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Bayesian optimization with embedded stochastic functionality for enhanced robotic obstacle avoidance.

Authors :
Teodorescu, Catalin Stefan
West, Andrew
Lennox, Barry
Source :
Control Engineering Practice. Jan2025, Vol. 154, pN.PAG-N.PAG. 1p.
Publication Year :
2025

Abstract

Designing an obstacle avoidance algorithm that incorporates the stochastic nature of human–robot-environment interactions is challenging. In high risk activities, such as those found in nuclear environments, a comprehensive approach towards handling uncertainty is essential. In this article, in the context of safe teleoperation of robots, an automated iterative sampling procedure based on Bayesian optimization is proposed, where the robot is trained to predict the behaviour of a human operator. Specifically, a Gaussian process regression model is used to learn an effective representation of a safe stop manoeuvre, required for implementing an obstacle avoidance shared control algorithm. This model is then used to predict the future time duration to execute a safe stop manoeuvre, given the current real-world circumstances. The control algorithm expects this value to be reasonably high; if not, it will gradually reduce the human operator's authority. A distinctive attribute of the proposed method is the use of statistical confidence metrics as tuning parameters, intended to provide a statistical indication of whether or not an obstacle will be avoided. The proof-of-concept experiments were carried out using three robotic platforms suited for use in nuclear robotics, an amphibious SuperDroid HD2 robot equipped with a Velodyne VLP16 (a 3D lidar), an AgileX Scout Mini R&D Pro land robot fitted with a Realsense D435 depth camera, and a Husarion ROSBot 2.0 Pro supplied with an RPLIDAR A3 (a 2D lidar). The test results show that the proposed Bayesian optimization method uses 8 times less data compared to an exhaustive grid approach, and that it provides a robot-agnostic, robust obstacle avoidance. • Gaussian process regression effectively models human–robot-environment interactions. • Bayesian optimization uses eight times less data compared to exhaustive grid. • Obstacle avoidance shared control enhances performance of teleoperated land robots. • Statistical confidence metrics tune a control algorithm and quantify success rate. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09670661
Volume :
154
Database :
Academic Search Index
Journal :
Control Engineering Practice
Publication Type :
Academic Journal
Accession number :
181161207
Full Text :
https://doi.org/10.1016/j.conengprac.2024.106141