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Activity recognition in manual manufacturing: Detecting screwing processes from sensor data

机译:手动制造中的活动识别:检测传感器数据的螺纹工艺

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摘要

Knowledge about the duration of manufacturing processes and operation times is essential for production planning and control. But data acquisition is often difficult and especially challenging if production requires manual activities. This paper presents different data analysis and machine learning approaches to detect manual manufacturing processes from sensor data. As human activity recognition approaches are not necessarily applicable in industrial environments, all sensors are attached to tools, in this case screwdrivers. A dataset covering different tool movements, sensor types and mounting options is created and analyzed. The results are evaluated in terms of feasibility of the approach.
机译:了解制造过程的持续时间和操作时间对于生产计划和控制至关重要。但如果生产需要手动活动,数据采集通常难以困难,尤其具有挑战性。本文介绍了不同的数据分析和机器学习方法,以检测传感器数据的手动制造过程。由于人类活动识别方法不一定适用于工业环境,所有传感器都连接到工具,在这种情况下,螺丝刀。创建和分析了涵盖不同刀具移动,传感器类型和安装选项的数据集。结果在方法的可行性方面进行评估。

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