Adapting Workflows to Intelligent Environments

M. Hartmann, Marcus Ständer, V. Uren
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引用次数: 9

Abstract

Intelligent environments aim at supporting the user in executing her everyday tasks, e.g. by guiding her through a maintenance or cooking procedure. This requires a machine processable representation of the tasks for which workflows have proven an efficient means. The increasing number of available sensors in intelligent environments can facilitate the execution of workflows. The sensors can help to recognize when a user has finished a step in the workflow and thus to automatically proceed to the next step. This can heavily reduce the amount of required user interaction. However, manually specifying the conditions for triggering the next step in a workflow is very cumbersome and almost impossible for environments which are not known at design time. In this paper, we present a novel approach for learning and adapting these conditions from observation. We show that the learned conditions can even outperform the quality as conditions manually specified by workflow experts. Thus, the presented approach is very well suited for automatically adapting workflows in intelligent environments and can in that way increase the efficiency of the workflow execution.
使工作流适应智能环境
智能环境旨在支持用户执行日常任务,例如通过指导用户完成维护或烹饪过程。这需要一个机器可处理的任务表示,工作流已被证明是一种有效的手段。智能环境中可用传感器数量的增加可以促进工作流的执行。传感器可以帮助识别用户何时完成了工作流程中的一个步骤,从而自动进行下一步。这可以大大减少所需的用户交互量。然而,手动指定触发工作流下一步的条件是非常麻烦的,而且对于设计时不知道的环境几乎是不可能的。在本文中,我们提出了一种从观察中学习和适应这些条件的新方法。我们表明,学习条件甚至可以优于由工作流专家手动指定的质量条件。因此,所提出的方法非常适合在智能环境中自动调整工作流,并且可以通过这种方式提高工作流执行的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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