Advanced Data Analytics for Quality Assurance of Smart Additive Manufacturing

dc.contributor.authorShen, Boen
dc.contributor.committeechairKong, Zhenyuen
dc.contributor.committeememberJohnson, Blakeen
dc.contributor.committeememberYue, Xiaoweien
dc.contributor.committeememberXie, Weijunen
dc.contributor.departmentIndustrial and Systems Engineeringen
dc.date.accessioned2022-07-08T08:00:17Zen
dc.date.available2022-07-08T08:00:17Zen
dc.date.issued2022-07-07en
dc.description.abstractAdditive manufacturing (AM) is a powerful emerging technology for fabricating components with complex geometries using a variety of materials. However, despite the promising potential, due to the complexity of the process dynamics, how to ensure product quality and consistency of AM parts efficiently during the process remains challenging. Therefore, this dissertation aims to develop advanced machine learning methods for online process monitoring and quality assurance of smart additive manufacturing. Driven by edge computing, the Industrial Internet of Things (IIoT), sensors and other smart technologies, data collection, communication, analytics, and control are infiltrating every aspect of manufacturing. The data provides excellent opportunities to improve and revolutionize manufacturing for both quality and productivity. Despite the massive volume of data generated during a very short time, approximately 90 percent of data gets wasted or unused. The goal of sensing and data analytics for advanced manufacturing is to capture the full insight that data and analytics can discover to help address the most pressing problems. To achieve the above goal, several data-driven approaches have been developed in this dissertation to achieve effective data preprocessing, feature extraction, and inverse design. We also develop related theories for these data-driven approaches to guarantee their performance. The performances have been validated using sensor data from AM processes. Specifically, four new methodologies are proposed and implemented as listed below: 1. To make the unqualified thermal data meet the spatial and temporal resolution requirement of microstructure prediction, a super resolution for multi-sources image stream data using smooth and sparse tensor completion is proposed and applied to data acquisition of additive manufacturing. The qualified thermal data is able to extract useful information like boundary velocity, thermal gradient, etc. 2. To effectively extract features for high dimensional data with limited samples, a clustered discriminant regression is created for classification problems in healthcare and additive manufacturing. The proposed feature extraction method together with classic classifiers can achieve better classification performance than the convolutional neural network for image classification. 3. To extract the melt pool information from the processed X-ray video in metal AM process, a smooth sparse Robust Tensor Decomposition model is devised to decompose the data into the static background, smooth foreground, and noise, respectively. The proposed method exhibits superior performance in extracting the melt pool information on X-ray data. 4. To learn the material property for different printing settings, a multi-task Gaussian process upper confidence bound is developed for the sequential experiment design, where a no-regret algorithm is implemented. The proposed algorithm aims to learn the optimal material property for different printing settings. By fully utilizing the sensor data with innovative data analytics, the above-proposed methodologies are used to perform interdisciplinary research, promote technical innovations, and achieve balanced theoretical/practical advancements. In addition, these methodologies are inherently integrated into a generic framework. Thus, they can be easily extended to other manufacturing processes, systems, or even other application areas such as healthcare systems.en
dc.description.abstractgeneralAdditive manufacturing (AM) technology is rapidly changing the industry, and data from various sensors and simulation software can further improve AM product quality. The objective of this dissertation is to develop methodologies for process monitoring and quality assurance using advanced data analytics. In this dissertation, four new methodologies are developed to address the problems of unqualified data, high dimensional data with limited samples, and inverse design. Related theories are also studied to identify the conditions by which the performance of the developed methodologies can be guaranteed. To validate the effectiveness and efficiency of proposed methodologies, various data sets from sensors and simulation software are used for testing and validation. The results demonstrate that the proposed methods are promising for different AM applications. The future applications of the accomplished work in this dissertation are not just limited to AM. The developed methodologies can be easily transferred for applications in other domains such as healthcare, computer vision, etc.en
dc.description.degreeDoctor of Philosophyen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:35260en
dc.identifier.urihttp://hdl.handle.net/10919/111161en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectSmart Additive Manufacturingen
dc.subjectProcess Monitoringen
dc.subjectQuality Assuranceen
dc.subjectMachine Learningen
dc.titleAdvanced Data Analytics for Quality Assurance of Smart Additive Manufacturingen
dc.typeDissertationen
thesis.degree.disciplineIndustrial and Systems Engineeringen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.leveldoctoralen
thesis.degree.nameDoctor of Philosophyen

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