351-360intelligent tools such as expert systems,
artificial neural network and fuzzy logic support decision-making are being used
in intelligent manufacturing systems. Success of intelligent manufacturing
systems depends on effective and efficient utilization of intelligent tools. Weld residual stress depends on different process
parameters and its prediction and control is a challenge to the researchers. In
this paper, intelligent predictive techniques artificial neural network (ANN)
and fuzzy logic models are developed for weld residual stress prediction. The
models are developed using
Matlab toolbox functions. Data set
required to train the models are obtained through finite element simulation. Results
from the fuzzy model are compared with the developed <span style="mso-bidi-font-weight:
bold">artificial neural network model, and these models are also
validated.
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