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Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks

The development of smart sensors involves the design of reconfigurable systems capable of working with different input sensors. Reconfigurable systems ideally should spend the least possible amount of time in their calibration. An autocalibration algorithm for intelligent sensors should be able to f...

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Autores principales: Rivera, José, Carrillo, Mariano, Chacón, Mario, Herrera, Gilberto, Bojorquez, Gilberto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Molecular Diversity Preservation International (MDPI) 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3814866/
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author Rivera, José
Carrillo, Mariano
Chacón, Mario
Herrera, Gilberto
Bojorquez, Gilberto
author_facet Rivera, José
Carrillo, Mariano
Chacón, Mario
Herrera, Gilberto
Bojorquez, Gilberto
author_sort Rivera, José
collection PubMed
description The development of smart sensors involves the design of reconfigurable systems capable of working with different input sensors. Reconfigurable systems ideally should spend the least possible amount of time in their calibration. An autocalibration algorithm for intelligent sensors should be able to fix major problems such as offset, variation of gain and lack of linearity, as accurately as possible. This paper describes a new autocalibration methodology for nonlinear intelligent sensors based on artificial neural networks, ANN. The methodology involves analysis of several network topologies and training algorithms. The proposed method was compared against the piecewise and polynomial linearization methods. Method comparison was achieved using different number of calibration points, and several nonlinear levels of the input signal. This paper also shows that the proposed method turned out to have a better overall accuracy than the other two methods. Besides, experimentation results and analysis of the complete study, the paper describes the implementation of the ANN in a microcontroller unit, MCU. In order to illustrate the method capability to build autocalibration and reconfigurable systems, a temperature measurement system was designed and tested. The proposed method is an improvement over the classic autocalibration methodologies, because it impacts on the design process of intelligent sensors, autocalibration methodologies and their associated factors, like time and cost.
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spelling pubmed-38148662013-11-04 Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks Rivera, José Carrillo, Mariano Chacón, Mario Herrera, Gilberto Bojorquez, Gilberto Sensors (Basel) Full Paper The development of smart sensors involves the design of reconfigurable systems capable of working with different input sensors. Reconfigurable systems ideally should spend the least possible amount of time in their calibration. An autocalibration algorithm for intelligent sensors should be able to fix major problems such as offset, variation of gain and lack of linearity, as accurately as possible. This paper describes a new autocalibration methodology for nonlinear intelligent sensors based on artificial neural networks, ANN. The methodology involves analysis of several network topologies and training algorithms. The proposed method was compared against the piecewise and polynomial linearization methods. Method comparison was achieved using different number of calibration points, and several nonlinear levels of the input signal. This paper also shows that the proposed method turned out to have a better overall accuracy than the other two methods. Besides, experimentation results and analysis of the complete study, the paper describes the implementation of the ANN in a microcontroller unit, MCU. In order to illustrate the method capability to build autocalibration and reconfigurable systems, a temperature measurement system was designed and tested. The proposed method is an improvement over the classic autocalibration methodologies, because it impacts on the design process of intelligent sensors, autocalibration methodologies and their associated factors, like time and cost. Molecular Diversity Preservation International (MDPI) 2007-08-16 /pmc/articles/PMC3814866/ Text en © 2007 by MDPI (http://www.mdpi.org). Reproduction is permitted for noncommercial purposes.
spellingShingle Full Paper
Rivera, José
Carrillo, Mariano
Chacón, Mario
Herrera, Gilberto
Bojorquez, Gilberto
Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title_full Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title_fullStr Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title_full_unstemmed Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title_short Self-Calibration and Optimal Response in Intelligent Sensors Design Based on Artificial Neural Networks
title_sort self-calibration and optimal response in intelligent sensors design based on artificial neural networks
topic Full Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3814866/
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