scholarly journals Distributed Multi-Robot Information Gathering under Spatio-Temporal Inter-Robot Constraints

Sensors ◽  
2020 ◽  
Vol 20 (2) ◽  
pp. 484
Author(s):  
Alberto Viseras ◽  
Zhe Xu ◽  
Luis Merino

Information gathering (IG) algorithms aim to intelligently select the mobile robotic sensor actions required to efficiently obtain an accurate reconstruction of a physical process, such as an occupancy map, a wind field, or a magnetic field. Recently, multiple IG algorithms that benefit from multi-robot cooperation have been proposed in the literature. Most of these algorithms employ discretization of the state and action spaces, which makes them computationally intractable for robotic systems with complex dynamics. Moreover, they cannot deal with inter-robot restrictions such as collision avoidance or communication constraints. This paper presents a novel approach for multi-robot information gathering (MR-IG) that tackles the two aforementioned restrictions: (i) discretization of robot’s state space, and (ii) dealing with inter-robot constraints. Here we propose an algorithm that employs: (i) an underlying model of the physical process of interest, (ii) sampling-based planners to plan paths in a continuous domain, and (iii) a distributed decision-making algorithm to enable multi-robot coordination. In particular, we use the max-sum algorithm for distributed decision-making by defining an information-theoretic utility function. This function maximizes IG, while fulfilling inter-robot communication and collision avoidance constraints. We validate our proposed approach in simulations, and in a field experiment where three quadcopters explore a simulated wind field. Results demonstrate the effectiveness and scalability with respect to the number of robots of our approach.

2002 ◽  
Vol 44 (4) ◽  
pp. 1-12 ◽  
Author(s):  
Phil Mellor ◽  
Stuart Green

This paper describes a case study designed to demonstrate the feasibility of building a linked decision model based on the implications of distributed decision-making in healthcare, and thus to provide the ability to make quantified predictions of product offer performance. The approach taken was to adapt an existing conjoint-based forecasting tool (CAPMOD(tm)), (Brice et al. 2000). Our results show that there is a subset of product attributes on which physicians and patients perceive substantive differences in terms of their relative importance in their views of therapy alternatives. We also demonstrate that the observed differences in predicted share uptake between the separate, non-integrated physician and patient models and the integrated model do not necessarily follow from the observed differences in average relative importance between the two customer types, as would be the case for many existing simulation models. This additional insight into the decision-making process was possible through the use of a decision model which includes the key element of individual physician-patient linkage with an associated cut-off threshold. The paper describes the details of the approach and shows example outputs from the model. It will explore a number of interesting practical and theoretical issues that were encountered in the course of conducting this research.


2012 ◽  
Vol 532-533 ◽  
pp. 566-570
Author(s):  
Lei Wang ◽  
De Chen Zhan ◽  
Lan Shun Nie ◽  
Dian Hui Chu ◽  
Xiao Fei Xu

Decentralized multi-project environment is very common in modern times, and the dynamic resource control problem for this project environment has attracted more attention. Traditional optimization method for multi-project based on the centralization in decision making does not suit for solving this problem any more. In this paper, we analyze the distributed decision making process for the dynamic resource control in the decentralized multi-project environment, and present a multi-agent system model for this problem. Using combinatorial exchange based on market, we design a negotiation mechanism to cope with the time disruptions in the stage of project execution. Computational results show that the combinatorial exchange mechanism could solve the problem effectively and has a powerful controllability for the different weights of the multiple projects.


2010 ◽  
Vol 4 (4) ◽  
pp. 328-353 ◽  
Author(s):  
Neville A. Stanton ◽  
Laura A. Rafferty ◽  
Paul M. Salmon ◽  
Kirsten M. A. Revell ◽  
Richard McMaster ◽  
...  

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