Towards Agentic Defect Reasoning: A Graph-Assisted Retrieval Framework for Laser Powder Bed Fusion
arXiv cs.LG / 4/7/2026
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Key Points
- The paper proposes a graph-assisted retrieval framework to improve systematic “defect reasoning” in Laser Powder Bed Fusion (LPBF), where process parameters drive complex thermal/fluid defect mechanisms.
- It converts scattered scientific literature into a structured representation and encodes relationships among parameters, mechanisms, and defects into an evidence-linked knowledge graph.
- A combined semantic + graph retrieval approach is augmented with a lightweight agent-based reasoning layer to generate interpretable defect pathways.
- Using Ti6Al4V as a case study, the method reports high retrieval accuracy and recall (both 0.9667), indicating strong ability to find relevant defect evidence.
- The resulting approach is positioned as a scalable way to transform unstructured manufacturing literature into a queryable, transparent, and explainable knowledge resource for additive manufacturing defect analysis.
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