A neural network identifier for electromagnetic thermotherapy systems
ISSN: 0332-1649
Article publication date: 6 March 2017
Abstract
Purpose
This study aims to establish a dynamic process model of an electromagnetic thermotherapy system (ETS) to predict the temperature of a thermotherapy needle.
Design/methodology/approach
The model is used for real-time predicting the static and dynamic responses of temperature and can therefore provide a valuable analysis for system monitoring.
Findings
The electromagnetic thermotherapy process is a nonlinear problem in which the system identification is implemented by a neural network identifier. It can simulate the input/output relationship of a real system with an excellent approximation ability to uncertain nonlinear system. A system identifier for an ETS is analyzed and selected with recurrent neural networks models to deal with various treatment processes.
Originality/value
The Elman neural network (ENN) prediction model on ETS proposed in this study is an easy and feasible method. Comparing two situations of inputs with more and fewer data, both are trained to present low mean squared error, and the temperature response error appears within 15 per cent. The ENN, with the advantages of simple design and stable efficacy, is useful for establishing the temperature prediction model to ensure the security in the thermotherapy.
Keywords
Citation
Tai, C.-C., Wang, W.-C. and Hsu, Y.-J. (2017), "A neural network identifier for electromagnetic thermotherapy systems", COMPEL - The international journal for computation and mathematics in electrical and electronic engineering, Vol. 36 No. 2, pp. 565-574. https://doi.org/10.1108/COMPEL-05-2016-0212
Publisher
:Emerald Publishing Limited
Copyright © 2017, Emerald Publishing Limited