Six-Sigma Quality Management of Additive Manufacturing

被引:44
作者
Yang, Hui [1 ]
Rao, Prahalad [2 ]
Simpson, Timothy [3 ,4 ]
Lu, Yan [5 ]
Witherell, Paul [5 ]
Nassar, Abdalla R. [4 ]
Reutzel, Edward [4 ]
Kumara, Soundar [1 ]
机构
[1] Penn State Univ, Harold & Inge Marcus Dept Ind & Mfg Engn, University Pk, PA 16802 USA
[2] Univ Nebraska, Dept Mech & Mat Engn, Lincoln, NE 68588 USA
[3] Penn State Univ, Harold & Inge Marcus Dept Ind & Mfg Engn, University Pk, PA 16801 USA
[4] Penn State Univ, Ctr Innovat Mat Proc 3D CIMP 3D, University Pk, PA 16801 USA
[5] NIST, Gaithersburg, MD 20899 USA
关键词
Mass customization; Quality management; Laser beams; Solid modeling; Three-dimensional printing; Process control; Analytical models; Six sigma; Additive manufacturing (AM); artificial intelligence (AI); data analytics; engineering design; quality management; sensor systems; simulation modeling;
D O I
10.1109/JPROC.2020.3034519
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Quality is a key determinant in deploying new processes, products, or services and influences the adoption of emerging manufacturing technologies. The advent of additive manufacturing (AM) as a manufacturing process has the potential to revolutionize a host of enterprise-related functions from production to the supply chain. The unprecedented level of design flexibility and expanded functionality offered by AM, coupled with greatly reduced lead times, can potentially pave the way for mass customization. However, widespread application of AM is currently hampered by technical challenges in process repeatability and quality management. The breakthrough effect of six sigma (6S) has been demonstrated in traditional manufacturing industries (e.g., semiconductor and automotive industries) in the context of quality planning, control, and improvement through the intensive use of data, statistics, and optimization. 6S entails a data-driven DMAIC methodology of five steps-define, measure, analyze, improve, and control. Notwithstanding the sustained successes of the 6S knowledge body in a variety of established industries ranging from manufacturing, healthcare, logistics, and beyond, there is a dearth of concentrated application of 6S quality management approaches in the context of AM. In this article, we propose to design, develop, and implement the new DMAIC methodology for the 6S quality management of AM. First, we define the specific quality challenges arising from AM layerwise fabrication and mass customization (even one-of-a-kind production). Second, we present a review of AM metrology and sensing techniques, from materials through design, process, and environment, to postbuild inspection. Third, we contextualize a framework for realizing the full potential of data from AM systems and emphasize the need for analytical methods and tools. We propose and delineate the utility of new data-driven analytical methods, including deep learning, machine learning, and network science, to characterize and model the interrelationships between engineering design, machine setting, process variability, and final build quality. Fourth, we present the methodologies of ontology analytics, design of experiments (DOE), and simulation analysis for AM system improvements. In closing, new process control approaches are discussed to optimize the action plans, once an anomaly is detected, with specific consideration of lead time and energy consumption. We posit that this work will catalyze more in-depth investigations and multidisciplinary research efforts to accelerate the application of 6S quality management in AM.
引用
收藏
页码:347 / 376
页数:30
相关论文
共 113 条
[1]   Flaw detection in powder bed fusion using optical imaging [J].
Abdelrahmana, Mostafa ;
Reutzel, Edward W. ;
Nassar, Abdalla R. ;
Starr, Thomas L. .
ADDITIVE MANUFACTURING, 2017, 15 :1-11
[2]   Multi-Objective Accelerated Process Optimization of Part Geometric Accuracy in Additive Manufacturing [J].
Aboutaleb, Amir M. ;
Tschopp, Mark A. ;
Rao, Prahalad K. ;
Bian, Linkan .
JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2017, 139 (10)
[3]   Regulatory interfaces surrounding the growing field of additive manufacturing of medical devices and biologic products [J].
Adamo, Joan E. ;
Grayson, Warren L. ;
Hatcher, Heather ;
Brown, Jennifer Swanton ;
Thomas, Andrika ;
Hollister, Scott ;
Steele, Scott J. .
JOURNAL OF CLINICAL AND TRANSLATIONAL SCIENCE, 2018, 2 (05) :301-304
[4]   Tolerancing and Verification of Additive Manufactured Lattice with Supplemental Surfaces [J].
Ameta, Gaurav ;
Fox, Jason ;
Witherell, Paul .
15TH CIRP CONFERENCE ON COMPUTER AIDED TOLERANCING, CIRP CAT 2018, 2018, 75 :69-74
[5]  
[Anonymous], 2015, 8036 NIST
[6]  
[Anonymous], 2008, NIST ATOMIC SPECTRA
[7]   Quantitative assessments of geometric errors for rapid prototyping in medical applications [J].
Arrieta, Cristobal ;
Uribe, Sergio ;
Ramos-Grez, Jorge ;
Vargas, Alex ;
Irarrazaval, Pablo ;
Parot, Vicente ;
Tejos, Cristian .
RAPID PROTOTYPING JOURNAL, 2012, 18 (06) :431-442
[8]   Invited review article: Metal-additive manufacturing-Modeling strategies for application-optimized designs [J].
Bandyopadhyay, Amit ;
Traxel, Kellen D. .
ADDITIVE MANUFACTURING, 2018, 22 :758-774
[9]   Defect generation and propagation mechanism during additive manufacturing by selective beam melting [J].
Bauereiss, A. ;
Scharowsky, T. ;
Koerner, C. .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2014, 214 (11) :2522-2528
[10]   A design framework for additive manufacturing [J].
Bikas, H. ;
Lianos, A. K. ;
Stavropoulos, P. .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 103 (9-12) :3769-3783