Failure Detection of Fused Filament Fabrication via Deep Learning
Abstract
Additive Manufacturing (AM) is used in several fields and its utilization is
growing sharply in almost every aspect of daily life. The focus of the current studies
in the AM field is generally focused on the development of new technologies and
materials. In addition, there is a limited number of research studies on the
troubleshooting aspects of the AM processes. For the most commonly used Fused
Filament Fabrication (FFF) process, the waste of material and time due to the printing
errors are still an unsolved problem. The typical errors such as nozzle jamming and
layer mis-alignment are inevitable during the printing process, and thus cause the
failure of printing. It is a challenging task to clearly understand the physical behavior
of FFF process with uncertainty, due to the phase transition and heterogeneity of the
materials. Therefore, to detect the printing error, this research proposes a deep
learning (DL) based printing failure detection technique. In this study, DL is utilized
to monitor the printing process, and detect its failures. This newly developed DL
framework was beta-tested with a commercially available FFF setup. The beta testing
results showed that this technique could effectively detect printing failures with high
accuracy.