Safety certification of data-driven control techniques remains a major open problem. This work investigates backward reachability as a framework for providing collision avoidance guarantees for systems controlled by neural network (NN) policies. Because NNs are typically not invertible, existing methods conservatively assume a domain over which to relax the NN, which causes loose over-approximations of the set of states that could lead the system into the obstacle (i.e., backprojection (BP) sets). To address this issue, we introduce DRIP, an algorithm with a refinement loop on the relaxation domain, which substantially tightens the BP set bounds. Furthermore, we introduce a formulation that enables directly obtaining closed-form representat...
International audienceA forward reachability analysis method for the safety verification of nonlinea...
Control design for general nonlinear robotic systems with guaranteed stability and/or safety in the ...
A common problem affecting neural network (NN) approximations of model predictive control (MPC) poli...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
We propose a novel Branch-and-Bound method for reachability analysis of neural networks in both open...
In this work, we consider the problem of learning a feed-forward neural network controller to safely...
Hybrid zonotopes generalize constrained zonotopes by introducing additional binary variables and pos...
Applying neural networks as controllers in dynamical systems has shown great promises. However, it i...
Artificial neural networks have recently been utilized in many feedback control systems and introduc...
We consider the problem of computing reach-avoid probabilities for iterative predictions made with B...
In this paper, we present a data-driven framework for real-time estimation of reachable sets for con...
Neural networks (NNs) are increasingly applied in safety-critical systems such as autonomous vehicle...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
In this article, we present a layer-wise refinement method for neural network output range analysis....
International audienceA forward reachability analysis method for the safety verification of nonlinea...
Control design for general nonlinear robotic systems with guaranteed stability and/or safety in the ...
A common problem affecting neural network (NN) approximations of model predictive control (MPC) poli...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
We propose a novel Branch-and-Bound method for reachability analysis of neural networks in both open...
In this work, we consider the problem of learning a feed-forward neural network controller to safely...
Hybrid zonotopes generalize constrained zonotopes by introducing additional binary variables and pos...
Applying neural networks as controllers in dynamical systems has shown great promises. However, it i...
Artificial neural networks have recently been utilized in many feedback control systems and introduc...
We consider the problem of computing reach-avoid probabilities for iterative predictions made with B...
In this paper, we present a data-driven framework for real-time estimation of reachable sets for con...
Neural networks (NNs) are increasingly applied in safety-critical systems such as autonomous vehicle...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
In this article, we present a layer-wise refinement method for neural network output range analysis....
International audienceA forward reachability analysis method for the safety verification of nonlinea...
Control design for general nonlinear robotic systems with guaranteed stability and/or safety in the ...
A common problem affecting neural network (NN) approximations of model predictive control (MPC) poli...