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Learning Behaviour Models of Discrete Event Production Systems from Observing Input/Output Signals

机译:从观察输入/输出信号的离散事件生产系统的学习行为模型

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摘要

Learning behavior models out of event traces has been tackled in a wide variety of scientific projects and publications. Usually the resulting models are used for fault detection, reengineering, and analysis. But in practical applications, like monitoring, learned models can show high complexity and permissivity which makes it difficult to use these models and results tend to be ambiguous. Therefore, this paper defines so called Machine State Petri Nets (MSPN) with the aim of being generated out of recorded event traces and exploit additional information of the system to reduce the permissivity. An already existing learning algorithm has been extended by exploiting some facts common for most practical applications. An example shows how these adaptations improve the base algorithm regarding the aforementioned requirements.
机译:在各种科学项目和出版物中,在活动迹线中学习行为模型已经解决。通常,所产生的模型用于故障检测,再造和分析。但在实际应用中,如监控,学习模型可以显示出高度复杂性和权限,这使得很难使用这些模型,结果往往是模糊的。因此,本文定义了所谓的机器状态Petri网(MSPN),目的是从记录的事件迹线中产生,并利用系统的其他信息以减少允许率。已经通过利用大多数实际应用的一些事实来扩展了已经存在的学习算法。一个示例显示了这些适应如何改善关于上述要求的基础算法。

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