Skip to main content
Power Systems Computation Conference 2024

Proceedings of the 23rd Power Systems Computation Conference - PSCC 2024 »

View File
PDF
0.8MB

Efficient Quantification and Representation of Aggregate Flexibility of Electric Vehicles

Aggregation is crucial to the effective use of flexibility, especially in the case of electric vehicles (EVs) because of their limited individual battery sizes and large aggregate impact. This research proposes a novel method to quantify and represent the aggregate charging flexibility of EV fleets within a fixed flexibility request window. These windows can be chosen based on relevant network operator needs, such as evening congestion periods. The proposed representation is independent of the number of assets but scales only with the number of discrete time steps in the chosen window. The representation involves 2T parameters, with T being the number of consecutive time steps in the window. The feasibility of aggregate power signals can be checked using 2T constraints and optimized using 2(2T-1) constraints, both exactly capturing the flexibility region. Using a request window eliminates uncertainty related to EV arrival and departure times outside the window. We present the necessary theoretical framework for our proposed methods and outline steps for transitioning between representations. Additionally, we compare the computational efficiency of the proposed method with the common direct aggregation method, where individual EV constraints are concatenated.

Nanda Kishor Panda
Delft University of Technology
Netherlands

Simon H. Tindemans
Delft University of Technology
Netherlands

 


Powered by OpenConf®
Copyright ©2002-2024 Zakon Group LLC