Knowledge Graph Fusion with Large Language Models for Accurate, Explainable Manufacturing Process Planning
Journal:
arXiv
Published Date:
Jun 16, 2025
Abstract
Precision process planning in Computer Numerical Control (CNC) machining
demands rapid, context-aware decisions on tool selection, feed-speed pairs, and
multi-axis routing, placing immense cognitive and procedural burdens on
engineers from design specification through final part inspection. Conventional
rule-based computer-aided process planning and knowledge-engineering shells
freeze domain know-how into static tables, which become limited when dealing
with unseen topologies, novel material states, shifting
cost-quality-sustainability weightings, or shop-floor constraints such as tool
unavailability and energy caps. Large language models (LLMs) promise flexible,
instruction-driven reasoning for tasks but they routinely hallucinate numeric
values and provide no provenance. We present Augmented Retrieval Knowledge
Network Enhanced Search & Synthesis (ARKNESS), the end-to-end framework that
fuses zero-shot Knowledge Graph (KG) construction with retrieval-augmented
generation to deliver verifiable, numerically exact answers for CNC process
planning. ARKNESS (1) automatically distills heterogeneous machining documents,
G-code annotations, and vendor datasheets into augmented triple,
multi-relational graphs without manual labeling, and (2) couples any on-prem
LLM with a retriever that injects the minimal, evidence-linked subgraph needed
to answer a query. Benchmarked on 155 industry-curated questions spanning tool
sizing and feed-speed optimization, a lightweight 3B-parameter Llama-3
augmented by ARKNESS matches GPT-4o accuracy while achieving a +25 percentage
point gain in multiple-choice accuracy, +22.4 pp in F1, and 8.1x ROUGE-L on
open-ended responses.