Aa. Arkadan et al., NDT IDENTIFICATION OF A CRACK USING ANNS WITH STOCHASTIC GRADIENT DESCENT, IEEE transactions on magnetics, 31(3), 1995, pp. 1984-1987
Nondestructive testing (NDT) is used to identify the anomalies and def
ects in inaccessible locations. Various techniques of optimization are
used in NDT. In this work, the Artificial Neural Networks (ANNs) are
applied with NDT to identify a crack in a conducting medium. In genera
l, deterministic techniques are used with the back propagation algorit
hm (BP) to train the neural networks. The ANNs which are trained by a
deterministic method have a tendency to get trapped in local minima. I
n this paper a stochastic version of the gradient descent is applied t
o train the ANNs and it overcomes the difficulties of local minima cau
sed by the sinusoidal fields. The stochastic version used in this appr
oach is based on the Metropolis algorithm which is frequently used in
the simulated annealing.