Saved in:
Bibliographic Details
Main Authors: Lindemann, Lars, Robey, Alexander, Jiang, Lejun, Das, Satyajeet, Tu, Stephen, Matni, Nikolai
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2111.09971
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909157959925760
author Lindemann, Lars
Robey, Alexander
Jiang, Lejun
Das, Satyajeet
Tu, Stephen
Matni, Nikolai
author_facet Lindemann, Lars
Robey, Alexander
Jiang, Lejun
Das, Satyajeet
Tu, Stephen
Matni, Nikolai
contents This paper addresses learning safe output feedback control laws from partial observations of expert demonstrations. We assume that a model of the system dynamics and a state estimator are available along with corresponding error bounds, e.g., estimated from data in practice. We first propose robust output control barrier functions (ROCBFs) as a means to guarantee safety, as defined through controlled forward invariance of a safe set. We then formulate an optimization problem to learn ROCBFs from expert demonstrations that exhibit safe system behavior, e.g., data collected from a human operator or an expert controller. When the parametrization of the ROCBF is linear, then we show that, under mild assumptions, the optimization problem is convex. Along with the optimization problem, we provide verifiable conditions in terms of the density of the data, smoothness of the system model and state estimator, and the size of the error bounds that guarantee validity of the obtained ROCBF. Towards obtaining a practical control algorithm, we propose an algorithmic implementation of our theoretical framework that accounts for assumptions made in our framework in practice. We validate our algorithm in the autonomous driving simulator CARLA and demonstrate how to learn safe control laws from simulated RGB camera images.
format Preprint
id arxiv_https___arxiv_org_abs_2111_09971
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Learning Robust Output Control Barrier Functions from Safe Expert Demonstrations
Lindemann, Lars
Robey, Alexander
Jiang, Lejun
Das, Satyajeet
Tu, Stephen
Matni, Nikolai
Systems and Control
Machine Learning
This paper addresses learning safe output feedback control laws from partial observations of expert demonstrations. We assume that a model of the system dynamics and a state estimator are available along with corresponding error bounds, e.g., estimated from data in practice. We first propose robust output control barrier functions (ROCBFs) as a means to guarantee safety, as defined through controlled forward invariance of a safe set. We then formulate an optimization problem to learn ROCBFs from expert demonstrations that exhibit safe system behavior, e.g., data collected from a human operator or an expert controller. When the parametrization of the ROCBF is linear, then we show that, under mild assumptions, the optimization problem is convex. Along with the optimization problem, we provide verifiable conditions in terms of the density of the data, smoothness of the system model and state estimator, and the size of the error bounds that guarantee validity of the obtained ROCBF. Towards obtaining a practical control algorithm, we propose an algorithmic implementation of our theoretical framework that accounts for assumptions made in our framework in practice. We validate our algorithm in the autonomous driving simulator CARLA and demonstrate how to learn safe control laws from simulated RGB camera images.
title Learning Robust Output Control Barrier Functions from Safe Expert Demonstrations
topic Systems and Control
Machine Learning
url https://arxiv.org/abs/2111.09971