Response probability enhances robustness in decentralized threshold-based robotic swarms

被引:0
作者
Annie S. Wu
R. Paul Wiegand
Ramya Pradhan
机构
[1] University of Central Florida,
[2] University of Central Florida,undefined
来源
Swarm Intelligence | 2020年 / 14卷
关键词
Response probability; Response threshold; Redundancy; Robustness; Threshold-based systems; Decentralized task allocation; Swarm robotics; Multi-agent systems;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we investigate how response probability may be used to improve the robustness of reactive, threshold-based robotic swarms. In swarms where agents have differing thresholds, adding a response probability is expected to distribute task experiences among more agents, which can increase the robustness of the swarm. If the lowest threshold agents for a task become unavailable, distributing task experience among more agents increases the chance that there are other agents in the swarm with experience on the task, which reduces performance decline due to the loss of experienced agents. We begin with a mathematical analysis of such a system and show that, for a given swarm and task demand, we can estimate the response probability values that ensure team formation and meet robustness constraints. We then verify the expected behavior on an agent based model of a foraging problem. Results indicate that response probability may be used to tune the tradeoff between system performance and system robustness.
引用
收藏
页码:233 / 258
页数:25
相关论文
共 89 条
  • [1] Ashby WR(1958)Requisite variety and its implications for the control of complex systems Cybernetica 1 83-99
  • [2] Bonabeau E(1996)Quantitative study of the fixed response threshold model for the regulation of division of labour in insect societies Proceedings of the Royal Society of London B 263 1565-1569
  • [3] Theraulaz G(1998)Fixed response thresholds and the regulation of division of labor in insect societies Bulletin of Mathematical Biology 60 753-807
  • [4] Deneubourg J(2013)Swarm robotics: A review from the swarm engineering perspective Swarm Intelligence 7 1-41
  • [5] Bonabeau E(2014)Self-organized task allocation to sequentially interdependent tasks in swarm robotics Autonomous Agents and Multi-Agent Systems 28 101-125
  • [6] Theraulaz G(2012)Costs and benefits of behavioural specialization Robotics and Autonomous Systems 60 1408-1420
  • [7] Deneubourg J(2000)Dynamic scheduling and division of labor in social insects Adaptive Behavior 8 83-96
  • [8] Brambilla M(2018)Adaptive foraging for simulated and real robotic swarms: The dynamical response threshold approach Swarm Intelligence 10 1-31
  • [9] Ferrante E(2013)Response threshold models and stochastic learning automata for self-coordination of heterogeneous multi-task distribution in multi-robot systems Robotics and Autonomous Systems 61 714-720
  • [10] Birattari M(2013)The effect of load on agent-based algorithms for distributed task allocation Information Sciences 222 66-80