利用进料器振动检测FDM中的干扰和断丝

Sean P. Rooney, Emil Pitz, K. Pochiraju
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引用次数: 1

摘要

在增材制造(AM)领域,由于用户错误、设计不良或无法随时准备的环境因素,中途打印失败非常常见。这适用于大多数(如果不是所有类型的话)AM,但也许没有比流行的长丝沉积建模(FDM)方法机器更重要的。在没有全部电源故障的情况下,FDM中大部分常见的故障模式可以表示为对机械系统有直接影响,无论是由于翘曲引起的头部碰撞,步进器试图推动卡住的灯丝时压力增加,等等。与传统制造方法相比,FDM机器的开环特性对FDM打印机的高故障率没有任何帮助。本文提出了一种预测FDM 3D打印机机械故障的方法。所提出的方法旨在通过表征组成FDM机器的步进电机的振动来关闭FDM机器上的环路。使用声发射,训练分类器,以便根据已知故障模式的监督学习来评估打印状态。所得到的模型能够成功地预测打印过程中的干扰或空气打印,训练精度为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Jamming and Filament Breakage in FDM Using Vibration of Feeder Stepper
In the field of additive manufacturing (AM), mid-print failure is exceedingly common due to user error, bad design, or environmental factors that cannot be readily prepared for. This holds for most if not all types of AM, but perhaps none more so than the popular Filament Deposition Modeling (FDM) method machines. Absent total power failure, the bulk of the common modes of failure in FDM can be expressed as having an immediate impact on the mechanical system, whether that be a head collision due to warping, increased pressure on the stepper as it tries to push jammed filament, etc. The open loop nature of FDM machines does nothing to help the high rate of failure that FDM printers are known for compared to traditional methods of manufacturing. In this paper, a method for predicting failure due to mechanical malfunction of an FDM 3D printer is presented. The method proposed seeks to close the loop on FDM machines by characterizing the vibrations of the stepper motors which comprise an FDM machine. Using the acoustic emissions, a classifier is trained in order to assess the state of a print based off of supervised learning of known modes of failure. The resulting model is able to successfully predict jamming or air printing during a print with 90% training accuracy.
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