Department of Engineering, University of Cambridge, Trumpington Street, Cambridge, CB2 1PZ, UK.
Nat Commun. 2022 Aug 15;13(1):4654. doi: 10.1038/s41467-022-31985-y.
Material extrusion is the most widespread additive manufacturing method but its application in end-use products is limited by vulnerability to errors. Humans can detect errors but cannot provide continuous monitoring or real-time correction. Existing automated approaches are not generalisable across different parts, materials, and printing systems. We train a multi-head neural network using images automatically labelled by deviation from optimal printing parameters. The automation of data acquisition and labelling allows the generation of a large and varied extrusion 3D printing dataset, containing 1.2 million images from 192 different parts labelled with printing parameters. The thus trained neural network, alongside a control loop, enables real-time detection and rapid correction of diverse errors that is effective across many different 2D and 3D geometries, materials, printers, toolpaths, and even extrusion methods. We additionally create visualisations of the network's predictions to shed light on how it makes decisions.
挤出成型是应用最为广泛的增材制造方法,但由于易出错,其在终端产品中的应用受到限制。人类可以检测到错误,但无法提供持续监控或实时修正。现有的自动化方法无法跨不同部件、材料和打印系统进行推广。我们使用偏离最佳打印参数的图像对多头神经网络进行训练。通过自动化的数据采集和标注,生成了一个庞大而多样的挤出式 3D 打印数据集,其中包含 192 个不同部件的 120 万张图像,这些图像都标注了打印参数。经过训练的神经网络与控制回路相结合,可以实时检测和快速纠正各种错误,这种方法在许多不同的 2D 和 3D 几何形状、材料、打印机、刀具路径,甚至挤出方法中都非常有效。我们还创建了网络预测的可视化效果,以了解其决策过程。