Deep Dynamics: Vehicle Dynamics Modeling with a Physics-Constrained Neural Network for Autonomous Racing
About
Autonomous racing is a critical research area for autonomous driving, presenting significant challenges in vehicle dynamics modeling, such as balancing model precision and computational efficiency at high speeds (>280km/h), where minor errors in modeling have severe consequences. Existing physics-based models for vehicle dynamics require elaborate testing setups and tuning, which are hard to implement, time-intensive, and cost-prohibitive. Conversely, purely data-driven approaches do not generalize well and cannot adequately ensure physical constraints on predictions. This paper introduces Deep Dynamics, a physics-constrained neural network (PCNN) for vehicle dynamics modeling of an autonomous racecar. It combines physics coefficient estimation and dynamical equations to accurately predict vehicle states at high speeds and includes a unique Physics Guard layer to ensure internal coefficient estimates remain within their nominal physical ranges. Open-loop and closed-loop performance assessments, using a physics-based simulator and full-scale autonomous Indy racecar data, highlight Deep Dynamics as a promising approach for modeling racecar vehicle dynamics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Vehicle Dynamics Prediction | BayesRace | vx RMSE1.16 | 10 | |
| Vehicle Velocity Prediction | Indy Autonomous Challenge real-world D^exp_total and D^EKF (experiments) | RMSE (vx)1.852 | 10 | |
| Autonomous Racing | ETHZMobil track (simulation) | Lap Time (s)6.3 | 3 | |
| Open-Loop Vehicle State Prediction | ETHZMobil simulated S_test_D (test) | RMSE (vx)8.72 | 2 | |
| Open-Loop Vehicle State Prediction | LVMS real-world R_test_D (test) | vx RMSE4.46 | 2 |