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Published:2026/1/8 10:38:03

最強ギャルAIが解説!AMの未来を切り開く、方程式ベースの予測フレームワーク☆

超要約: LLMと知識グラフを合体!AM(加法製造)の予測を爆上げするフレームワーク、爆誕💖

✨ ギャル的キラキラポイント ✨ ● AM(3Dプリンターみたいなやつ)のプロセスの謎を解き明かす、革命的な研究なの!✨ ● LLM(AI)と知識グラフ(専門知識のデータベース)を合体させて、予測の精度を上げちゃう!天才!💡 ● 信頼性スコアで予測の信頼度を可視化!「これ、マジで使える!」って自信を持てる💖

詳細解説いくよ~!

背景 3DプリンターみたいなAM、めっちゃ色んな分野で使われてるけど、プロセスが複雑で、どうすれば良い結果が出るのか分かんなかったりするじゃん?😥 試行錯誤(トライアンドエラー)には時間もお金もかかるし…💦

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Mathematical Knowledge Graph-Driven Framework for Equation-Based Predictive and Reliable Additive Manufacturing

Yeongbin Cha / Namjung Kim

Additive manufacturing (AM) relies critically on understanding and extrapolating process-property relationships; however, existing data-driven approaches remain limited by fragmented knowledge representations and unreliable extrapolation under sparse data conditions. In this study, we propose an ontology-guided, equation-centric framework that tightly integrates large language models (LLMs) with an additive manufacturing mathematical knowledge graph (AM-MKG) to enable reliable knowledge extraction and principled extrapolative modeling. By explicitly encoding equations, variables, assumptions, and their semantic relationships within a formal ontology, unstructured literature is transformed into machine-interpretable representations that support structured querying and reasoning. LLM-based equation generation is further conditioned on MKG-derived subgraphs, enforcing physically meaningful functional forms and mitigating non-physical or unstable extrapolation trends. To assess reliability beyond conventional predictive uncertainty, a confidence-aware extrapolation assessment is introduced, integrating extrapolation distance, statistical stability, and knowledge-graph-based physical consistency into a unified confidence score. Results demonstrate that ontology-guided extraction significantly improves the structural coherence and quantitative reliability of extracted knowledge, while subgraph-conditioned equation generation yields stable and physically consistent extrapolations compared to unguided LLM outputs. Overall, this work establishes a unified pipeline for ontology-driven knowledge representation, equation-centered reasoning, and confidence-based extrapolation assessment, highlighting the potential of knowledge-graph-augmented LLMs as reliable tools for extrapolative modeling in additive manufacturing.

cs / cs.AI