On the relationship between finite state machine and causal network representations for discrete event system modeling: initial results

G. Provan, Yi-Liang Chen
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引用次数: 0

Abstract

Shows the relationship between two discrete event system representations, finite state machines and causal networks. Finite state machine models have been used extensively for the supervisory control of logical (and timed, with some extension) discrete event systems. On the other hand, causal networks have been applied mainly to the diagnosis of discrete event systems. Advances in finite-state-machine based diagnosis and causal-network-based control have prompted an interest in understanding the relationship between these two representations. We describe initial findings concerning the mappings between these two representations for modeling synchronous system components, and discuss the implications of their relationships. We demonstrate the relationship using an example of a factory conveyor system.
离散事件系统建模中有限状态机与因果网络表示的关系:初步结果
展示了两个离散事件系统表示、有限状态机和因果网络之间的关系。有限状态机模型已广泛用于逻辑(和时间,有一些扩展)离散事件系统的监督控制。另一方面,因果网络主要应用于离散事件系统的诊断。基于有限状态机的诊断和基于因果网络的控制的进展促使人们对理解这两种表示之间的关系产生了兴趣。我们描述了关于同步系统组件建模的这两种表示之间的映射的初步发现,并讨论了它们之间关系的含义。我们用一个工厂输送系统的例子来说明这种关系。
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