OPTIMIZING TORQUE DELIVERY FOR AN ENERGY-LIMITED ELECTRIC RACE CAR USING MODEL PREDICTIVE CONTROL

Optimizing Torque Delivery for an Energy-Limited Electric Race Car Using Model Predictive Control

Optimizing Torque Delivery for an Energy-Limited Electric Race Car Using Model Predictive Control

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This paper presents a torque controller for the energy optimization of the powertrain of an electric Formula Student race car.Limited battery capacity within electric race car designs requires energy management Fabric Pens solutions to minimize lap time while simultaneously controlling and managing the overall energy consumption to finish the race.The energy-managing torque control algorithm developed in this work optimizes the finite onboard energy from the battery pack to reduce lap time and energy consumption when energy deficits occur.The longitudinal dynamics of the vehicle were represented by a linearized first-principles model and validated against a parameterized electric Formula Student race car model in commercial lap time simulation software.A Simulink-based model predictive controller (MPC) architecture was created to balance energy use requirements with optimum Detox lap time.

This controller was tested against a hardware-limited and torque-limited system in a constant torque request and a varying torque request scenario.The controller decreased the elapsed time to complete a 150 m straight-line acceleration by 11.4% over the torque-limited solution and 13.5% in a 150 m Formula Student manoeuvre.

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