4.7 Article

Optimal Bidding and Operation Strategies for EV Aggegators by Regrouping Aggregated EV Batteries

Journal

IEEE TRANSACTIONS ON SMART GRID
Volume 11, Issue 6, Pages 4928-4937

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSG.2020.2999887

Keywords

Batteries; Regulation; Schedules; Stochastic processes; Optimization; Indexes; Electric vehicles; Vehicle-to-grid; multi-stage stochastic optimization; electric vehicle; capacity volatility; scenario sampling

Funding

  1. Konkuk University

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We propose an optimal operation strategy for an electric vehicle (EV) aggregator (AGG), which performs energy arbitrage in the energy market and provides ancillary services from aggregated EVs, while providing charging services to EVs to maximize the profit in a future energy market. We group EV batteries as several virtual batteries (VB) with respect to their departure time and stages to implement multiple schedules simultaneously in the multi-stage stochastic optimization (MSSO). They are continuously grouped and regrouped as EVs arrive and depart. We predict VB scenario trees of stepwise EV driving routes and optimize the decisions in responding to uncertain EV movements. The VB states change as EVs enter and exit through the stages, so we should indirectly track time-varying VB characteristics at each stage. Then, we distribute the regulation bids for the VBs to the individual EVs. To reduce mismatches between the bidding amounts for VBs and actual transacted amounts for EVs, we suggest a novel binary progressive hedging algorithm to quickly determine the VB operations. Based on data from historical vehicle statistics, we verify that our strategy with the MSSO model provides a higher profit to the AGG than two-stage stochastic models.

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