Timed Partial Order Inference Algorithm

Kandai Watanabe, Bardh Hoxha, D. Prokhorov, Georgios Fainekos, Morteza Lahijanian, Sriram Sankaranarayana, Tomoya Yamaguchi
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Abstract

In this work, we propose the model of timed partial orders (TPOs) for specifying workflow schedules, especially for modeling manufacturing processes. TPOs integrate partial orders over events in a workflow, specifying ``happens-before'' relations, with timing constraints specified using guards and resets on clocks -- an idea borrowed from timed-automata specifications. TPOs naturally allow us to capture event ordering, along with a restricted but useful class of timing relationships. Next, we consider the problem of mining TPO schedules from workflow logs, which include events along with their time stamps. We demonstrate a relationship between formulating TPOs and the graph-coloring problem, and present an algorithm for learning TPOs with correctness guarantees. We demonstrate our approach on synthetic datasets, including two datasets inspired by real-life applications of aircraft turnaround and gameplay videos of the Overcooked computer game. Our TPO mining algorithm can infer TPOs involving hundreds of events from thousands of data-points within a few seconds. We show that the resulting TPOs provide useful insights into the dependencies and timing constraints for workflows.
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定时偏序推理算法
在这项工作中,我们提出了定时部分订单(TPOs)模型,用于指定工作流程计划,特别是用于制造过程建模。tpo将工作流中事件的部分顺序集成在一起,指定“在发生之前”的关系,并使用时钟上的保护和复位来指定时间约束——这是从时间自动机规范中借用的一个想法。tpo自然允许我们捕获事件顺序,以及一类受限但有用的时间关系。接下来,我们考虑从工作流日志中挖掘TPO调度的问题,工作流日志包括事件及其时间戳。我们证明了表述TPOs与图着色问题之间的关系,并提出了一种具有正确性保证的TPOs学习算法。我们在合成数据集上展示了我们的方法,包括两个数据集,灵感来自飞机周转的现实应用和Overcooked电脑游戏的游戏视频。我们的TPO挖掘算法可以在几秒钟内从数千个数据点中推断出涉及数百个事件的TPO。我们展示了最终的tpo为工作流的依赖关系和时间约束提供了有用的见解。
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