Model Checking a Self-Adaptive Camera Network with Physical Disturbances

Gautham Nayak Seetanadi, Karl-Erik Årzén, M. Maggio
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Abstract

The paper describes the design and verification of a self-adaptive system, composed of multiple smart cameras connected to a monitoring station, that determines the allocation of network bandwidth to the cameras. The design of such a system poses significant challenges, since multiple control strategies are active in the system simultaneously. In fact, the cameras adjust the quality of their streams to the available bandwidth, that is at the same time allocated by the monitoring station. Model checking has proven successful to verify properties of this complex system, when the effect of actions happening in the physical environment was neglected. Extending the verification models to include disturbances from the physical environment is however nontrival due to the state explosion problem. In this paper we show a comparison between the previously developed deterministic model and two alternatives for disturbance handling: a probabilistic and a nondeterministic model. We verify properties for the three models, discovering that the nondeterministic model scales better when the number of cameras increase and is more representative of the dynamic physical environment. We then focus on the nondeterministic model and study, using stochastic games, the behavior of the system when the players (cameras and network manager) collaborate or compete to reach their own objectives.
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具有物理干扰的自适应摄像机网络的模型检验
本文介绍了一个由多个智能摄像机组成的自适应系统的设计和验证,该系统连接到一个监测站,以确定网络带宽分配给摄像机。这种系统的设计带来了巨大的挑战,因为系统中同时存在多种控制策略。实际上,摄像机根据可用带宽调整其流的质量,同时由监测站分配。当忽略物理环境中发生的动作的影响时,模型检查被证明能够成功地验证该复杂系统的特性。然而,由于状态爆炸问题,扩展验证模型以包括来自物理环境的干扰是非常困难的。在本文中,我们展示了先前开发的确定性模型与两种替代的干扰处理:概率模型和非确定性模型之间的比较。我们验证了这三种模型的属性,发现当相机数量增加时,不确定性模型的可伸缩性更好,并且更能代表动态物理环境。然后,我们将重点放在不确定性模型和研究上,使用随机游戏,当玩家(摄像机和网络管理员)协作或竞争以达到自己的目标时系统的行为。
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