Embedded system to classificate heat power of a fuel gas and the quality of alcohol

Authors

  • Vitor Khyraiama Cidade Universitaria, Сан-Паулу, SP, Бразилия
  • Uolter Khaimes Salsedo Cidade Universitaria, Сан-Паулу, SP, Бразилия
  • Francisco J. Paмipec-Fernandez Cidade Universitaria, Сан-Паулу, SP, Бразилия

Keywords:

RSA

Abstract

This work present the result obtained to develop an electronic nose to recognize the fuel gas heat power. As a first approach, synthetic data was generated for each sensor. It was considered the use of raw data and the use of a principal component analysis (PCA) to reduce the number of sensors. Two topologies of neural networks have been used, the backpropagation and learning vector quantization (LVQ). A fuzzy inference system (FIS) also has been used as a solution to this problem.

Author Biographies

Vitor Khyraiama, Cidade Universitaria, Сан-Паулу, SP, Бразилия

SIM, LME, USP, Escola Politécnica,

Cidade Universitária, São Paulo, SP, Brazil

Uolter Khaimes Salsedo, Cidade Universitaria, Сан-Паулу, SP, Бразилия

SIM, LME, USP, Escola Politécnica,

Cidade Universitária, São Paulo, SP, Brazil

Francisco J. Paмipec-Fernandez, Cidade Universitaria, Сан-Паулу, SP, Бразилия

SIM, LME, USP, Escola Politécnica,

Cidade Universitária, São Paulo, SP, Brazil

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Abstract views: 192

Published

2016-05-30

How to Cite

[1]
V. Khyraiama, U. K. Salsedo, and J. Paмipec-Fernandez F., “Embedded system to classificate heat power of a fuel gas and the quality of alcohol”, ІТКІ, vol. 1, no. 1, pp. 44–48, May 2016.

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Section

Information technology and coding theory

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