Board-to-Board connector mating using data-driven approach

Hsien-I Lin, A. Singh
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Abstract

Force measurement and control for the automatic process are crucial in automation, especially in the insertion (mating) task. This fragile task is needs to be automated for safety and economical purposes. One small mistake and misjudgement by operators could damage the fragile component, and also cause the company material loss. In this paper, the mating process is implemented by an articulated robot with a force sensor mounted on it. We propose a data-driven approach for the procedure to automate the mating process of the slimstack Board-to-Board (BtB) insertion process. The force data is recorded and encoded to a recurrence 2D plot. Then the 2D image is used to predict the position and alignment of the male and female Board-toBoard connector. By using the encoding approach, the system can classify each corresponding force based on its status of BtB insertion and provide a safety procedure in the insertion process. The proposed model is compared with the efficient time series LSTM model.
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板对板连接器配合使用数据驱动的方法
自动化过程的力测量和控制是自动化的关键,特别是在插(配)插任务中。出于安全和经济的考虑,这项脆弱的任务需要自动化。操作人员的一个小失误和误判就可能损坏易碎的部件,也会给公司造成物质损失。在本文中,通过安装力传感器的铰接机器人来实现配合过程。我们提出了一种数据驱动的方法,用于实现纤薄板对板(BtB)插入过程的自动化匹配过程。力数据被记录并编码为递归二维图。然后使用二维图像来预测公、母板对板连接器的位置和对齐。通过编码方法,系统可以根据BtB插入状态对每个相应的力进行分类,并在插入过程中提供安全程序。将该模型与高效时间序列LSTM模型进行了比较。
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