Analysis of neural network results based on experimental data during indentation

Author:

Babushkina N,Lyapin A,Kovaleva A

Abstract

The article is devoted to the development of machine learning methods for classes of technical problems, including determining the properties of materials. According to the authors, the neural network approximation algorithm is able to take into account the behavior of materials in various experimental conditions. The article provides illustrative examples of how a neural network with a single hidden layer can approximate a function of several variables with a given accuracy. As part of the study, a number of experimental measurements were made. The structure of the neural network and its main components are described.

Publisher

EDP Sciences

Reference15 articles.

1. Filatova T V 2004 Application of neural networks for data approximation Journal of Tomsk state University 284 https://cyberleninkaru/article/n/primenenie-neyronnyhsetey-dlya-approksimatsii-dannyh

2. Callan R 2001 Basic concepts of neural networks: trans from English (M: Williams) p 290

3. Kruglov V V, Borisov V V 2001 Basic concepts of neural networks (Moscow: Hot line – Telecom) p 382

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