Masters Theses

Date of Award

12-2025

Degree Type

Thesis

Degree Name

Master of Science

Major

Mechanical Engineering

Major Professor

Bradley H. Jared

Committee Members

Bradley Jared, Suresh Babu, Sergei Kalinin, Subhadeep Chakraborty

Abstract

A major barrier to commercializing laser-powder bed fusion (L-PBF) additive manufacturing is the lack of reliable, geometry-agnostic, defect detection methods. Most current solutions or systems are expensive and geometry-dependent which makes them unable to generalize across part shapes, materials or systems. This research explores a novel, geometry agnostic, low- cost approach to in-situ monitoring and porosity detection using near-infrared (NIR) imaging and optical imaging for stainless steel 361L material. The NIR and optical modalities were aligned with post build X-ray computed tomography (XCT) data for ground truth labeling. To generate porosity in this experiment, a spatter generator was used to create seeded porosity in printed metal cylinders. These cylinders were then XCT scanned to characterize localized pores. Layer-wise NIR and optical images were captured using low-cost, off-axis sensors. Semantic image segmentation was applied to the XCT data to identify connected pore structures in each layer. Composited XCT layers were then aligned with composite NIR and optical layers. A convolutional neural network (CNN) was trained to classify each NIR layer as containing a major pore or not, using XCT-labeled slices for supervision. To achieve geometry-agnostic inference, a secondary sub-sampling approach was introduced, wherein local image regions were classified independently and aggregated to infer overall layer porosity classification. The approach was trained on cylindrical geometries and validated on a cuboid from a separate build with no spatter generators, to further showcase generalization.

Comments

revised:

- Title page: Revise the graduation month to December. - List of Figures: This must follow the list of tables. - Page 11: The first “1” in the page number “11” is bolded. Remove the bold font from the page number. - Page 65: The page number is bolded. Remove the bold font from the page number.

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