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Designing a Transactive Electric Vehicle Agent with Customer's Participation Preference

Author

Listed:
  • Ankit Singhal
  • Sarmad Hanif
  • Bishnu Bhattarai
  • Fernando B. dos Reis
  • Hayden Reeve
  • Robert Pratt

Abstract

The proliferation of electric vehicles (EVs) and their inherent flexibility in charging timings make them an asset to improve grid performance. In contrast to direct control by a utility or autonomous price-based charging, the transactive control framework not only provides benefits to both grid and customers but also ensures customer autonomy. In this work, we design a transactive electric vehicle (TEV) agent that incorporates the EV owner's willingness to trade-off between savings and amenity in form of a slider, where the EV owner's amenity is characterized as vehicle readiness. Further, a privacy-preserving bidding formulation is proposed that also represents the customer's transactive preference. A transactive market mechanism is discussed that integrates the TEV Agents into the local retail market and reconciles with the current day-ahead and real-time market structure. It is demonstrated that the proposed slider is able to provide a preferred trade-off between savings and amenity to individual customers. At the same time, the market mechanism is shown to successfully reduce both peak prices and peak demand. A comparative investigation of V1G and V2G technologies with respect to the battery prices is also discussed.

Suggested Citation

  • Ankit Singhal & Sarmad Hanif & Bishnu Bhattarai & Fernando B. dos Reis & Hayden Reeve & Robert Pratt, 2022. "Designing a Transactive Electric Vehicle Agent with Customer's Participation Preference," Papers 2203.16516, arXiv.org.
  • Handle: RePEc:arx:papers:2203.16516
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    File URL: http://arxiv.org/pdf/2203.16516
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