As autonomous robots are deployed in increasingly complex environments, platform degradation, environmental uncertainties, and deviations from validated operation conditions can make it difficult for human partners to understand robot capabilities and limitations. The ability for a robot to self-assess its competency in dynamic and uncertain environments will be a crucial next step in successful human-robot teaming. This work presents and evaluates an Event-Triggered Generalized Outcome Assessment (ET-GOA) algorithm for autonomous agents to dynamically assess task confidence during execution. The algorithm uses a fast online statistical test of the agent's observations and its model predictions to decide when competency assessment is needed. We provide experimental results using ET-GOA to generate competency reports during a simulated delivery task and suggest future research directions for self-assessing agents.
翻译:由于自主机器人部署在日益复杂的环境中,平台退化、环境不确定性和偏离经验证的操作条件可能使人类伙伴难以理解机器人的能力和局限性。机器人在动态和不确定的环境中自我评估能力的能力将是成功的人类机器人团队化的下一个关键步骤。这项工作提出并评价了自主代理商的 " 事件交错通用结果评估 " (ET-GOA)算法,以便在实施过程中动态地评估任务信心。算法使用了对代理人观测及其模型预测的快速在线统计测试,以决定何时需要能力评估。我们提供实验结果,利用ET-GOA在模拟交付任务中生成能力报告,并提出自我评估代理商的未来研究方向。</s>