Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms

We consider measures of nonlinearity (MoNs) of a polynomial curve in two-dimensions (2D), as previously studied in our Fusion 2010 and 2019 ICCAIS papers. Our previous work calculated curvature measures of nonlinearity (MoNs) using (i) extrinsic curvature, (ii) Bates and Watts parameter-effects curv...

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Main Authors: Mahendra Mallick, Xiaoqing Tian
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/12/3426
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spelling doaj-406b95762e9348d99304958698c2bd2a2020-11-25T03:40:36ZengMDPI AGSensors1424-82202020-06-01203426342610.3390/s20123426Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity AlgorithmsMahendra Mallick0Xiaoqing Tian1Independent Consultant, Anacortes, WA 98221, USASchool of Automation Science and Engineering, Xi’an Jiaotong University, Xi’an 710049, ChinaWe consider measures of nonlinearity (MoNs) of a polynomial curve in two-dimensions (2D), as previously studied in our Fusion 2010 and 2019 ICCAIS papers. Our previous work calculated curvature measures of nonlinearity (MoNs) using (i) extrinsic curvature, (ii) Bates and Watts parameter-effects curvature, and (iii) direct parameter-effects curvature. In this paper, we have introduced the computation and analysis of a number of new MoNs, including Beale’s MoN, Linssen’s MoN, Li’s MoN, and the MoN of Straka, Duník, and S̆imandl. Our results show that all of the MoNs studied follow the same type of variation as a function of the independent variable and the power of the polynomial. Secondly, theoretical analysis and numerical results show that the logarithm of the mean square error (MSE) is an affine function of the logarithm of the MoN for each type of MoN. This implies that, when the MoN increases, the MSE increases. We have presented an up-to-date review of various MoNs in the context of non-linear parameter estimation and non-linear filtering. The MoNs studied here can be used to compute MoN in non-linear filtering problems.https://www.mdpi.com/1424-8220/20/12/3426polynomial curve in 2Dmeasures of nonlinearity (MoNs)extrinsic curvatureBeale’s MoNLinssen’s MoNBates and Watts parameter-effects curvature
collection DOAJ
language English
format Article
sources DOAJ
author Mahendra Mallick
Xiaoqing Tian
spellingShingle Mahendra Mallick
Xiaoqing Tian
Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
Sensors
polynomial curve in 2D
measures of nonlinearity (MoNs)
extrinsic curvature
Beale’s MoN
Linssen’s MoN
Bates and Watts parameter-effects curvature
author_facet Mahendra Mallick
Xiaoqing Tian
author_sort Mahendra Mallick
title Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
title_short Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
title_full Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
title_fullStr Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
title_full_unstemmed Analysis of Polynomial Nonlinearity Based on Measures of Nonlinearity Algorithms
title_sort analysis of polynomial nonlinearity based on measures of nonlinearity algorithms
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-06-01
description We consider measures of nonlinearity (MoNs) of a polynomial curve in two-dimensions (2D), as previously studied in our Fusion 2010 and 2019 ICCAIS papers. Our previous work calculated curvature measures of nonlinearity (MoNs) using (i) extrinsic curvature, (ii) Bates and Watts parameter-effects curvature, and (iii) direct parameter-effects curvature. In this paper, we have introduced the computation and analysis of a number of new MoNs, including Beale’s MoN, Linssen’s MoN, Li’s MoN, and the MoN of Straka, Duník, and S̆imandl. Our results show that all of the MoNs studied follow the same type of variation as a function of the independent variable and the power of the polynomial. Secondly, theoretical analysis and numerical results show that the logarithm of the mean square error (MSE) is an affine function of the logarithm of the MoN for each type of MoN. This implies that, when the MoN increases, the MSE increases. We have presented an up-to-date review of various MoNs in the context of non-linear parameter estimation and non-linear filtering. The MoNs studied here can be used to compute MoN in non-linear filtering problems.
topic polynomial curve in 2D
measures of nonlinearity (MoNs)
extrinsic curvature
Beale’s MoN
Linssen’s MoN
Bates and Watts parameter-effects curvature
url https://www.mdpi.com/1424-8220/20/12/3426
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AT xiaoqingtian analysisofpolynomialnonlinearitybasedonmeasuresofnonlinearityalgorithms
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