一种基于agent的突发行为分析过程挖掘体系结构

R. Bemthuis, M. Koot, M. Mes, F. Bukhsh, M. Iacob, N. Meratnia
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引用次数: 15

摘要

每当一个操作被执行时,信息系统都会留下一个可追踪的数字足迹。业务流程建模人员捕获这些数字跟踪,以了解系统的行为,并提取这些业务流程的实际运行时模型。尽管这种跟踪无处不在,但大多数组织都面临过程规范和实际运行时行为之间的实质性差异。然而,由于模型固有的复杂性,分析和实现为业务流程建模的系统的结果往往是困难的。此外,以低级别实时事件的形式(记录在事件日志中)所观察到的现实情况很少仅由高级别流程模型来解释。在本文中,我们提出了一种将过程挖掘与多智能体系统相结合的体系结构来建模系统范围的行为。事件日志形式的数字跟踪用于迭代挖掘流程模型,代理可以从中学习。该方法首先应用于一个简化作业车间工厂的案例研究,其中自动导引车(agv)执行运输任务。数值实验表明,过程挖掘模型的工作流可以增强基于智能体的系统,特别是在瓶颈分析和改进决策方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Agent-Based Process Mining Architecture for Emergent Behavior Analysis
Information systems leave a traceable digital footprint whenever an action is executed. Business process modelers capture these digital traces to understand the behavior of a system, and to extract actual run-time models of those business processes. Despite the omnipresence of such traces, most organizations face substantial differences between the process specifications and the actual run-time behavior. Analyzing and implementing the results of systems that model business processes tend, however, to be difficult due to the inherent complexity of the models. Moreover, the observed reality in the form of lower-level real-time events, as recorded in event logs, is seldom solely explainable by higher-level process models. In this paper, we propose an architecture to model system-wide behavior by combining process mining with a multi-agent system. Digital traces, in the form of event logs, are used to iteratively mine process models from which agents can learn. The approach is initially applied to a case study of a simplified job-shop factory in which automated guided vehicles (AGVs) carry out transportation tasks. Numerical experiments show that the workflow of a process mining model can be used to enhance the agent-based system, particularly, in analyzing bottlenecks and improving decision-making.
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