Trust-Aware Reflective Control for Fault-Resilient Dynamic Task Response in Human–Swarm Cooperation

AI Pub Date : 2024-03-21 DOI:10.3390/ai5010022
Yibei Guo, Yijiang Pang, Joseph Lyons, Michael Lewis, K. Sycara, Rui Liu
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Abstract

Due to the complexity of real-world deployments, a robot swarm is required to dynamically respond to tasks such as tracking multiple vehicles and continuously searching for victims. Frequent task assignments eliminate the need for system calibration time, but they also introduce uncertainty from previous tasks, which can undermine swarm performance. Therefore, responding to dynamic tasks presents a significant challenge for a robot swarm compared to handling tasks one at a time. In human–human cooperation, trust plays a crucial role in understanding each other’s performance expectations and adjusting one’s behavior for better cooperation. Taking inspiration from human trust, this paper introduces a trust-aware reflective control method called “Trust-R”. Trust-R, based on a weighted mean subsequence reduced algorithm (WMSR) and human trust modeling, enables a swarm to self-reflect on its performance from a human perspective. It proactively corrects faulty behaviors at an early stage before human intervention, mitigating the negative influence of uncertainty accumulated from dynamic tasks. Three typical task scenarios {Scenario 1: flocking to the assigned destination; Scenario 2: a transition between destinations; and Scenario 3: emergent response} were designed in the real-gravity simulation environment, and a human user study with 145 volunteers was conducted. Trust-R significantly improves both swarm performance and trust in dynamic task scenarios, marking a pivotal step forward in integrating trust dynamics into swarm robotics.
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面向人群合作中故障弹性动态任务响应的信任意识反射控制
由于现实世界部署的复杂性,机器人群需要动态响应任务,如跟踪多辆车辆和持续搜索受害者。频繁的任务分配消除了对系统校准时间的需求,但也带来了先前任务的不确定性,这可能会影响机器人群的性能。因此,与逐次处理任务相比,响应动态任务对机器人群来说是一项重大挑战。在人与人的合作中,信任在理解对方的性能期望和调整自己的行为以实现更好的合作方面起着至关重要的作用。本文从人类信任中汲取灵感,提出了一种名为 "信任-R "的信任感知反射控制方法。Trust-R 基于加权平均子序列缩减算法(WMSR)和人类信任建模,使蜂群能够从人类的角度自我反思其表现。它能在人类干预之前的早期阶段主动纠正错误行为,减轻动态任务中积累的不确定性带来的负面影响。在真实重力模拟环境中设计了三个典型的任务场景(场景 1:蜂拥至指定目的地;场景 2:目的地之间的转换;场景 3:突发响应),并对 145 名志愿者进行了人类用户研究。在动态任务场景中,Trust-R 极大地提高了蜂群的性能和信任度,标志着在将信任动力学融入蜂群机器人技术方面迈出了关键的一步。
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