Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models

The performance of the control system relies on the linearity of the sensor, which can be influenced by various factors such as aging and alterations in material properties. However, current sensor linearization techniques, such as utilizing neural networks and piecewise regression models in the dig...

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Main Authors: Sundararajan Seenivasaan, Naduvil Madhusoodanan Kottarthil
Format: Article
Language:English
Published: AIMS Press 2023-08-01
Series:AIMS Electronics and Electrical Engineering
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/electreng.2023012?viewType=HTML
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author Sundararajan Seenivasaan
Naduvil Madhusoodanan Kottarthil
author_facet Sundararajan Seenivasaan
Naduvil Madhusoodanan Kottarthil
author_sort Sundararajan Seenivasaan
collection DOAJ
description The performance of the control system relies on the linearity of the sensor, which can be influenced by various factors such as aging and alterations in material properties. However, current sensor linearization techniques, such as utilizing neural networks and piecewise regression models in the digital domain, suffer from issues like errors, excessive power consumption, and slow response times. To address these constraints, this investigation employs a translinear based analog circuit to realize neural networks and piecewise regression models for the purpose of linearizing the selected sensors. A conventional feed-forward back propagation network is constructed and trained using the Levenberg-Marquardt algorithm. The developed linearization algorithm is implemented using a translinear circuit, where the trained weights, biases, and sensor output are fed as input current sources into the current-mode circuit. Further in this work, the piecewise regression model is designed and implemented using a translinear circuit and the breakpoint is determined using 'R' language. The simulation results indicate that the implementation of the current-mode circuit with metal-oxide-semiconductor field-effect transistors (MOSFETs) for the neural network algorithm leads to a substantial reduction in full-scale error as compared to the piecewise current mode model. Additionally, a performance analysis was conducted to compare the utilization of current-mode circuits with digital approaches for the linearization of sensors. The proposed translinear implementation surpasses the other researcher's work by delivering notable results. It showcases a significant improvement in linearity, ranging from 60% to 80%, for the selected sensors. Furthermore, the proposed implementation excels not only in linearity but also in terms of both response speed and power consumption. The improvement in the linearity of the sensor can be enhanced further by replacing the MOSFETs with bipolar transistors or any versatile materials such as gallium arsenide or gallium nitride-based transistors.
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spelling doaj.art-aba0c9d50f954d8f9b6ed84ccd8833dd2023-10-18T03:01:43ZengAIMS PressAIMS Electronics and Electrical Engineering2578-15882023-08-017319621610.3934/electreng.2023012Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network modelsSundararajan Seenivasaan0Naduvil Madhusoodanan Kottarthil1Department of Instrumentation, Cochin University of Science and Technology, Cochin, Kerala, IndiaDepartment of Instrumentation, Cochin University of Science and Technology, Cochin, Kerala, IndiaThe performance of the control system relies on the linearity of the sensor, which can be influenced by various factors such as aging and alterations in material properties. However, current sensor linearization techniques, such as utilizing neural networks and piecewise regression models in the digital domain, suffer from issues like errors, excessive power consumption, and slow response times. To address these constraints, this investigation employs a translinear based analog circuit to realize neural networks and piecewise regression models for the purpose of linearizing the selected sensors. A conventional feed-forward back propagation network is constructed and trained using the Levenberg-Marquardt algorithm. The developed linearization algorithm is implemented using a translinear circuit, where the trained weights, biases, and sensor output are fed as input current sources into the current-mode circuit. Further in this work, the piecewise regression model is designed and implemented using a translinear circuit and the breakpoint is determined using 'R' language. The simulation results indicate that the implementation of the current-mode circuit with metal-oxide-semiconductor field-effect transistors (MOSFETs) for the neural network algorithm leads to a substantial reduction in full-scale error as compared to the piecewise current mode model. Additionally, a performance analysis was conducted to compare the utilization of current-mode circuits with digital approaches for the linearization of sensors. The proposed translinear implementation surpasses the other researcher's work by delivering notable results. It showcases a significant improvement in linearity, ranging from 60% to 80%, for the selected sensors. Furthermore, the proposed implementation excels not only in linearity but also in terms of both response speed and power consumption. The improvement in the linearity of the sensor can be enhanced further by replacing the MOSFETs with bipolar transistors or any versatile materials such as gallium arsenide or gallium nitride-based transistors.https://www.aimspress.com/article/doi/10.3934/electreng.2023012?viewType=HTMLsensorlinearizationneural networktranslinear circuitpower consumption
spellingShingle Sundararajan Seenivasaan
Naduvil Madhusoodanan Kottarthil
Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
AIMS Electronics and Electrical Engineering
sensor
linearization
neural network
translinear circuit
power consumption
title Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
title_full Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
title_fullStr Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
title_full_unstemmed Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
title_short Enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
title_sort enhancing sensor linearity through the translinear circuit implementation of piecewise and neural network models
topic sensor
linearization
neural network
translinear circuit
power consumption
url https://www.aimspress.com/article/doi/10.3934/electreng.2023012?viewType=HTML
work_keys_str_mv AT sundararajanseenivasaan enhancingsensorlinearitythroughthetranslinearcircuitimplementationofpiecewiseandneuralnetworkmodels
AT naduvilmadhusoodanankottarthil enhancingsensorlinearitythroughthetranslinearcircuitimplementationofpiecewiseandneuralnetworkmodels