In-situ process monitoring for defect detection in wire-arc additive manufacturing: an agentic AI approach
Pallock Halder, Satyajit Mojumder

TL;DR
This paper introduces an agentic AI framework with multiple agents for real-time defect detection in wire-arc additive manufacturing, demonstrating improved accuracy through multi-agent coordination.
Contribution
It presents a novel multi-agent AI system integrating processing and monitoring agents for in-situ defect detection in WAAM.
Findings
Multi-agent system achieves 91.6% accuracy in defect detection.
Coordinated agents outperform individual agents in defect classification.
The framework demonstrates potential for autonomous real-time process monitoring.
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.…
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