Aguado Esther, Gomez Virgilio, Hernando Miguel, Rossi Claudio, Sanz Ricardo
Autonomous Systems Laboratory, Universidad Politécnica de Madrid, Madrid, Spain.
Centre for Automation and Robotics, Universidad Politécnica de Madrid-CSIC, Madrid, Spain.
Front Robot AI. 2024 Jul 10;11:1377897. doi: 10.3389/frobt.2024.1377897. eCollection 2024.
Autonomous robots are already present in a variety of domains performing complex tasks. Their deployment in open-ended environments offers endless possibilities. However, there are still risks due to unresolved issues in dependability and trust. Knowledge representation and reasoning provide tools for handling explicit information, endowing systems with a deeper understanding of the situations they face. This article explores the use of declarative knowledge for autonomous robots to represent and reason about their environment, their designs, and the complex missions they accomplish. This information can be exploited at runtime by the robots themselves to adapt their structure or re-plan their actions to finish their mission goals, even in the presence of unexpected events. The primary focus of this article is to provide an overview of popular and recent research that uses knowledge-based approaches to increase robot autonomy. Specifically, the ontologies surveyed are related to the selection and arrangement of actions, representing concepts such as autonomy, planning, or behavior. Additionally, they may be related to overcoming contingencies with concepts such as fault or adapt. A systematic exploration is carried out to analyze the use of ontologies in autonomous robots, with the objective of facilitating the development of complex missions. Special attention is dedicated to examining how ontologies are leveraged in real time to ensure the successful completion of missions while aligning with user and owner expectations. The motivation of this analysis is to examine the potential of knowledge-driven approaches as a means to improve flexibility, explainability, and efficacy in autonomous robotic systems.
自主机器人已经出现在各种执行复杂任务的领域中。它们在开放式环境中的部署提供了无限的可能性。然而,由于可靠性和信任方面的未解决问题,仍然存在风险。知识表示和推理提供了处理明确信息的工具,使系统能够更深入地理解它们所面临的情况。本文探讨了使用声明性知识让自主机器人对其环境、设计以及它们完成的复杂任务进行表示和推理。即使在出现意外事件的情况下,机器人本身也可以在运行时利用这些信息来调整其结构或重新规划其行动,以完成任务目标。本文的主要重点是概述使用基于知识的方法来提高机器人自主性的流行和最新研究。具体而言,所调查的本体与行动的选择和安排相关,代表了自主性、规划或行为等概念。此外,它们可能与用故障或适应等概念来克服突发事件有关。为了促进复杂任务的开发,对自主机器人中本体的使用进行了系统的探索。特别关注研究如何实时利用本体来确保任务的成功完成,同时符合用户和所有者的期望。这种分析的动机是研究知识驱动方法作为提高自主机器人系统灵活性、可解释性和有效性的一种手段的潜力。