Konsep Inti
The author presents an adaptive online learning framework for safety-critical control in non-stationary environments using Gaussian processes. The approach involves two phases: a novel sparse Gaussian process framework and a safety filter based on high order control barrier functions.
Abstrak
The paper introduces an adaptive online learning framework for safety-critical control in uncertain systems. It consists of two phases: one focusing on a sparse Gaussian process framework and the other proposing a safety filter based on high order control barrier functions. The efficacy of the algorithm is demonstrated through real-time obstacle avoidance experiments.
Key points:
- Introduction to adaptive online learning for safety-critical control.
- Two-phase approach involving sparse Gaussian processes and high order control barrier functions.
- Demonstration of algorithm effectiveness through obstacle avoidance experiments.
Statistik
Time complexity reduced from O(NM^2) to O(M^3)
MSE comparison: AFVSGP (0.5863), VSGP (1.4844), GP (6.6029), SOGP (0.8118)
Training time comparison: AFVSGP (0.00613s), VSGP (0.03562s), GP, SOGP (not specified)
Kutipan
"Control barrier functions offer a framework for ensuring state forward-invariance."
"Gaussian processes stand out for modeling complex functions with minimal prior knowledge."
"Our proposed algorithm demonstrates real-time adaptability in obstacle avoidance tasks."