Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads
There has been a growing presence of electric vehicles in many countries including Thailand, where many forms of incentives have been provided to build integrated infrastructure, and to encourage drivers to switch to electric vehicles (EVs). Because the immediate entry of EVs unavoidably can alter h...
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doaj-f1aad51a3e3c4ee2bff05fff7a5a5f2f2021-07-30T11:43:10ZengFrontiers Media S.A.Frontiers in Energy Research2296-598X2021-07-01910.3389/fenrg.2021.673165673165Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle LoadsSurasit Sangob0Surasit Sangob1Somporn Sirisumrannukul2Department of Electrical and Computer Engineering, Faculty of Engineering, King Mongkut’s University of Technology North Bangkok, Bangkok, ThailandPower System Control Department, Metropolitan Electricity Authority (MEA), Bangkok, ThailandDepartment of Electrical and Computer Engineering, Faculty of Engineering, King Mongkut’s University of Technology North Bangkok, Bangkok, ThailandThere has been a growing presence of electric vehicles in many countries including Thailand, where many forms of incentives have been provided to build integrated infrastructure, and to encourage drivers to switch to electric vehicles (EVs). Because the immediate entry of EVs unavoidably can alter household load profiles, reinforcement on the existing system based on traditional planning may not be sufficient and can introduce over or under capital and operating expenditure over the time horizon. Therefore, if distribution systems are unreadily prepared for such an uptake, three obvious problems can be expected: 1) voltage regulation, 2) overloads of the distribution feeders and the distribution transformers, and 3) high energy loss. In this paper, an activity-based, time-sequential Monte Carlo Simulation algorithm was comprehensively developed for uncontrollable and smart charging, given annually updated information of EV locations and number of EVs, their energy consumption, hourly average vehicle speed, number of daily trips, travel distance per trip, size of EV batteries, time to arrive home and time to leave home. Minimizing the annual sum of investment and operating costs over a planning period could then be sequentially solved by a Particle Swarm Optimization (PSO) algorithm. The results from a practical 122-bus, 24 kV/400 V distribution system with different scenarios of uncontrollable and smart charging show that the sequential optimization embedded with deterministic decision can help improve customer voltage profile, keep feeder and transformer loading within acceptable operating limits and offer significant cost savings from energy loss. As far as a large number of low-voltage networks, and the associated large sum of cost savings are concerned, the proposed planning framework is practical to be applied and expected to be served as a new guideline for future implementation in Thailand.https://www.frontiersin.org/articles/10.3389/fenrg.2021.673165/fullelectric vehiclesload profile simulationparticle swarm optimizationMonte Carlo simulationlow-voltage distribution system planning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Surasit Sangob Surasit Sangob Somporn Sirisumrannukul |
spellingShingle |
Surasit Sangob Surasit Sangob Somporn Sirisumrannukul Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads Frontiers in Energy Research electric vehicles load profile simulation particle swarm optimization Monte Carlo simulation low-voltage distribution system planning |
author_facet |
Surasit Sangob Surasit Sangob Somporn Sirisumrannukul |
author_sort |
Surasit Sangob |
title |
Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads |
title_short |
Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads |
title_full |
Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads |
title_fullStr |
Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads |
title_full_unstemmed |
Optimal Sequential Distribution Planning for Low-Voltage Network With Electric Vehicle Loads |
title_sort |
optimal sequential distribution planning for low-voltage network with electric vehicle loads |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Energy Research |
issn |
2296-598X |
publishDate |
2021-07-01 |
description |
There has been a growing presence of electric vehicles in many countries including Thailand, where many forms of incentives have been provided to build integrated infrastructure, and to encourage drivers to switch to electric vehicles (EVs). Because the immediate entry of EVs unavoidably can alter household load profiles, reinforcement on the existing system based on traditional planning may not be sufficient and can introduce over or under capital and operating expenditure over the time horizon. Therefore, if distribution systems are unreadily prepared for such an uptake, three obvious problems can be expected: 1) voltage regulation, 2) overloads of the distribution feeders and the distribution transformers, and 3) high energy loss. In this paper, an activity-based, time-sequential Monte Carlo Simulation algorithm was comprehensively developed for uncontrollable and smart charging, given annually updated information of EV locations and number of EVs, their energy consumption, hourly average vehicle speed, number of daily trips, travel distance per trip, size of EV batteries, time to arrive home and time to leave home. Minimizing the annual sum of investment and operating costs over a planning period could then be sequentially solved by a Particle Swarm Optimization (PSO) algorithm. The results from a practical 122-bus, 24 kV/400 V distribution system with different scenarios of uncontrollable and smart charging show that the sequential optimization embedded with deterministic decision can help improve customer voltage profile, keep feeder and transformer loading within acceptable operating limits and offer significant cost savings from energy loss. As far as a large number of low-voltage networks, and the associated large sum of cost savings are concerned, the proposed planning framework is practical to be applied and expected to be served as a new guideline for future implementation in Thailand. |
topic |
electric vehicles load profile simulation particle swarm optimization Monte Carlo simulation low-voltage distribution system planning |
url |
https://www.frontiersin.org/articles/10.3389/fenrg.2021.673165/full |
work_keys_str_mv |
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