Parameter Identification and Validation of a Control-Oriented Vehicle Dynamics Model for an Autonomous Chevrolet Bolt EUV

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2026-05-26

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Virginia Tech

Abstract

Accurate and computationally tractable vehicle dynamics models are essential for autonomous vehicle development, supporting offline software validation, controller design, and simulation- based testing. This thesis presents a systematic methodology for identifying and validating the parameters of a control-oriented dynamics model of a Chevrolet Bolt EUV used by the Virginia Tech AutoDrive team. The platform introduces modeling challenges not adequately addressed by off-the-shelf tools, including a steer-by-wire steering system with speed-dependent nonlinear gain, and a Controller Area Network (CAN) interface that im- poses implementation-specific command scaling on the brake channel. A baseline Simulink model is constructed from a longitudinal force balance with assumed second-order actuator dynamics and a kinematic bicycle model for lateral motion. Parameters are identified using MATLAB's patternsearch derivative-free solver. Longitudinal identification is treated as a physics-based estimation of vehicle mass, linear viscous rolling resistance, brake command gain, and the torque actuator's dynamics. Lateral identification is treated as a data-driven functional correction, in which a two-dimensional lookup table parameterized by vehicle speed and steering command magnitude captures the nonlinear steer-by-wire response. System-level validation across four combined longitudinal-lateral maneuvers from AutoDrive competition tasks demonstrates sufficient fidelity to support con- troller development using only the GNSS, IMU, and CAN signals available on the vehicle.

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Keywords

Optimization, Vehicle Dynamics, Simulation, Parameter Identification, Kinematic Bicycle

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