迈向物联网驱动的预测性业务流程分析

Erfan Elhami, Abolfazl Ansari, Bahareh J. Farahani, F. S. Aliee
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引用次数: 1

摘要

预测性业务流程监控涉及预测与流程相关的关键性能指标(kpi),并实时预测流程的未来行为。尽管研究人员为这一研究领域贡献了大量的工作,但现有解决方案的性能并不适合实际设置。实际上,这些方法通常是上下文无关的,缺乏通用性。然而,在现实生活用例中,业务流程并没有与周围的工作环境隔离开来,因此它们受到许多上下文事件的影响,例如物联网设备产生的事件。据我们所知,目前还没有综合性的研究解决上下文事件与过程预测的整合问题。本文提出了一种通过结合物联网数据进行预测过程监控的整体上下文感知方法。此外,我们还提出了一种使用业务流程管理系统(BPMS)功能在运行时流程中集成上下文事件的系统方法。我们还引入了一个基于深度神经网络(DNN)的预测模型来预测下一个活动。最后,我们使用航空业的一个案例研究来评估我们的解决方案。
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Towards IoT-Driven Predictive Business Process Analytics
Predictive business process monitoring is concerned with predicting the process-related Key Performance Indicators (KPIs) and forecasting the future behavior of the process in realtime. Despite the amount of work contributed by researches to this field of research, the performance of existing solutions is not desirable for practical settings. Indeed, these approaches are typically context-unaware and lack generality. However, in real-life use cases, business processes are not isolated from the surrounding working environment, and thus they are influenced by many contextual events, such as events generated by IoT devices. To the best of our knowledge, there is no comprehensive study addressing the integration of contextual events with the process prediction. This paper proposes a holistic context-aware methodology for predictive process monitoring by incorporating IoT data. Moreover, we present a systematic method to integrate the contextual events in the runtime process using Business Process Management System} (BPMS) capabilities. We also introduce a predictive model based on Deep Neural Networks (DNN) to forecast the next activity. Finally, we evaluate our solution using a case study in the aviation industry.
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