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Research on intelligent charging method of electric vehicles based on virtual power plants

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Listed:
  • Lianrong Pan
  • Jiayi Yang
  • Peikai Li

Abstract

The rising number of Electric Vehicles (EVs) requires new charging options to address grid integration and environmental concerns. Innovative charging methods are needed to reduce the burden on conventional infrastructure from electric automobiles. By applying these methods to VPPs, we can improve grid efficiency, electric car charging and energy sustainability. This research proposes the VPP-EV Charging Optimisation Framework (VPECOF) to evaluate the necessity and feasibility of an intelligent charging strategy for electric cars. A solution to the increased demand for electric vehicle charging infrastructure that meets grid stability and sustainable energy objectives is being developed using VPP technology and Smart Charging Optimisation Algorithms (SCOA). The suggested technique considers grid capacity, renewable energy availability and user preferences to improve charge schedules. This research simulates and analyses the intelligent charging strategy in the VPP framework, proving its efficacy and feasibility. The data may illuminate the benefits of synchronised electric car charging, such as peak demand reduction, grid resilience and renewable power integration. The study impacts transportation and energy regulators, utilities and stakeholders. The work improves electric car intelligent charging techniques and has consequences for their evolution.

Suggested Citation

  • Lianrong Pan & Jiayi Yang & Peikai Li, 2025. "Research on intelligent charging method of electric vehicles based on virtual power plants," International Journal of Global Energy Issues, Inderscience Enterprises Ltd, vol. 47(6), pages 580-600.
  • Handle: RePEc:ids:ijgeni:v:47:y:2025:i:6:p:580-600
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