In-situ process monitoring for defect detection in wire-arc additive manufacturing: an agentic AI approach

arXiv cs.AI / 4/14/2026

💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research

Key Points

  • 本論文は、ワイヤ・アーク式付加製造(WAAM)のその場(in-situ)プロセス監視で欠陥検出を行うためのエージェント型AIフレームワークを提案している。
  • 溶接電流・電圧などの処理信号に基づく「処理エージェント」と、プロセス中に取得した音響データに基づく「監視エージェント」を用意し、それぞれ別系統の特徴から多孔性(porosity)欠陥を推定する。
  • 教師データとしてX線CT(XCT)の真値を利用し、処理・監視の各分類ツールを学習した上で、LLMを意思決定に活用する構成が示されている。
  • 複数エージェントを並列にオーケストレーションする多エージェント構成は、単独エージェントより高性能で、決定された実行での精度91.6%・F1 0.821を15回の独立実行で達成した。
  • 提案手法は、自律的なリアルタイム監視・制御によってWAAMなどの造形品質を高める可能性があると結論づけている。

Abstract

AI agents are being increasingly deployed across a wide range of real-world applications. In this paper, we propose an agentic AI framework for in-situ process monitoring for defect detection in wire-arc additive manufacturing (WAAM). The autonomous agent leverages a WAAM process monitoring dataset and a trained classification tool to build AI agents and uses a large language model (LLM) for in-situ process monitoring decision-making for defect detection. A processing agent is developed based on welder process signals, such as current and voltage, and a monitoring agent is developed based on acoustic data collected during the process. Both agents are tasked with identifying porosity defects from processing and monitoring signals, respectively. Ground truth X-ray computed tomography (XCT) data are used to develop classification tools for both the processing and monitoring agents. Furthermore, a multi-agent framework is demonstrated in which the processing and monitoring agents are orchestrated together for parallel decision-making on the given task of defect classification. Evaluation metrics are proposed to determine the efficacy of both individual agents, the combined single-agent, and the coordinated multi-agent system. The multi-agent configuration outperforms all individual-agent counterparts, achieving a decision accuracy of 91.6% and an F1 score of 0.821 on decided runs, across 15 independent runs, and a reasoning quality score of 3.74 out of 5. These in-situ process monitoring agents hold significant potential for autonomous real-time process monitoring and control toward building qualified parts for WAAM and other additive manufacturing processes.