Workflow instance detection: Toward a knowledge capture methodology for smart oilfields

Fan Sun, V. Prasanna, A. Bakshi, L. Pianelo
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引用次数: 7

Abstract

A system that captures knowledge from experienced users is of great interest in the oil industry. An important source of knowledge is application logs that record user activities. However, most of the log files are sequential records of pre-defined low level actions. It is often inconvenient or even impossible for humans to view and obtain useful information from these log entries. Also, the heterogeneity of log data in terms of syntax and granularity makes it challenging to extract the underlying knowledge from log files. In this paper, we propose a semantically rich workflow model to capture the semantics of user activities in a hierarchical structure. The mapping from low level log entries to semantic level workflow components enables automatic aggregation of log entries and their high level representation. We model and analyze two cases from the petroleum engineering domain in detail. We also present an algorithm that detects workflow instances from log files. Experimental results show that the detection algorithm is efficient and scalable.
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工作流实例检测:面向智能油田的知识捕获方法
从经验丰富的用户那里获取知识的系统是石油行业非常感兴趣的。一个重要的知识来源是记录用户活动的应用程序日志。但是,大多数日志文件都是预定义的低级操作的顺序记录。人们通常不方便甚至不可能从这些日志条目中查看和获取有用的信息。此外,日志数据在语法和粒度方面的异质性使得从日志文件中提取底层知识具有挑战性。在本文中,我们提出了一个语义丰富的工作流模型来捕获层次结构中的用户活动的语义。从低级日志条目到语义级工作流组件的映射支持日志条目及其高级表示的自动聚合。我们对石油工程领域的两个案例进行了详细的建模和分析。我们还提出了一种从日志文件中检测工作流实例的算法。实验结果表明,该算法具有较高的检测效率和可扩展性。
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