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Journal ArticleDOI

A-STC: auction-based spanning tree coverage algorithm formotion planning of cooperative robots

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TLDR
In this paper, an auction-based spanning tree coverage (A-STC) algorithm is proposed to deal with the MCMP problem in which every reachable area must be covered is common in multi-robot systems.
Abstract
The multi-robot coverage motion planning (MCMP) problem in which every reachable area must be covered is common in multi-robot systems. To deal with the MCMP problem, we propose an efficient, complete, and off-line algorithm, named the “auction-based spanning tree coverage (A-STC)” algorithm. First, the configuration space is divided into mega cells whose size is twice the minimum coverage range of a robot. Based on connection relationships among mega cells, a graph structure can be obtained. A robot that circumnavigates a spanning tree of the graph can generate a coverage trajectory. Then, the proposed algorithm adopts an auction mechanism to construct one spanning tree for each robot. In this mechanism, an auctioneer robot chooses a suitable vertex of the graph as an auction item from neighboring vertexes of its spanning tree by heuristic rules. A bidder robot submits a proper bid to the auctioneer according to the auction vertexes’ relationships with the spanning tree of the robot and the estimated length of its trajectory. The estimated length is calculated based on vertexes and edges in the spanning tree. The bidder with the highest bid is selected as a winner to reduce the makespan of the coverage task. After auction processes, acceptable coverage trajectories can be planned rapidly. Computational experiments validate the effectiveness of the proposed MCMP algorithm and the method for estimating trajectory lengths. The proposed algorithm is also compared with the state-of-the-art algorithms. The comparative results show that the A-STC algorithm has apparent advantages in terms of the running time and the makespan for large crowded configuration spaces.

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Citations
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Journal ArticleDOI

A collaborative target tracking algorithm for multiple UAVs with inferior tracking capabilities

TL;DR: In this paper, the authors proposed a tracking method based on intention estimation and effective cooperation for UAVs with inferior tracking capabilities to track the targets that may have agile, uncertain, and intelligent motion.
Proceedings ArticleDOI

Efficient Navigation Aware Seabed Coverage using AUVs

TL;DR: In this article, the authors compute trajectories that guarantee coverage for a given area under assumptions on worst case localization error growth, and further compute upper bounds for how large areas can be covered using common coverage patterns and a single landmark.
Book ChapterDOI

A Cell Potential and Motion Pattern Driven Multi-robot Coverage Path Planning Algorithm

TL;DR: The results obtained by us show that the CPMPC algorithm could solve the multi-robot coverage path planning (MCPP) problem effectively with guarantee of complete coverage, and improved makespan.
Book ChapterDOI

Multi-UAVs Coverage Path Planning

TL;DR: This literature review attempts to summarize and analyze some recent works on Coverage Path Planning (CPP) strategies, and is interested by those that consider UAV fleets.
References
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Journal ArticleDOI

Coverage for robotics – A survey of recent results

TL;DR: This paper surveys recent results in coverage path planning, a new path planning approach that determines a path for a robot to pass over all points in its free space, and organizes the coverage algorithms into heuristic, approximate, partial-approximate and exact cellular decompositions.
Journal ArticleDOI

A survey on coverage path planning for robotics

TL;DR: A review of the most successful CPP methods, focusing on the achievements made in the past decade, is presented, providing links to the most interesting and successful works.
Journal ArticleDOI

Market-Based Multirobot Coordination: A Survey and Analysis

TL;DR: An introduction to market-based multirobot coordination is provided, a review and analysis of the state of the art in the field, and a discussion of remaining research challenges are discussed.
Book ChapterDOI

Multi-robot Task Allocation: A Review of the State-of-the-Art

TL;DR: This chapter provides a comprehensive review on challenging aspects of MRTA problem, recent approaches to tackle this problem and the future directions.
Journal ArticleDOI

Efficient Boustrophedon Multi-Robot Coverage: an algorithmic approach

TL;DR: A set of multi-robot coverage algorithms is presented that minimize repeat coverage and use the same planar cell-based decomposition as the Boustrophedon single robot coverage algorithm, but provide extensions to handle how robots cover a single cell, and how robots are allocated among cells.
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