Artigo Revisado por pares

Inducing Human Behavior to Maximize Operation Performance at PEV Charging Station

2021; Institute of Electrical and Electronics Engineers; Volume: 12; Issue: 4 Linguagem: Inglês

10.1109/tsg.2021.3066998

ISSN

1949-3061

Autores

Teng Zeng, Sangjae Bae, Bertrand Travacca, Scott Moura,

Tópico(s)

Smart Grid Energy Management

Resumo

Plug-in electric vehicle (PEV) charging station service capability is physically limited by the charger availability and local transformer capacity. However, the station operation performance has become an increasingly important factor for enhancing charging service accessibility. In this work, we propose an innovative station-level optimization framework to operate charging station with optimal pricing policy and charge scheduling. This model incorporates human behaviors to explicitly and effectively capture drivers' charging decision process. We propose a menu of price-differentiated charging services, which differ in both the per-unit prices and the energy delivery schedule. Involving human in the loop, the operation model also exploits the capability to alleviate the overstay issue that occurs when a PEV's charging session has completed. We then propose a muli-block convex transformation methodology to reformulate the resulted non-convex problem via Fenchel-Young Inequality; the Block Coordinate Descent algorithm is applied to solve the overall problem and the efficiency enables real-time implementation. As a result, our simulation demonstrates that the proposed control polices can realize benefits in three aspects: (i) net profits gains, (ii) overstay reduction, and (iii) quality-of-service increase.

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