ActivFORMS: active formal models for self-adaptation

M. U. Iftikhar, Danny Weyns
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引用次数: 158

Abstract

Self-adaptation enables a software system to deal autonomously with uncertainties, such as dynamic operating conditions that are difficult to predict or changing goals. A common approach to realize self-adaptation is with a MAPE-K feedback loop that consists of four adaptation components: Monitor, Analyze, Plan, and Execute. These components share Knowledge models of the managed system, its goals and environment. To provide guarantees of the adaptation goals, state of the art approaches propose using formal models of the knowledge. However, less attention is given to the formalization of the adaptation components themselves, which is important to provide guarantees of correctness of the adaptation behavior (e.g., does the execute component execute the plan correctly?). We propose Active FORmal Models for Self-adaptation (ActivFORMS) that uses an integrated formal model of the adaptation components and knowledge models. The formal model is directly executed by a virtual machine to realize adaptation, hence active model. The contributions of ActivFORMS are: (1) the approach assures that the adaptation goals that are verified offline are guaranteed at runtime, and (2) it supports dynamic adaptation of the active model to support changing goals. We show how we have applied ActivFORMS for a small-scale robotic system.
ActivFORMS:用于自适应的主动形式模型
自适应使软件系统能够自主地处理不确定性,例如难以预测的动态操作条件或不断变化的目标。实现自适应的一种常见方法是使用MAPE-K反馈回路,该回路由四个适应组件组成:监视、分析、计划和执行。这些组件共享被管理系统、其目标和环境的知识模型。为了保证适应目标的实现,目前最先进的方法建议使用知识的正式模型。然而,很少关注适应组件本身的形式化,这对于提供适应行为正确性的保证很重要(例如,执行组件是否正确地执行了计划?)我们提出了一种主动形式自适应模型(ActivFORMS),它使用了一种整合了适应成分和知识模型的形式模型。形式模型由虚拟机直接执行,实现自适应,因此是主动模型。ActivFORMS的贡献是:(1)该方法确保离线验证的适应目标在运行时得到保证,(2)它支持活动模型的动态适应以支持不断变化的目标。我们展示了如何将ActivFORMS应用于小型机器人系统。
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