INDUSTRIAL APPLICATIONS OF ARTIFICIAL NEURAL NETWORKS

Authors

  • Kurosh Madani

DOI:

https://doi.org/10.47839/ijc.3.1.247

Keywords:

Artificial Neural Networks, Industrial Applications, Real-Time, Software Implementation, Hardware Implementation

Abstract

In a large number of real world dilemmas and related applications the modeling of complex behavior is the central point. Over the past decades, new approaches based on Artificial Neural Networks (ANN) have been proposed to solve problems related to optimization, modeling, decision making, classification, data mining or nonlinear functions (behavior) approximation. Inspired from biological nervous systems and brain structure, Artificial Neural Networks could be seen as information processing systems, which allow elaboration of many original techniques covering a large field of applications. Among their most appealing properties, one can quote their learning and generalization capabilities. The main goal of this paper is to present, through some of main ANN models and based techniques, their real application capability in real world industrial dilemmas. Several examples through industrial and real world applications have been presented and discussed.

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Published

2014-08-01

How to Cite

Madani, K. (2014). INDUSTRIAL APPLICATIONS OF ARTIFICIAL NEURAL NETWORKS. International Journal of Computing, 3(1), 8-20. https://doi.org/10.47839/ijc.3.1.247

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