论文标题
信任意识到的应急响应,以弹性的人类处理合作系统
Trust Aware Emergency Response for A Resilient Human-Swarm Cooperative System
论文作者
论文摘要
一个人类塑造的合作系统,将多个机器人和人类主管混合在一起,形成一个异质团队,被广泛用于新兴场景,例如在社会保障方面的犯罪跟踪和自然灾害中的受害者援助。这些紧急情况要求合作团队快速终止当前任务,并将系统转移到新任务,从而使运动计划难以实现。此外,由于任务的直接过渡,物理系统和先前任务的不确定性被积累以降低群体性能,导致机器人失败并影响人与机器人群之间的合作效率。因此,鉴于快速过渡要求和引入的不确定性,与执行允许任务之间逐步过渡的正常任务相比,人类劳累系统应对紧急任务是一项挑战。人类的信任揭示了他人的行为期望,并用于调整不满意的行为以更好地合作。受到人类信任的启发,在本文中,开发了一种信任感知的反思性控制(Trust-R),以动态校准人类洗手的合作。 Trust-r基于加权平均分子降低算法(WMSR)和人类信任建模,有助于群体从人类信任的角度自我反省其表现;然后在人类干预之前的早期阶段积极纠正其错误行为。一种典型的任务情景{紧急响应}是在真正的仿真环境中设计的,并进行了145名志愿者的人类用户研究。 Trust-R在纠正紧急响应中纠正错误行为方面的有效性通过了提高的群体表现和提高信任得分来验证。
A human-swarm cooperative system, which mixes multiple robots and a human supervisor to form a heterogeneous team, is widely used for emergent scenarios such as criminal tracking in social security and victim assistance in a natural disaster. These emergent scenarios require a cooperative team to quickly terminate the current task and transit the system to a new task, bringing difficulty in motion planning. Moreover, due to the immediate task transitions, uncertainty from both physical systems and prior tasks is accumulated to decrease swarm performance, causing robot failures and influencing the cooperation effectiveness between the human and the robot swarm. Therefore, given the quick-transition requirements and the introduced uncertainty, it is challenging for a human-swarm system to respond to emergent tasks, compared with executing normal tasks where a gradual transition between tasks is allowed. Human trust reveals the behavior expectations of others and is used to adjust unsatisfactory behaviors for better cooperation. Inspired by human trust, in this paper, a trust-aware reflective control (Trust-R) is developed to dynamically calibrate human-swarm cooperation. Trust-R, based on a weighted mean subsequence reduced algorithm (WMSR) and human trust modeling, helps a swarm to self-reflect its performance from the perspective of human trust; then proactively correct its faulty behaviors in an early stage before a human intervenes. One typical task scenario {emergency response} was designed in the real-gravity simulation environment, and a human user study with 145 volunteers was conducted. Trust-R's effectiveness in correcting faulty behaviors in emergency response was validated by the improved swarm performance and increased trust scores.