A hybrid deep learning model of process-build interactions in additive manufacturing

06/17/2022
by   Reza Mojahed Yazdi, et al.
0

Laser powder bed fusion (LPBF) is a technique of additive manufacturing (AM) that is often used to construct a metal object layer-by-layer. The quality of AM builds depends to a great extent on the minimization of different defects such as porosity and cracks that could occur by process deviation during machine operation. Therefore, there is a need to develop new analytical methods and tools to equip the LPBF process with the inspection frameworks that assess the process condition and monitor the porosity defect in real-time. Advanced sensing is recently integrated with the AM machines to cope with process complexity and improve information visibility. This opportunity lays the foundation for online monitoring and assessment of the in-process build layer. This study presents the hybrid deep neural network structure with two types of input data to monitor the process parameters that result in porosity defect in cylinders’ layers. Results demonstrate that statistical features extracted by wavelet transform and texture analysis along with original powder bed images, assist the model in reaching a robust performance. In order to illustrate the fidelity of the proposed model, the capability of the main pipeline is examined and compared with different machine learning models. Eventually, the proposed framework identified the process conditions with an F-score of 97.14%. This salient flaw detection ability is conducive to repair the defect in real-time and assure the quality of the final part before the completion of the process.

READ FULL TEXT

page 4

page 6

page 8

page 10

research
03/21/2021

Machine learning based in situ quality estimation by molten pool condition-quality relations modeling using experimental data

The advancement of machine learning promises the ability to accelerate t...
research
12/07/2016

Process Monitoring of Extrusion Based 3D Printing via Laser Scanning

Extrusion based 3D Printing (E3DP) is an Additive Manufacturing (AM) tec...
research
03/22/2021

Comprehensive process-molten pool relations modeling using CNN for wire-feed laser additive manufacturing

Wire-feed laser additive manufacturing (WLAM) is gaining wide interest d...
research
08/16/2018

Tool Breakage Detection using Deep Learning

In manufacture, steel and other metals are mainly cut and shaped during ...
research
02/24/2019

Statistical Method to Model the Quality Inconsistencies of the Welding Process

Resistance Spot Welding (RSW) is an important manufacturing process that...
research
05/06/2017

Metacognitive Learning Approach for Online Tool Condition Monitoring

As manufacturing processes become increasingly automated, so should tool...
research
06/12/2020

An Evolutional Algorithm for Automatic 2D Layer Segmentation in Laser-aided Additive Manufacturing

Toolpath planning is an important task in laser aided additive manufactu...

Please sign up or login with your details

Forgot password? Click here to reset