Modeling of Weld Bead Geometry Using Adaptive Neuro-Fuzzy Inference System (ANFIS) in Additive Manufacturing

被引:21
作者
Foorginejad, Abolfazl [1 ]
Azargoman, Majid [1 ]
Mollayi, Nader [2 ]
Taheri, Morteza [3 ]
机构
[1] Birjand Univ Technol, Dept Mech Engn, Birjand, Iran
[2] Birjand Univ Technol, Dept Comp Engn & Informat Technol, Birjand, Iran
[3] Tarbiat Modares Univ, Dept Mech Engn, Tehran, Iran
关键词
Weld bead geometry; Additive manufacturing; modeling; ANFIS; Gas Metal Arc Welding (GMAW); PREDICTION; PARAMETERS;
D O I
10.22055/JACM.2019.29077.1555
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
Additive Manufacturing describes the technologies that can produce a physical model out of a computer model with a layer-by-layer production process. Additive Manufacturing technologies, as compared to traditional manufacturing methods, have the high capability of manufacturing the complex components using minimum energy and minimum consumption. These technologies have brought about the possibility to make small pieces of raw materials in the shortest possible time without the need for a mold or tool. One of the technologies used to make pieces of the layer-by-layer process is the Gas Metal Arc Welding (GMAW). One of the basic steps in this method of making parts is the prediction of bead geometry in each pass of welding. In this study, taking into account the effective parameters on the geometry of weld bead, an empirical study has been done in this field. For this purpose, three parameters of voltage, welding speed and wire feeding rate are considered as effective parameters on the welding geometry of the process. Width and height of the bead are also determined by the parameters of the geometry of the weld according to the type and application of the research as output parameters are considered. In this paper, an adaptive neuro-fuzzy inference system (ANFIS) is used to create an adaptive model between input process data and parameters of weld bead geometry. The least squares mean error is used to evaluate the model. The predicted results by the model have a good correlation with the experimental data.
引用
收藏
页码:160 / 170
页数:11
相关论文
共 28 条
[1]   Intelligent modeling for estimating weld bead width and depth of penetration from infra-red thermal images of the weld pool [J].
Chandrasekhar, N. ;
Vasudevan, M. ;
Bhaduri, A. K. ;
Jayakumar, T. .
JOURNAL OF INTELLIGENT MANUFACTURING, 2015, 26 (01) :59-71
[2]   SUPPORT-VECTOR NETWORKS [J].
CORTES, C ;
VAPNIK, V .
MACHINE LEARNING, 1995, 20 (03) :273-297
[3]   Prediction of tensile strength of friction stir weld joints with adaptive neuro-fuzzy inference system (ANFIS) and neural network [J].
Dewan, Mohammad W. ;
Huggett, Daniel J. ;
Liao, T. Warren ;
Wahab, Muhammad A. ;
Okeil, Ayman M. .
MATERIALS & DESIGN, 2016, 92 :288-299
[4]  
Ghomsheh VS, 2007, MED C CONTR AUTOMAT, P469
[5]  
Jang Jyh-ShingRoger., 1998, P IEEE, V86, P600
[6]   Retrofitment of a CNC machine for hybrid layered manufacturing [J].
Karunakaran, K. P. ;
Suryakumar, S. ;
Pushpa, Vishal ;
Akula, Sreenathbabu .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2009, 45 (7-8) :690-703
[7]   Effects of the use of a flat wire electrode in gas metal arc welding and fuzzy logic model for the prediction of weldment shape profile [J].
Karuthapandi, Sripriyan ;
Ramu, Murugan ;
Thyla, P. R. .
JOURNAL OF MECHANICAL SCIENCE AND TECHNOLOGY, 2017, 31 (05) :2477-2486
[8]   Optimal design of neural networks for control in robotic arc welding [J].
Kim, IS ;
Son, JS ;
Lee, SH ;
Yarlagadda, PKDV .
ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2004, 20 (01) :57-63
[9]   Neurofuzzy model-based weld fusion state estimation [J].
Kovacevic, R ;
Zhang, YM .
IEEE CONTROL SYSTEMS MAGAZINE, 1997, 17 (02) :30-42
[10]   Development of a hybrid rapid prototyping system using low-cost fused deposition modeling and five-axis machining [J].
Lee, Wei-chen ;
Wei, Ching-chih ;
Chung, Shan-Chen .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2014, 214 (11) :2366-2374