Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations

The global proliferation of plug-in electric vehicles (PEVs) poses a major challenge for current and future distribution systems. If uncoordinated, their charging process may cause congestion on both network transformers and feeders, resulting in overheating, deterioration, protection triggering and...

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Main Authors: César García Veloso, Kalle Rauma, Julián Fernández, Christian Rehtanz
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/13/16/4227
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spelling doaj-21ed0da2e7a64899b8946477ff01cea12020-11-25T03:54:42ZengMDPI AGEnergies1996-10732020-08-01134227422710.3390/en13164227Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of ImplementationsCésar García Veloso0Kalle Rauma1Julián Fernández2Christian Rehtanz3School of Electrical Engineering and Computer Science, KTH Royal Institute of Technology, 11428 Stockholm, SwedenInstitute of Energy Systems, Energy Efficiency and Energy Economics (ie3), TU Dortmund University, 44227 Dortmund, GermanyInstitute for Integrated Energy Systems, University of Victoria, Victoria, BC V8W 2Y2, CanadaInstitute of Energy Systems, Energy Efficiency and Energy Economics (ie3), TU Dortmund University, 44227 Dortmund, GermanyThe global proliferation of plug-in electric vehicles (PEVs) poses a major challenge for current and future distribution systems. If uncoordinated, their charging process may cause congestion on both network transformers and feeders, resulting in overheating, deterioration, protection triggering and eventual risk of failure, seriously compromising the stability and reliability of the grid. To mitigate such impacts and increase their hosting capacity in radial distribution systems, the present study compares the levels of effectiveness and performances of three alternative centralized thermal management formulations for a real-time agent-based charge control algorithm that aims to minimize the total impact upon car owners. A linear formulation and a convex formulation of the optimization problem are presented and solved respectively by means of integer linear programming and a genetic algorithm. The obtained results are then compared, in terms of their total impact on the end-users and overall performance, with those of the current heuristic implementation of the algorithm. All implementations were tested using a simulation environment considering multiple vehicle penetration and base load levels, and equipment modeled after commercially available charging stations and vehicles. Results show how faster resolution times are achieved by the heuristic implementation, but no significant differences between formulations exist in terms of network management and end-user impact. Every vehicle reached its maximum charge level while all thermal impacts were mitigated for all considered scenarios. The most demanding scenario showcased over a 30% reduction in the peak load for all thermal variants.https://www.mdpi.com/1996-1073/13/16/4227plug-in electric vehiclesradial low voltage networksreal-time controlcentralized thermal managementactive distribution networksuser impact minimization
collection DOAJ
language English
format Article
sources DOAJ
author César García Veloso
Kalle Rauma
Julián Fernández
Christian Rehtanz
spellingShingle César García Veloso
Kalle Rauma
Julián Fernández
Christian Rehtanz
Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
Energies
plug-in electric vehicles
radial low voltage networks
real-time control
centralized thermal management
active distribution networks
user impact minimization
author_facet César García Veloso
Kalle Rauma
Julián Fernández
Christian Rehtanz
author_sort César García Veloso
title Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
title_short Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
title_full Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
title_fullStr Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
title_full_unstemmed Real-Time Control of Plug-in Electric Vehicles for Congestion Management of Radial LV Networks: A Comparison of Implementations
title_sort real-time control of plug-in electric vehicles for congestion management of radial lv networks: a comparison of implementations
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2020-08-01
description The global proliferation of plug-in electric vehicles (PEVs) poses a major challenge for current and future distribution systems. If uncoordinated, their charging process may cause congestion on both network transformers and feeders, resulting in overheating, deterioration, protection triggering and eventual risk of failure, seriously compromising the stability and reliability of the grid. To mitigate such impacts and increase their hosting capacity in radial distribution systems, the present study compares the levels of effectiveness and performances of three alternative centralized thermal management formulations for a real-time agent-based charge control algorithm that aims to minimize the total impact upon car owners. A linear formulation and a convex formulation of the optimization problem are presented and solved respectively by means of integer linear programming and a genetic algorithm. The obtained results are then compared, in terms of their total impact on the end-users and overall performance, with those of the current heuristic implementation of the algorithm. All implementations were tested using a simulation environment considering multiple vehicle penetration and base load levels, and equipment modeled after commercially available charging stations and vehicles. Results show how faster resolution times are achieved by the heuristic implementation, but no significant differences between formulations exist in terms of network management and end-user impact. Every vehicle reached its maximum charge level while all thermal impacts were mitigated for all considered scenarios. The most demanding scenario showcased over a 30% reduction in the peak load for all thermal variants.
topic plug-in electric vehicles
radial low voltage networks
real-time control
centralized thermal management
active distribution networks
user impact minimization
url https://www.mdpi.com/1996-1073/13/16/4227
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