Ontology-Driven Robotic Specification Synthesis
AI 摘要
基于本体的机器人系统规范综合方法,用于安全关键应用,支持多机器人系统。
主要贡献
- 提出RSTM2方法,连接高层目标和形式化规范
- 利用随机时间Petri网进行多层级蒙特卡洛仿真
- 使用本体实现可解释AI辅助,促进自主规范综合
方法论
RSTM2方法是一种基于本体的层次化方法,使用随机时间Petri网进行多层级仿真,支持资源分配和性能分析。
原文摘要
This paper addresses robotic system engineering for safety- and mission-critical applications by bridging the gap between high-level objectives and formal, executable specifications. The proposed method, Robotic System Task to Model Transformation Methodology (RSTM2) is an ontology-driven, hierarchical approach using stochastic timed Petri nets with resources, enabling Monte Carlo simulations at mission, system, and subsystem levels. A hypothetical case study demonstrates how the RSTM2 method supports architectural trades, resource allocation, and performance analysis under uncertainty. Ontological concepts further enable explainable AI-based assistants, facilitating fully autonomous specification synthesis. The methodology offers particular benefits to complex multi-robot systems, such as the NASA CADRE mission, representing decentralized, resource-aware, and adaptive autonomous systems of the future.