Artificial neural network modeling to evaluate and predict the deformation behavior of stainless steel type AISI 304L during hot torsion

被引:173
作者
Mandal, Sumantra [1 ]
Sivaprasad, P. V. [1 ]
Venugopal, S. [1 ]
Murthy, K. P. N. [2 ]
机构
[1] Indira Gandhi Ctr Atom Res, Met & Mat Grp, Kalpakkam 603102, Tamil Nadu, India
[2] Univ Hyderabad, Sch Phys, Hyderabad 500046, Andhra Pradesh, India
关键词
Artificial neural network; Austenitic stainless steel; Deformation behavior; Hot torsion; Back propagation; Resilient propagation; Sensitivity; CONSTITUTIVE FLOW BEHAVIOR; HIGH-TEMPERATURE; STRAIN-RATE; STRESS; CARBON; COPPER; NICKEL;
D O I
10.1016/j.asoc.2008.03.016
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The deformation behavior of type 304L stainless steel during hot torsion is investigated using artificial neural network (ANN). Torsion tests in the temperature range of 600-1200 degrees C and in the (maximum surface) strain rate range of 0.1-100 s(1) were carried out. These experiments provided the required data for training the neural network and for subsequent testing. The input parameters of the model are strain, log strain rate and temperature while torsional flow stress is the output. A three layer feed-forward network was trained with standard back propagation (BP) and Resilient propagation (Rprop) algorithm. The paper makes a robust comparison of the performances of the above two algorithms. The network trained with Rprop algorithm is found to perform better and also needs less number of iterations for convergence. The developed ANN model employing this algorithm could efficiently track the work hardening, dynamic softening and flow localization regions of the deforming material. Sensitivity analysis showed that temperature and strain rate are the most significant parameters while strain affects the flow stress only moderately. The ANN model, described in this paper, is an efficient quantitative tool to evaluate and predict the deformation behavior of type 304L stainless steel during hot torsion. (C) 2008 Elsevier B.V. All rights reserved.
引用
收藏
页码:237 / 244
页数:8
相关论文
共 29 条
[1]   New globally convergent training scheme based on the resilient propagation algorithm [J].
Anastasladis, AD ;
Magoulas, GD ;
Vrahatis, MN .
NEUROCOMPUTING, 2005, 64 (64) :253-270
[2]   THE HIGH-TEMPERATURE AND HIGH STRAIN-RATE BEHAVIOR OF A PLAIN CARBON AND AN HSLA STEEL [J].
BARAGAR, DL .
JOURNAL OF MECHANICAL WORKING TECHNOLOGY, 1987, 14 (03) :295-307
[3]   Using neural networks to predict parameters in the hot working of aluminum alloys [J].
Chun, MS ;
Biglou, J ;
Lenard, JG ;
Kim, JG .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 1999, 86 (1-3) :245-251
[4]   Development of constitutive equations for modelling of hot rolling [J].
Davenport, SB ;
Silk, NJ ;
Sparks, CN ;
Sellars, CM .
MATERIALS SCIENCE AND TECHNOLOGY, 2000, 16 (05) :539-546
[5]   A CONSTITUTIVE DESCRIPTION OF THE DEFORMATION OF COPPER BASED ON THE USE OF THE MECHANICAL THRESHOLD STRESS AS AN INTERNAL STATE VARIABLE [J].
FOLLANSBEE, PS ;
KOCKS, UF .
ACTA METALLURGICA, 1988, 36 (01) :81-93
[6]  
Garson G.D., 1991, AI EXPERT, V6, P47, DOI DOI 10.5555/129449.129452
[7]  
HARDWICK D, 1961, J I MET, V90, P17
[8]   The prediction of the hot strength in steels with an integrated phenomenological and artificial neural network model [J].
Hodgson, PD ;
Kong, LX ;
Davies, CHJ .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 1999, 87 (1-3) :131-138
[9]   MULTILAYER FEEDFORWARD NETWORKS ARE UNIVERSAL APPROXIMATORS [J].
HORNIK, K ;
STINCHCOMBE, M ;
WHITE, H .
NEURAL NETWORKS, 1989, 2 (05) :359-366
[10]   A comparison between the back-propagation and counter-propagation networks in the modeling of the TIG welding process [J].
Juang, SC ;
Tarng, YS ;
Lii, HR .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 1998, 75 (1-3) :54-62