Litcius/Paper detail

Ontology-Driven Learning of Bayesian Network for Causal Inference and Quality Assurance in Additive Manufacturing

Ruimin Chen, Yan Lu, Paul Witherell, Timothy W. Simpson, Soundar Kumara, Hui Yang

2021IEEE Robotics and Automation Letters43 citationsDOI

Abstract

Additive manufacturing (AM) enables the creation of complex geometries that are difficult to realize using conventional manufacturing techniques. Advanced sensing is increasingly being used to improve AM processes, and installing different sensors onto AM systems has yielded more data-rich environments. Transforming data into useful information and knowledge (i.e., causality detection and process-structure-property (PSP) relationship identification) is important for achieving the necessary quality assurance and quality control (QA/QC) in AM. However, causality modeling and PSP relationship establishment in AM are still in early stages of development. In this paper, we develop an ontology-based Bayesian network (BN) model to represent causal relationships between AM parameters (i.e., design parameters and process parameters) and QA/QC requirements (e.g., structure properties and mechanical properties). The proposed model enables engineering interpretations and can further advance AM process monitoring and control.

Topics & Concepts

Bayesian networkQuality assuranceComputer scienceOntologyProcess (computing)Causality (physics)Quality (philosophy)Identification (biology)InferenceData miningBayesian inferenceProperty (philosophy)Discrete manufacturingArtificial intelligenceSoftware engineeringMachine learningBayesian probabilityEngineeringProduction (economics)EconomicsPhysicsMacroeconomicsBotanyQuantum mechanicsOperating systemPhilosophyExternal quality assessmentEpistemologyOperations managementBiologyMachine Learning in Materials ScienceIndustrial Vision Systems and Defect DetectionManufacturing Process and Optimization