首页> 外文会议>Computational Intelligence in Robotics and Automation (CIRA), 2009 >A cognitive approach for a robotic welding system that can learn how to weld from acoustic data
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A cognitive approach for a robotic welding system that can learn how to weld from acoustic data

机译:机器人焊接系统的认知方法,可以学习如何从声学数据中进行焊接

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Laser beam welding is the method of choice for the high-quality joining of materials. However, for industrial production these systems have to be set up and calibrated manually with much effort. Our objective is to apply intelligent data processing that results in a cognitive technical system that can learn how to weld, speed up the configuring process, and reduce costs. While monitoring laser welding with cameras and optical sensors has already been demonstrated elsewhere, this paper emphasizes the benefits of monitoring with acoustic sensors and feature extraction. Using acoustic sensors, the cognitive system is more sensitive to strong optical radiation. Several combined methods such as wavelet analysis, fast Fourier transformation, and linear dimensionality reduction are evaluated with sensor data from real experiments. Finally, as machine learning, the results are classified with learned reference data to obtain reliable information for monitoring and possibly using closed-loop control.
机译:激光束焊接是高质量连接材料的一种选择方法。然而,对于工业生产而言,必须费力地手动设置和校准这些系统。我们的目标是应用智能数据处理,形成一个认知技术系统,该系统可以学习如何进行焊接,加快配置过程并降低成本。虽然已经在其他地方演示了使用相机和光学传感器监视激光焊接的情况,但本文强调了使用声传感器监视和特征提取的好处。使用声传感器,认知系统对强光辐射更加敏感。利用真实实验中的传感器数据评估了几种组合方法,例如小波分析,快速傅立叶变换和线性降维。最后,作为机器学习,将结果与学习到的参考数据进行分类,以获得可靠的信息以进行监视,并可能使用闭环控制。

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