MoDALAS: Model-Driven Assurance for Learning-Enabled Autonomous Systems

Michael Austin Langford, Kenneth H. Chan, Jonathon Emil Fleck, P. McKinley, Betty H. C. Cheng
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引用次数: 6

Abstract

Increasingly, safety-critical systems include artificial intelligence and machine learning components (i.e., Learning-Enabled Components (LECs)). However, when behavior is learned in a training environment that fails to fully capture real-world phenomena, the response of an LEC to untrained phenomena is uncertain, and therefore cannot be assured as safe. Automated methods are needed for self-assessment and adaptation to decide when learned behavior can be trusted. This work introduces a model-driven approach to manage self-adaptation of a Learning-Enabled System (LES) to account for run-time contexts for which the learned behavior of LECs cannot be trusted. The resulting framework enables an LES to monitor and evaluate goal models at run time to determine whether or not LECs can be expected to meet functional objectives. Using this framework enables stakeholders to have more confidence that LECs are used only in contexts comparable to those validated at design time.
MoDALAS:支持学习的自治系统的模型驱动保证
越来越多的安全关键系统包括人工智能和机器学习组件(即支持学习的组件(LECs))。然而,当在训练环境中学习行为时,不能完全捕获现实世界的现象,LEC对未训练现象的响应是不确定的,因此不能保证是安全的。需要自动化的方法来进行自我评估和适应,以决定何时可以信任学习的行为。这项工作引入了一种模型驱动的方法来管理学习支持系统(LES)的自适应,以解释LECs的学习行为不可信的运行时上下文。得到的框架使LES能够在运行时监视和评估目标模型,以确定lec是否能够满足功能目标。使用此框架使涉众能够更加确信LECs仅在与设计时验证的上下文相比较的上下文中使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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