We present a safety verification framework for design-time and run-time assurance of learning-based components in aviation systems. Our proposed framework integrates two novel methodologies. From the design-time assurance perspective, we propose offline mixed-fidelity verification tools that incorporate knowledge from different levels of granularity in simulated environments. From the run-time assurance perspective, we propose reachability- and statistics-based online monitoring and safety guards for a learning-based decision-making model to complement the offline verification methods. This framework is designed to be loosely coupled among modules, allowing the individual modules to be developed using independent methodologies and techniques, under varying circumstances and with different tool access. The proposed framework offers feasible solutions for meeting system safety requirements at different stages throughout the system development and deployment cycle, enabling the continuous learning and assessment of the system product.
翻译:我们为航空系统中学习基础组成部分的设计和运行时间保障提供了一个安全核查框架。我们提议的框架结合了两种新颖的方法。从设计-时间保障的角度来看,我们提议了包含模拟环境中不同颗粒水平知识的离线混合纤维化核查工具。从运行-时间保障的角度来看,我们提议为基于学习的决策模式提供基于可访问性和统计数据的在线监测和安全警卫,以补充离线核查方法。这个框架的设计是各模块之间松散地结合,允许在各种情况下使用独立的方法和技术开发单个模块,使用不同的工具获取。拟议框架为在系统开发和部署周期的不同阶段满足系统安全要求提供了可行的解决方案,从而能够对系统产品进行持续学习和评估。