Monitoring of hybrid systems attracts both scientific and practical attention. However, monitoring algorithms suffer from the methodological difficulty of only observing sampled discrete-time signals, while real behaviors are continuous-time signals. To mitigate this problem of sampling uncertainties, we introduce a model-bounded monitoring scheme, where we use prior knowledge about the target system to prune interpolation candidates. Technically, we express such prior knowledge by linear hybrid automata (LHAs) - the LHAs are called bounding models. We introduce a novel notion of monitored language of LHAs, and we reduce the monitoring problem to the membership problem of the monitored language. We present two partial algorithms - one is via reduction to reachability in LHAs and the other is a direct one using polyhedra - and show that these methods, and thus the proposed model-bounded monitoring scheme, are efficient and practically relevant.
翻译:然而,监测算法在方法上有困难,只观察抽样的离散时间信号,而实际行为则是连续时间信号。为了减轻抽样不确定性的问题,我们引入了一种模型化监测计划,我们利用以前对目标系统的知识来缩小内插对象。从技术上讲,我们表达线性混合自动数据(LHAs)的这种先前知识,LHAs被称为约束模式。我们引入了一种新颖的LHAs监测语言概念,并将监测问题降低到受监测语言的会籍问题。我们提出了两种部分算法,一种是减少LHAs的可达性,另一种是直接使用聚赫德拉的,并表明这些方法以及拟议的模型化监测计划是有效和切实相关的。