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Deep Learning-Based Intelligent Process Monitoring of Directed Energy Deposition in Additive Manufacturing with Thermal Images

机译:基于深度学习的智能过程监测热图像添加剂制造中的定向能量沉积

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Additive manufacturing (AM) techniques have been successfully developed in the past years with the great potential of overcoming the existing obstacles in traditional manufacturing. In order to improve the quality of the manufactured parts and reduce costs, it is important to timely and accurately monitor the AM process during manufacturing. However, it remains a challenging task due to the high complexity of the AM process and the difficulty in processing the condition monitoring data. This paper proposes a deep learning-based process monitoring method for directed energy deposition in AM. The thermal images collected during manufacturing are used to identify the process condition, and a deep convolutional neural network model is proposed to build an end-to-end condition monitoring framework. Experiments on a real directed energy deposition dataset in AM are carried out for validation. The results suggest the proposed method offers a promising approach in process monitoring based on the industrial images. Furthermore, little prior knowledge on signal processing and AM is required, that largely facilitates the potential applications in the real industrial scenarios.
机译:添加剂制造(AM)技术在过去几年中成功地发展,克服了传统制造业的现有障碍的巨大潜力。为了提高制造部件的质量并降低成本,重要的是在制造过程中及时准确地监控AM过程。然而,由于AM过程的高复杂性以及处理条件监测数据的困难,它仍然是一个具有挑战性的任务。本文提出了一种基于深度学习的过程监测方法,用于在AM中定向能量沉积。在制造期间收集的热图像用于识别过程条件,并且提出了深度卷积神经网络模型来构建端到端状态监测框架。在AM中实际定向的能量沉积数据集进行实验进行验证。结果表明,该方法提供了基于工业图像的过程监控的有希望的方法。此外,需要对信号处理和AM的初步了解,这在很大程度上促进了实际工业场景中的潜在应用。

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