Safe control with guarantees generally requires the system model to be known. It is far more challenging to handle systems with uncertain parameters. In this paper, we propose a generic algorithm that can synthesize and verify safe controllers for systems with constant, unknown parameters. In particular, we use robust-adaptive control barrier functions (raCBFs) to achieve safety. We develop new theories and techniques using sum-of-squares that enable us to pose synthesis and verification as a series of convex optimization problems. In our experiments, we show that our algorithms are general and scalable, applying them to three different polynomial systems of up to moderate size (7D). Our raCBFs are currently the most effective way to guaran...
To bring complex systems into real world environments in a safe manner, they will have to be robust ...
Barrier functions (also called certificates) have been an important tool for the verification of hyb...
Control design for nonlinear dynamical systems is an essential field of study in a world growing eve...
Adaptive control has focused on online control of dynamic systems in the presence of parametric unce...
This paper studies the problem of utilizing data-driven adaptive control techniques to guarantee sta...
This work provides formal safety guarantees for control systems with disturbance. A disturbance obse...
This work presents a safe control design approach that integrates the disturbance observer (DOB) and...
Control barrier functions (CBF) are widely used in safety-critical controllers. However, the constru...
Safely controlling unknown dynamical systems is one of the biggest challenges in the field of contro...
Adaptive Control Lyapunov Functions (aCLFs) were introduced 20 years ago, and provided a Lyapunov-ba...
The control Barrier function approach has been widely used for safe controller synthesis. By solving...
This paper considers safe control synthesis for dynamical systems with either probabilistic or worst...
In this paper, we propose a novel predictive safety filter that is robust to bounded perturbations a...
This paper develops a model-based reinforcement learning (MBRL) framework for learning online the va...
We consider the problem of ensuring the safety of nonlinear control systems under adversarial signal...
To bring complex systems into real world environments in a safe manner, they will have to be robust ...
Barrier functions (also called certificates) have been an important tool for the verification of hyb...
Control design for nonlinear dynamical systems is an essential field of study in a world growing eve...
Adaptive control has focused on online control of dynamic systems in the presence of parametric unce...
This paper studies the problem of utilizing data-driven adaptive control techniques to guarantee sta...
This work provides formal safety guarantees for control systems with disturbance. A disturbance obse...
This work presents a safe control design approach that integrates the disturbance observer (DOB) and...
Control barrier functions (CBF) are widely used in safety-critical controllers. However, the constru...
Safely controlling unknown dynamical systems is one of the biggest challenges in the field of contro...
Adaptive Control Lyapunov Functions (aCLFs) were introduced 20 years ago, and provided a Lyapunov-ba...
The control Barrier function approach has been widely used for safe controller synthesis. By solving...
This paper considers safe control synthesis for dynamical systems with either probabilistic or worst...
In this paper, we propose a novel predictive safety filter that is robust to bounded perturbations a...
This paper develops a model-based reinforcement learning (MBRL) framework for learning online the va...
We consider the problem of ensuring the safety of nonlinear control systems under adversarial signal...
To bring complex systems into real world environments in a safe manner, they will have to be robust ...
Barrier functions (also called certificates) have been an important tool for the verification of hyb...
Control design for nonlinear dynamical systems is an essential field of study in a world growing eve...