Hybrid Planning Using Learning and Model Checking for Autonomous Systems

Ashutosh Pandey, I. Ruchkin, B. Schmerl, D. Garlan
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引用次数: 7

Abstract

Self-adaptive software systems rely on planning to make adaptation decisions autonomously. Planning is required to produce high-quality adaptation plans in a timely manner; however, quality and timeliness of planning are conflicting in nature. This conflict can be reconciled with hybrid planning, which can combine reactive planning (to quickly provide an emergency response) with deliberative planning that take time but determine a higher-quality plan. While often effective, reactive planning sometimes risks making the situation worse. Hence, a challenge in hybrid planning is to decide whether to invoke reactive planning until the deliberative planning is ready with a high-quality plan. To make this decision, this paper proposes a novel learning-based approach. We demonstrate that this learning-based approach outperforms existing techniques that are based on specifying fixed conditions to invoke reactive planning in two domains: enterprise cloud systems and unmanned aerial vehicles.
基于学习和模型检验的自治系统混合规划
自适应软件系统依靠计划自主做出适应决策。需要进行规划,以便及时制定高质量的适应计划;然而,规划的质量和及时性在本质上是矛盾的。这种冲突可以与混合计划相调和,混合计划可以将反应性计划(快速提供紧急响应)与深思熟虑计划结合起来,这需要时间,但可以确定更高质量的计划。虽然通常是有效的,但反应性计划有时会使情况变得更糟。因此,混合规划中的一个挑战是决定是否调用反应性规划,直到审慎规划准备好一个高质量的计划。为了做出这样的决定,本文提出了一种新的基于学习的方法。我们证明,这种基于学习的方法优于现有的技术,这些技术基于指定固定条件来调用两个领域的反应性规划:企业云系统和无人驾驶飞行器。
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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