In this work, we consider the problem of learning a feed-forward neural network controller to safely steer an arbitrarily shaped planar robot in a compact and obstacle-occluded workspace. Unlike existing methods that depend strongly on the density of data points close to the boundary of the safe state space to train neural network controllers with closed-loop safety guarantees, here we propose an alternative approach that lifts such strong assumptions on the data that are hard to satisfy in practice and instead allows for graceful safety violations, i.e., of a bounded magnitude that can be spatially controlled. To do so, we employ reachability analysis techniques to encapsulate safety constraints in the training process. Specifically, to ob...
Reinforcement learning (RL) is capable of sophisticated motion planning and control for robots in un...
The last decade has witnessed tremendous success in using machine learning (ML) to control physical ...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
Reinforcement learning (RL) algorithms can achieve state-of-the-art performance in decision-making a...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
Autonomous robots that are capable of operating safely in the presence of imperfect model knowledge ...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
Abstract — Reinforcement learning for robotic applications faces the challenge of constraint satisfa...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
Control barrier functions (CBF) are widely used in safety-critical controllers. However, the constru...
Stability and safety are critical properties for successful deployment of automatic control systems....
In this paper we present the implementation of a Control Barrier Function (CBF) using a quadratic pr...
Reinforcement learning (RL) is capable of sophisticated motion planning and control for robots in un...
The last decade has witnessed tremendous success in using machine learning (ML) to control physical ...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...
We propose new methods to synthesize control barrier function (CBF)-based safe controllers that avoi...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
Reinforcement learning (RL) algorithms can achieve state-of-the-art performance in decision-making a...
The increasing prevalence of neural networks (NNs) in safety-critical applications calls for methods...
Autonomous robots that are capable of operating safely in the presence of imperfect model knowledge ...
Reinforcement learning is an increasingly popular framework that enables robots to learn to perform ...
Abstract — Reinforcement learning for robotic applications faces the challenge of constraint satisfa...
Safety certification of data-driven control techniques remains a major open problem. This work inves...
Learning-based methods are promising for tackling the inherent nonlinearity and model uncertainty in...
Control barrier functions (CBF) are widely used in safety-critical controllers. However, the constru...
Stability and safety are critical properties for successful deployment of automatic control systems....
In this paper we present the implementation of a Control Barrier Function (CBF) using a quadratic pr...
Reinforcement learning (RL) is capable of sophisticated motion planning and control for robots in un...
The last decade has witnessed tremendous success in using machine learning (ML) to control physical ...
As neural networks (NNs) become more prevalent in safety-critical applications such as control of ve...