MES具体数据分析。巴克斯特机器人的案例研究

D. Mitrea, L. Tamás
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摘要

在本研究中,我们旨在通过数据挖掘方法来改进Baxter机器人[1]的功能。我们的案例研究属于机器人领域,集成在制造执行系统(MES)和产品生命周期管理(PLM)的上下文中。实验数据包括机器人在活动过程中记录的参数,如左臂或右臂的运动,并参考碰撞事件。首先介绍了数据挖掘方法的最新进展,然后通过介绍所接近的数据挖掘技术详细介绍了我们的解决方案。详细介绍了所采用的方法,然后给出了实验结果并进行了讨论。最后,根据我们先前陈述的目标,提出了结论和进一步发展的可能性,突出了所采用的数据挖掘方法的实用性。我们的模型验证的准确率达到98%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MES Specific Data Analysis. Case Study with the Baxter Robot
In this research paper we aim to improve the functions of the Baxter robot [1] through data mining methods. Our case study belongs to the robotics domain, integrated in the context of Manufacturing Execution Systems (MES) and Product Lifecycle Management (PLM). The experimental data includes the parameters registered during the activities of the robot, such as the movement of the left or right arm and refers to collision events. The state of the art concerning the data mining methods is described, then our solution is detailed by presenting the approached data mining techniques. The adopted methods are detailed and then the experimental results are presented and discussed. Finally, the conclusions and further development possibilities are formulated, highlighting the utility of the adopted data mining methods, based on our previously stated objectives. An accuracy above 98% was achieved concerning the validation of our model.
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