Deep Learning-Based Ultrasonic Testing to Evaluate the Porosity of Additively Manufactured Parts with Rough Surfaces

被引:21
作者
Park, Seong-Hyun [1 ]
Hong, Jung-Yean [1 ]
Ha, Taeho [2 ]
Choi, Sungho [3 ]
Jhang, Kyung-Young [4 ]
机构
[1] Hanyang Univ, Dept Mech Convergence Engn, Seoul 04763, South Korea
[2] Korea Inst Machinery & Mat, Dept 3D Printing, Daejeon 34103, South Korea
[3] Jeonbuk Natl Univ, LANL JBNU Engn Inst Korea, Dept Flexible & Printable Elect, Jeonju Si 54896, South Korea
[4] Hanyang Univ, Sch Mech Engn, Seoul 04763, South Korea
基金
新加坡国家研究基金会;
关键词
additive manufacturing; porosity; rough surface; ultrasonic testing; convolutional neural network; deep neural network; multi-layer perceptron; NEURAL-NETWORK; PROCESSING PARAMETERS; DEFECT; ATTENUATION; INSPECTION; MODE;
D O I
10.3390/met11020290
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Ultrasonic testing (UT) has been actively studied to evaluate the porosity of additively manufactured parts. Currently, ultrasonic measurements of as-deposited parts with a rough surface remain problematic because the surface lowers the signal-to-noise ratio (SNR) of ultrasonic signals, which degrades the UT performance. In this study, various deep learning (DL) techniques that can effectively extract the features of defects, even from signals with a low SNR, were applied to UT, and their performance in terms of the porosity evaluation of additively manufactured parts with rough surfaces was investigated. Experimentally, the effects of the processing conditions of additive manufacturing on the resulting porosity were first analyzed using both optical and scanning acoustic microscopy. Second, convolutional neural network (CNN), deep neural network, and multi-layer perceptron models were trained using time-domain ultrasonic signals obtained from additively manufactured specimens with various levels of porosity and surface roughness. The experimental results showed that all the models could evaluate porosity accurately, even that of the as-deposited specimens. In particular, the CNN delivered the best performance at 94.5%. However, conventional UT could not be applied because of the low SNR. The generalization performance when using newly manufactured as-deposited specimens was high at 90%.
引用
收藏
页码:1 / 19
页数:19
相关论文
共 59 条
[1]  
Abu Bakar M.H., 2019, PROGR ENG TECHNOLOGY, P259
[2]  
Aghdam H.H., 2017, GUIDE CONVOLUTIONAL, V10, P973
[3]   Demonstration of Using Signal Feature Extraction and Deep Learning Neural Networks with Ultrasonic Data for Detecting Challenging Discontinuities in Composite Panels [J].
Aldrin, John C. ;
Forsyth, David S. .
45TH ANNUAL REVIEW OF PROGRESS IN QUANTITATIVE NONDESTRUCTIVE EVALUATION, VOL 38, 2019, 2102
[4]   Simulation of Ti-6Al-4V Additive Manufacturing Using Coupled Physically Based Flow Stress and Metallurgical Model [J].
Babu, Bijish ;
Lundback, Andreas ;
Lindgren, Lars-Erik .
MATERIALS, 2019, 12 (23)
[5]   Influence of Surface Roughness from Additive Manufacturing on Laser Ultrasonics Measurements [J].
Bakre, Chaitanya ;
Hassanian, Mostafa ;
Lissenden, Cliff .
45TH ANNUAL REVIEW OF PROGRESS IN QUANTITATIVE NONDESTRUCTIVE EVALUATION, VOL 38, 2019, 2102
[6]   A review of NDE methods for porosity measurement in fibre-reinforced polymer composites [J].
Birt, EA ;
Smith, RA .
INSIGHT, 2004, 46 (11) :681-686
[7]   Influence of process parameters on surface roughness of aluminum parts produced by DMLS [J].
Calignano, F. ;
Manfredi, D. ;
Ambrosio, E. P. ;
Iuliano, L. ;
Fino, P. .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2013, 67 (9-12) :2743-2751
[8]   Towards defect monitoring for metallic additive manufacturing components using phased array ultrasonic testing [J].
Chabot, A. ;
Laroche, N. ;
Carcreff, E. ;
Rauch, M. ;
Hascoet, J. -Y. .
JOURNAL OF INTELLIGENT MANUFACTURING, 2020, 31 (05) :1191-1201
[9]   Development of online inspection for additive manufacturing products [J].
Clark, D. ;
Sharples, S. D. ;
Wright, D. C. .
INSIGHT, 2011, 53 (11) :610-613
[10]   Microstructural Control of Additively Manufactured Metallic Materials [J].
Collins, P. C. ;
Brice, D. A. ;
Samimi, P. ;
Ghamarian, I. ;
Fraser, H. L. .
ANNUAL REVIEW OF MATERIALS RESEARCH, VOL 46, 2016, 46 :63-91