Shallow and deep learning of an artificial neural network model describing a hot flow stress Evolution: A comparative study

Loading...
Thumbnail Image

Downloads

5

Date issued

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Location

Signature

Abstract

In recent years, the utilization of artificial neural networks (ANNs) as regression models to solve the issue of hot flow stress forecasting has become a standard approach. In a connection with this kind of regression issue, employed ANNs are usually learned via a shallow learning technique while only limited attention has been paid to a deep learning method. In the frame of the submitted research, the shallow learning approach is thoroughly compared to the deep learning techniques which are based on the use of a Restricted Boltzmann Machine (RBM) and an Auto-Encoder (AE). To do so, these learning techniques are applied on a feed-forward multi-layer ANN describing the experimental hot flow curve dataset of micro-alloyed medium carbon steel. In comparison with the shallow learning method, both deep learning approaches provided higher accuracy in the network response - especially in the case of a higher number of hidden layers. The results have also shown that neither the RBM-based deep learning method nor the AE-based method had a significant effect on the duration of the necessary calculations. However, it turned out that the RBM-based method can, under certain conditions, lead to a more reliable network performance.

Description

Subject(s)

artificial neural network, deep learning techniques, deep belief network, restricted Boltzmann machine, auto-encoder, hot deformation behavior

Citation

Materials & Design. 2022, vol. 220, art. no. 110880.