Rate-Tunable Control Barrier Functions: Methods and Algorithms for Online Adaptation

03/23/2023
by   Hardik Parwana, et al.
0

Control Barrier Functions offer safety certificates by dictating controllers that enforce safety constraints. However, their response depends on the classK function that is used to restrict the rate of change of the barrier function along the system trajectories. This paper introduces the notion of Rate Tunable Control Barrier Function (RT-CBF), which allows for online tuning of the response of CBF-based controllers. In contrast to the existing CBF approaches that use a fixed (predefined) classK function to ensure safety, we parameterize and adapt the classK function parameters online. Furthermore, we discuss the challenges associated with multiple barrier constraints, namely ensuring that they admit a common control input that satisfies them simultaneously for all time. In practice, RT-CBF enables designing parameter dynamics for (1) a better-performing response, where performance is defined in terms of the cost accumulated over a time horizon, or (2) a less conservative response. We propose a model-predictive framework that computes the sensitivity of the future states with respect to the parameters and uses Sequential Quadratic Programming for deriving an online law to update the parameters in the direction of improving the performance. When prediction is not possible, we also provide point-wise sufficient conditions to be imposed on any user-given parameter dynamics so that multiple CBF constraints continue to admit common control input with time. Finally, we introduce RT-CBFs for decentralized uncooperative multi-agent systems, where a trust factor, computed based on the instantaneous ease of constraint satisfaction, is used to update parameters online for a less conservative response.

READ FULL TEXT
research
04/09/2022

Trust-based Rate-Tunable Control Barrier Functions for Non-Cooperative Multi-Agent Systems

For efficient and robust task accomplishment in multi-agent systems, an ...
research
10/02/2022

Convex synthesis and verification of control-Lyapunov and barrier functions with input constraints

Control Lyapunov functions (CLFs) and control barrier functions (CBFs) a...
research
11/16/2020

Sufficient Conditions for Feasibility of Optimal Control Problems Using Control Barrier Functions

It has been shown that satisfying state and control constraints while op...
research
12/20/2019

Probabilistic Safety Constraints for Learned High Relative Degree System Dynamics

This paper focuses on learning a model of system dynamics online while s...
research
09/26/2022

FORESEE: Model-based Reinforcement Learning using Unscented Transform with application to Tuning of Control Barrier Functions

In this paper, we introduce a novel online model-based reinforcement lea...
research
02/24/2023

Greedy Synthesis of Event- and Self-Triggered Controls with Control Lyapunov-Barrier Function

This paper addresses the co-design problem of control inputs and executi...
research
09/22/2021

Recursive Feasibility Guided Optimal Parameter Adaptation of Differential Convex Optimization Policies for Safety-Critical Systems

Quadratic programs (QPs) that enforce control barrier functions (CBFs) h...

Please sign up or login with your details

Forgot password? Click here to reset