The autonomous systems need to decide how to react to the changes at runtime efficiently. The ability to rigorously analyze the environment and the system together is theoretically possible by the model-driven approaches; however, the model size and timing limitations are two significant obstacles against such an autonomous decision-making process. To tackle this issue, the incremental approximation technique can be used to partition the model and only verify a partition if it is affected by the change. This paper proposes a policy-based analysis approach that finds the best partitioning policy among a set of available policies based on two proposed metrics, namely Balancing and Variation. The metrics quantitatively evaluate the generated components from the incremental approximation scheme according to their size and frequency. We investigate the validity of the approach both theoretically and experimentally via a case study on energy harvesting systems. The results confirm the effectiveness of the proposed approach.
翻译:自主系统需要决定如何在运行时对变化作出有效反应。严格分析环境和系统的能力在理论上是通过模式驱动的方法在理论上是可能的;然而,模型大小和时间限制是妨碍这种自主决策进程的两个重大障碍。为解决这一问题,增量近似技术可以用来分割模型,只有在受变化影响时才能核查分割。本文件提议了一种基于政策的分析方法,在基于两种拟议衡量标准,即平衡和波动的一套现有政策中找到最佳的分割政策。衡量标准根据增量近似计划所产生的组成部分的规模和频率进行定量评估。我们通过能源收获系统案例研究,从理论上和实验角度调查该方法的有效性。结果证实了拟议方法的有效性。