We present POLAR, a polynomial arithmetic-based framework for efficient bounded-time reachability analysis of neural-network controlled systems (NNCSs). Existing approaches that leverage the standard Taylor Model (TM) arithmetic for approximating the neural-network controller cannot deal with non-differentiable activation functions and suffer from rapid explosion of the remainder when propagating the TMs. POLAR overcomes these shortcomings by integrating TM arithmetic with \textbf{Bernstein B{\'e}zier Form} and \textbf{symbolic remainder}. The former enables TM propagation across non-differentiable activation functions and local refinement of TMs, and the latter reduces error accumulation in the TM remainder for linear mappings in the netwo...
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...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...
We present POLAR, a polynomial arithmetic-based framework for efficient bounded-time reachability an...
We present POLAR (The source code can be found at https://github.com/ChaoHuang2018/POLAR_Tool. The f...
Applying neural networks as controllers in dynamical systems has shown great promises. However, it i...
This paper presents a new reachability analysis approach to compute interval over-approximations of ...
Recent advances in deep learning have bolstered our ability to forecast the evolution of dynamical s...
The desire to provide robust guarantees on neural networks has never been more important, as their p...
We propose a novel Branch-and-Bound method for reachability analysis of neural networks in both open...
In this paper, we present a data-driven framework for real-time estimation of reachable sets for con...
We study the verification problem for closed-loop dynamical systems with neural-network controllers ...
Neural network controllers (NNCs) have shown great promise in autonomous and cyber-physical systems....
International audienceThis note makes several observations on stability and performance verification...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
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...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...
We present POLAR, a polynomial arithmetic-based framework for efficient bounded-time reachability an...
We present POLAR (The source code can be found at https://github.com/ChaoHuang2018/POLAR_Tool. The f...
Applying neural networks as controllers in dynamical systems has shown great promises. However, it i...
This paper presents a new reachability analysis approach to compute interval over-approximations of ...
Recent advances in deep learning have bolstered our ability to forecast the evolution of dynamical s...
The desire to provide robust guarantees on neural networks has never been more important, as their p...
We propose a novel Branch-and-Bound method for reachability analysis of neural networks in both open...
In this paper, we present a data-driven framework for real-time estimation of reachable sets for con...
We study the verification problem for closed-loop dynamical systems with neural-network controllers ...
Neural network controllers (NNCs) have shown great promise in autonomous and cyber-physical systems....
International audienceThis note makes several observations on stability and performance verification...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
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...
This paper presents Verisig 2.0, a verification tool for closed-loop systems with neural network (NN...