Analyzing Resilience Properties of Different Topologies of Collective Adaptive Systems

Thomas J. Glazier, J. Cámara, B. Schmerl, D. Garlan
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引用次数: 10

Abstract

Modern software systems are often compositions of entities that increasingly use self-adaptive capabilities to improve their behavior to achieve systemic quality goals. Self adaptive managers for each component system attempt to provide locally optimal results, but if they cooperated and potentially coordinated their efforts it might be possible to obtain more globally optimal results. The emergent properties that result from such composition and cooperation of self-adaptive systems are not well understood, difficult to reason about, and present a key challenge in the evolution of modern software systems. For example, the effects of coordination patterns and protocols on emergent properties, such as the resiliency of the collectives, need to be understood when designing these systems. In this paper we propose that probabilistic model checking of stochastic multiplayer games (SMG) provides a promising approach to analyze, understand, and reason about emergent properties in collectives of adaptive systems (CAS). Probabilistic Model Checking of SMGs is a technique particularly suited to analyzing emergent properties in CAS since SMG models capture: (i) the uncertainty and variability intrinsic to a CAS and its execution environment in the form of probabilistic and nondeterministic choices, and (ii) the competitive/cooperative aspects of the interplay among the constituent systems of the CAS. Analysis of SMGs allows us to reason about things like the worst case scenarios, which constitutes a new contribution to understanding emergent properties in CAS. We investigate the use of SMGs to show how they can be useful in analyzing the impact of communication topology for collections of fully cooperative systems defending against an external attack.
集体适应系统不同拓扑结构的弹性特性分析
现代软件系统通常是实体的组合,这些实体越来越多地使用自适应能力来改进它们的行为,以实现系统的质量目标。每个组件系统的自适应管理器试图提供局部最优结果,但是如果它们相互合作并潜在地协调它们的努力,就有可能获得更多的全局最优结果。由于这种自适应系统的组合和合作而产生的涌现特性没有得到很好的理解,难以推理,并且在现代软件系统的进化中提出了一个关键挑战。例如,在设计这些系统时,需要理解协调模式和协议对紧急属性(如集体的弹性)的影响。在本文中,我们提出随机多人博弈(SMG)的概率模型检查为分析、理解和推理自适应系统(CAS)集体中的紧急属性提供了一种很有前途的方法。SMG的概率模型检查是一种特别适合分析CAS中的紧急属性的技术,因为SMG模型捕获:(i) CAS及其执行环境以概率和非确定性选择的形式固有的不确定性和可变性,以及(ii) CAS组成系统之间相互作用的竞争/合作方面。对smg的分析使我们能够对最坏的情况进行推理,这对理解CAS中的紧急属性做出了新的贡献。我们研究了smg的使用,以展示它们如何在分析通信拓扑对防御外部攻击的完全合作系统集合的影响方面发挥作用。
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