Multi-agents adaptive estimation and coverage control using Gaussian regression

07/22/2014
by   Andrea Carron, et al.
0

We consider a scenario where the aim of a group of agents is to perform the optimal coverage of a region according to a sensory function. In particular, centroidal Voronoi partitions have to be computed. The difficulty of the task is that the sensory function is unknown and has to be reconstructed on line from noisy measurements. Hence, estimation and coverage needs to be performed at the same time. We cast the problem in a Bayesian regression framework, where the sensory function is seen as a Gaussian random field. Then, we design a set of control inputs which try to well balance coverage and estimation, also discussing convergence properties of the algorithm. Numerical experiments show the effectivness of the new approach.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/12/2021

Regret Analysis of Distributed Gaussian Process Estimation and Coverage

We study the problem of distributed multi-robot coverage over an unknown...
research
06/27/2014

Optimal Population Codes for Control and Estimation

Agents acting in the natural world aim at selecting appropriate actions ...
research
06/28/2021

Online Estimation and Coverage Control with Heterogeneous Sensing Information

Heterogeneous multi-robot sensing systems are able to characterize physi...
research
07/08/2021

Distributed Coverage Control of Multi-Agent Networks with Guaranteed Collision Avoidance in Cluttered Environments

We propose a distributed control algorithm for a multi-agent network who...
research
08/03/2019

Distributed Adaptive Coverage Control of Differential Drive Robotic Sensors

This paper is concerned with the deployment of multiple mobile robots in...
research
11/29/2017

PDE-Based Optimization for Stochastic Mapping and Coverage Strategies using Robotic Ensembles

This paper presents a novel partial differential equation (PDE)-based fr...
research
01/22/2013

The connection between Bayesian estimation of a Gaussian random field and RKHS

Reconstruction of a function from noisy data is often formulated as a re...

Please sign up or login with your details

Forgot password? Click here to reset