiang Rui |
title |
EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
title_short |
EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
title_full |
EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
title_fullStr |
EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
title_full_unstemmed |
EV mobility model to explore the possibility of using EVs as energy storage and prediction of EV charger location |
title_sort |
ev mobility model to explore the possibility of using evs as energy storage and prediction of ev charger location |
publisher |
Nanyang Technological University |
publishDate |
2024 |
url |
https://hdl.handle.net/10356/181129 |
_version_ |
1816859019690639360 |