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.

Abstract

Laser Powder Bed Fusion (LPBF) is highly sensitive to process parameters, which influence defect formation through complex thermal and fluid mechanisms. However, defect-related knowledge is dispersed across the literature, limiting systematic understanding. This study presents a graph-assisted retrieval framework for defect reasoning in LPBF, using Ti6Al4V as a case study. Scientific publications are transformed into a structured representation, and relationships between parameters, mechanisms, and defects are encoded into an evidence-linked knowledge graph. The framework integrates semantic and graph-based retrieval, supported by a lightweight agent-based reasoning layer to construct interpretable defect pathways. Evaluation shows high retrieval accuracy (0.9667) and recall (0.9667), demonstrating effective identification of relevant defect related evidence. The framework enables transparent reasoning chains linking process parameters to defects. This work provides a scalable approach for converting unstructured literature into a query able and interpretable knowledge resource for additive manufacturing.