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Robust Multi-Objective PQ Scheduling for Electric Vehicles in Flexible Unbalanced Distribution Grids
Date Issued
2017-11-09
Date Available
2017-12-14T09:21:32Z
Abstract
With increased penetration of distributed energy resources and electric vehicles (EVs),different EV management strategies can be used for mitigating adverse effects and supporting the distribution grid. This paper proposes a robust multi-objective methodology for determining the optimal day-ahead EV charging schedule while complying with unbalanced distribution grid constraints.The proposed methodology considers partially competing objectives of an EV aggregatorand the respective distribution system operator, and applies a fuzzy-based mechanism for obtaining the best compromise solution. The robust formulation effectively considers the errors in the electricity price forecast and its influence on the EV schedule. Moreover, the impact of EV reactive power support on objective values and technical parameters is analysed both when EVs are the only flexible resources and when linked with other demand response programs. The method is tested on a real Danish unbalanced distribution grid with 35% EV penetration to demonstrate the effectiveness of the proposed approach. It is shown that the proposed formulation guarantees an optimal EV cost as long as the price uncertainties are lower than the aggregator¿s conservativeness degree, and that EV reactive power improves local conditions without significantly affecting the EV cost.
Other Sponsorship
ForskEL-programme (Denmark)
Type of Material
Journal Article
Publisher
The Institution of Engineering and Technology
Journal
IET Generation, Transmission and Distribution
Volume
11
Issue
16
Start Page
4031
End Page
4040
Copyright (Published Version)
2017 The Institution of Engineering and Technology
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
MONLP_IET_revision.pdf
Size
366.82 KB
Format
Adobe PDF
Checksum (MD5)
434587cfdb07b143cd91bde3f91ffbd3
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