Human-swarm Interactions for Formation Control Using Interpreters

被引:0
作者
Aamodh Suresh
Sonia Martínez
机构
[1] University of California at San Diego,Department of Mechanical and Aerospace Engineering
来源
International Journal of Control, Automation and Systems | 2020年 / 18卷
关键词
Distributed control; dynamic average consensus; formation control; human-swarm interaction; shape morphing dynamics; shape planning;
D O I
暂无
中图分类号
学科分类号
摘要
In this work, we develop a novel Human-Swarm Interaction (HSI) framework for formation control using the notion of an interpreter, enabling the user to control a robotic swarm's shape and formation using abstraction. The user conveys their intended commands by drawing shapes through arm gestures and motions which are recorded by an off-the-shelf wearable device. We propose a novel interpreter system, which acts as an intermediary between the user and the swarm to simplify the roles of both. The interpreter takes in high level input in the form of shapes drawn by the user, and translates it into swarm control commands by planning in the shape space using novel shape morphing dynamics (SMD), which is also used for user feedback. The proposed interpreter employs machine learning, estimation and optimal control techniques to translate the users intention into swarm control parameters. The dynamics of the swarm are realized by means of a novel decentralized formation controller based on distributed linear iterations and dynamic average consensus. Theoretical guarantees of convergence along with convergence rate of the proposed swarm controller are given. The resulting shape morphing dynamics are illustrated and discussed through simulations. The entire framework is demonstrated theoretically as well as experimentally in a 2D environment, with a human controlling a swarm of simulated robots in real time with the help of a Graphical User Environemnt (GUI).
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页码:2131 / 2144
页数:13
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共 65 条
  • [1] Olfati-Saber R(2006)Consensus and cooperation in multi-agent networked systems Proceedings of the IEEE 95 215-233
  • [2] Fax J A(2003)Coordination of groups of mobile autonomous agents using nearest neighbor rules IEEE Transactions on Automatic Control 48 988-1001
  • [3] Murray R M(2016)Human interaction with robot swarms: a survey IEEE Transactions on Human-Machine Systems 46 9-26
  • [4] Jadbabaie A(2018)Scheduledasynchronous distributed algorithm for optimal power flow IEEE Transactions on Control of Network Systems 6 261-275
  • [5] Lin J(2019)Discrete-time selfish routing converging to the wardrop equilibrium IEEE Transactions on Automatic Control 64 1288-1294
  • [6] Morse A S(2018)Distributed dynamic lane reversal and rerouting for traffic delay reduction International Journal of Control 91 2355-2365
  • [7] Kolling A(2004)Information flow and cooperative control of vehicle formations IEEE Transactions on Automatic Control 49 1465-1476
  • [8] Phillip W(2016)Consensus of second-order multi-agent systems using partial agents velocity measurements Nonlinear Dynamics 86 1927-1935
  • [9] Chakraborty N(2017)A distributed dynamics for virus-spread control Automatica 76 41-48
  • [10] Sycara K(2015)A survey of multiagent formation control Automatica 53 424-440