TY - JOUR
T1 - Application of fuzzy neural network to laser bending process of sheet metal
AU - Chen, D. J.
AU - Xiang, Y. B.
AU - Wu, S. C.
AU - Li, M. Q.
PY - 2002/6
Y1 - 2002/6
N2 - The optimisation and selection of process plans is very important for laser bending of sheet metal to achieve the anticipated bending deformation. In this paper, an adaptive fuzzy neural network has been proposed to predict the bending deformation. This network integrates the learning power of neural networks with fuzzy inference systems. During the establishing process of the energy density (composed of three process parameters: laser power, scanning velocity, and spot diameter), width, thickness of sheet, and scanning path curvature were taken as four input variables of the network. The gradient descent learning algorithm was applied to optimally adjust the weight coefficients of the neural network and the parameters of the fuzzy membership functions. Then, the trained network was used to predict the laser bending deformation. Good correlation was found between the predictive and experimental results.
AB - The optimisation and selection of process plans is very important for laser bending of sheet metal to achieve the anticipated bending deformation. In this paper, an adaptive fuzzy neural network has been proposed to predict the bending deformation. This network integrates the learning power of neural networks with fuzzy inference systems. During the establishing process of the energy density (composed of three process parameters: laser power, scanning velocity, and spot diameter), width, thickness of sheet, and scanning path curvature were taken as four input variables of the network. The gradient descent learning algorithm was applied to optimally adjust the weight coefficients of the neural network and the parameters of the fuzzy membership functions. Then, the trained network was used to predict the laser bending deformation. Good correlation was found between the predictive and experimental results.
UR - http://www.scopus.com/inward/record.url?scp=0036614609&partnerID=8YFLogxK
U2 - 10.1179/026708302225003569
DO - 10.1179/026708302225003569
M3 - 文章
AN - SCOPUS:0036614609
SN - 0267-0836
VL - 18
SP - 677
EP - 680
JO - Materials Science and Technology
JF - Materials Science and Technology
IS - 6
ER -