Weakly hard real-time systems can, to some degree, tolerate deadline misses, but their schedulability still needs to be analyzed to ensure their quality of service. Such analysis usually occurs at early design stages to provide implementation guidelines to engineers so that they can make better design decisions. Estimating worst-case execution times (WCET) is a key input to schedulability analysis. However, early on during system design, estimating WCET values is challenging and engineers usually determine them as plausible ranges based on their domain knowledge. Our approach aims at finding restricted, safe WCET sub-ranges given a set of ranges initially estimated by experts in the context of weakly hard real-time systems. To this end, we leverage (1) multi-objective search aiming at maximizing the violation of weakly hard constraints in order to find worst-case scheduling scenarios and (2) polynomial logistic regression to infer safe WCET ranges with a probabilistic guarantee. We evaluated our approach by applying it to an industrial system in the satellite domain and several realistic synthetic systems. The results indicate that our approach significantly outperforms a baseline relying on random search without learning, and estimates safe WCET ranges with a high degree of confidence in practical time (< 23h).
翻译:估计最坏的个案执行时间(WCET)是进行时间表分析的关键投入。然而,在系统设计初期,估计WCET值具有挑战性,工程师通常根据自己的领域知识确定这些值为貌似合理的范围。我们的方法是寻找有限的、安全的WCET子范围,给专家在薄弱的实时系统中初步估计的一组范围。结果显示,我们的方法明显地超越了依靠随机搜索的基线,没有进行高信任度的23度实际搜索。