Litcius/Paper detail

Ontology Network-Based In-Situ Sensor Selection for Quality Management in Metal Additive Manufacturing

Byeong-Min Roh, Soundar Kumara, Hui Yang, Timothy W. Simpson, Paul Witherell, Albert Jones, Yan Lu

2022Journal of Computing and Information Science in Engineering16 citationsDOI

Abstract

Abstract Metal additive manufacturing (MAM) offers a larger design space with greater manufacturability than traditional manufacturing. Despite continued advances, MAM processes still face huge uncertainty, resulting in variable part quality. Real-time sensing for MAM processing helps quantify uncertainty by detecting build failure and process anomalies. While the high volume of multidimensional sensor data—such as melt-pool geometries and temperature gradients—is beginning to be explored, sensor selection does not yet effectively link sensor data to part quality. To begin investigating such connections, we propose network-based models that capture in real-time (1) sensor data's association with process variables and (2) as-built part qualities’ association with related physical phenomena. These sensor models and networks lay the foundation for a comprehensive framework to monitor and manage the quality of MAM process outcomes.

Topics & Concepts

Design for manufacturabilityProcess (computing)OntologyComputer scienceQuality (philosophy)Wireless sensor networkData miningVolume (thermodynamics)Flexibility (engineering)EngineeringSystems engineeringMechanical engineeringComputer networkPhilosophyEpistemologyStatisticsOperating systemQuantum mechanicsPhysicsMathematicsAdditive Manufacturing Materials and ProcessesAdditive Manufacturing and 3D Printing TechnologiesMachine Learning in Materials Science