Leone Fabio
Synthetic time series generation for reproducing driver behavior in Electric Vehicles.
Rel. Eliana Pastor, Eleonora Poeta, Maria Camuglia. Politecnico di Torino, Master of science program in Computer Engineering, 2025
Abstract
The rapid adoption of electric vehicles (EVs) is transforming transportation and energy systems, creating new opportunities for data-based optimization of battery use, charging infrastructure, and energy management. However, the limited accessibility of real-world EV data due to privacy constraints, proprietary restrictions, and high collection costs poses significant challenges for developing and validating analytical and predictive models. To address this limitation, this thesis proposes a comprehensive framework for generating and evaluating synthetic electric vehicle time-series data that reproduces the temporal, statistical, and behavioral characteristics of real-world operation. The approach models two fundamental event types, trips and charging sessions, which form irregular, event-driven sequences with strong causal dependencies.
To capture these dynamics, we propose an adaptation of the KoVAE generative model to produce short temporal windows of synthetic data that preserve local dependencies between trips and charging events
Relators
Academic year
Publication type
Number of Pages
Additional Information
Course of studies
Classe di laurea
Aziende collaboratrici
URI
![]() |
Modify record (reserved for operators) |
