ChargFlex developed advanced methodologies for the planning, operation, and decision support of EV charging infrastructures operating under uncertainty. A central achievement of the project is the development of a high-fidelity stochastic energy management framework for EV charging stations, explicitly accounting for uncertain electricity prices, renewable generation, and charging demand. Unlike many existing approaches in relevant literature, the proposed framework preserves modeling accuracy while remaining computationally tractable and suitable for real-time operation.
In parallel, the project delivered an AI-driven charging station recommendation system that combines fuzzy logic, to cover the subjectivity of the charging experience of the drivers and deep learning algorithms to support EV drivers’ decision-making. This system accounts for user preferences, charging prices, waiting times, and sustainability considerations, thereby improving charging convenience and reducing range anxiety.
The project also implemented early-stage real-time-oriented validation using simulation platforms like OPAL-RT and software prototyping, demonstrating the practical feasibility of the developed methods. Together, these achievements provide a comprehensive set of tools linking charging infrastructure operation, market participation, and user-centric decision support.