Gabriele Martina
Adaptive Mission Optimization for Electric Vehicles Data-Driven Algorithms for Real-Time Monitoring, Driver Eco-Coaching and Cloud-Edge Integration.
Rel. Carlo Novara. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Informatica (Computer Engineering), 2025
Abstract
The rapid shift toward Battery Electric Vehicles (BEVs) makes every consumed kilowatt-hour critical: on the same route, a sporty driving style can drain the State of Charge (SoC) far faster than an eco approach, with direct repercussions on cost and emissions. This thesis demonstrates that a coordinated set of algorithms for mission optimization, real-time monitoring, and adaptive coaching can steer drivers toward more efficient behaviors, substantially cutting energy demand without sacrificing comfort or increasing travel time. The mission-optimization algorithm, developed in MATLAB/Simulink, computes once per mission an energy-optimal speed profile. An adaptability layer automatically re-tunes the cost weights according to comfort metrics extracted from the driver’s history, keeping the profile consistent with individual habits.
Two lightweight, synergistic modules have been implemented for on-board execution under hard real-time constraints
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