Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples

The mechanical characterization of biological samples is a fundamental issue in biology and related fields, such as tissue and cell mechanics, regenerative medicine and diagnosis of diseases. In this paper, a novel approach for the identification of the stiffness and damping coefficients of biosampl...

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Main Authors: Paolo Di Giamberardino, Maria Laura Aceto, Oliviero Giannini, Matteo Verotti
Format: Article
Language:English
Published: MDPI AG 2018-10-01
Series:Actuators
Subjects:
Online Access:http://www.mdpi.com/2076-0825/7/4/74
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spelling doaj-bfedfe9d9a644d7687c8989965d53f082020-11-25T00:36:13ZengMDPI AGActuators2076-08252018-10-01747410.3390/act7040074act7040074Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of BiosamplesPaolo Di Giamberardino0Maria Laura Aceto1Oliviero Giannini2Matteo Verotti3Department of Computer, Control and Management Engineering Antonio Ruberti, Sapienza University of Rome, Via Ariosto, 25, 00185 Rome, ItalyDepartment of Computer, Control and Management Engineering Antonio Ruberti, Sapienza University of Rome, Via Ariosto, 25, 00185 Rome, ItalyUniversity of Rome Niccolò Cusano, Via Don Carlo Gnocchi, 3, 00166 Rome, ItalyUniversity of Rome Niccolò Cusano, Via Don Carlo Gnocchi, 3, 00166 Rome, ItalyThe mechanical characterization of biological samples is a fundamental issue in biology and related fields, such as tissue and cell mechanics, regenerative medicine and diagnosis of diseases. In this paper, a novel approach for the identification of the stiffness and damping coefficients of biosamples is introduced. According to the proposed method, a MEMS-based microgripper in operational condition is used as a measurement tool. The mechanical model describing the dynamics of the gripper-sample system considers the pseudo-rigid body model for the microgripper, and the Kelvin–Voigt constitutive law of viscoelasticity for the sample. Then, two algorithms based on recursive least square (RLS) methods are implemented for the estimation of the mechanical coefficients, that are the forgetting factor based RLS and the normalised gradient based RLS algorithms. Numerical simulations are performed to verify the effectiveness of the proposed approach. Results confirm the feasibility of the method that enables the ability to perform simultaneously two tasks: sample manipulation and parameters identification.http://www.mdpi.com/2076-0825/7/4/74micromanipulationmicrogripperbiological samples analysisvisco-elastic characteristic measurementdynamic parameters estimation
collection DOAJ
language English
format Article
sources DOAJ
author Paolo Di Giamberardino
Maria Laura Aceto
Oliviero Giannini
Matteo Verotti
spellingShingle Paolo Di Giamberardino
Maria Laura Aceto
Oliviero Giannini
Matteo Verotti
Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
Actuators
micromanipulation
microgripper
biological samples analysis
visco-elastic characteristic measurement
dynamic parameters estimation
author_facet Paolo Di Giamberardino
Maria Laura Aceto
Oliviero Giannini
Matteo Verotti
author_sort Paolo Di Giamberardino
title Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
title_short Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
title_full Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
title_fullStr Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
title_full_unstemmed Recursive Least Squares Filtering Algorithms for On-Line Viscoelastic Characterization of Biosamples
title_sort recursive least squares filtering algorithms for on-line viscoelastic characterization of biosamples
publisher MDPI AG
series Actuators
issn 2076-0825
publishDate 2018-10-01
description The mechanical characterization of biological samples is a fundamental issue in biology and related fields, such as tissue and cell mechanics, regenerative medicine and diagnosis of diseases. In this paper, a novel approach for the identification of the stiffness and damping coefficients of biosamples is introduced. According to the proposed method, a MEMS-based microgripper in operational condition is used as a measurement tool. The mechanical model describing the dynamics of the gripper-sample system considers the pseudo-rigid body model for the microgripper, and the Kelvin–Voigt constitutive law of viscoelasticity for the sample. Then, two algorithms based on recursive least square (RLS) methods are implemented for the estimation of the mechanical coefficients, that are the forgetting factor based RLS and the normalised gradient based RLS algorithms. Numerical simulations are performed to verify the effectiveness of the proposed approach. Results confirm the feasibility of the method that enables the ability to perform simultaneously two tasks: sample manipulation and parameters identification.
topic micromanipulation
microgripper
biological samples analysis
visco-elastic characteristic measurement
dynamic parameters estimation
url http://www.mdpi.com/2076-0825/7/4/74
work_keys_str_mv AT paolodigiamberardino recursiveleastsquaresfilteringalgorithmsforonlineviscoelasticcharacterizationofbiosamples
AT marialauraaceto recursiveleastsquaresfilteringalgorithmsforonlineviscoelasticcharacterizationofbiosamples
AT olivierogiannini recursiveleastsquaresfilteringalgorithmsforonlineviscoelasticcharacterizationofbiosamples
AT matteoverotti recursiveleastsquaresfilteringalgorithmsforonlineviscoelasticcharacterizationofbiosamples
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