Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems

Based on the application of the conditional mean rule, a sampling-recovery algorithm is studied for a Gaussian two-dimensional process. The components of such a process are the input and output processes of an arbitrary linear system, which are characterized by their statistical relationships. Reali...

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Main Authors: Vladimir Kazakov, Mauro A. Enciso, Francisco Mendoza
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/22/10/1079
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author Vladimir Kazakov
Mauro A. Enciso
Francisco Mendoza
author_facet Vladimir Kazakov
Mauro A. Enciso
Francisco Mendoza
author_sort Vladimir Kazakov
collection DOAJ
description Based on the application of the conditional mean rule, a sampling-recovery algorithm is studied for a Gaussian two-dimensional process. The components of such a process are the input and output processes of an arbitrary linear system, which are characterized by their statistical relationships. Realizations are sampled in both processes, and the number and location of samples in the general case are arbitrary for each component. As a result, general expressions are found that determine the optimal structure of the recovery devices, as well as evaluate the quality of recovery of each component of the two-dimensional process. The main feature of the obtained algorithm is that the realizations of both components or one of them is recovered based on two sets of samples related to the input and output processes. This means that the recovery involves not only its own samples of the restored realization, but also the samples of the realization of another component, statistically related to the first one. This type of general algorithm is characterized by a significantly improved recovery quality, as evidenced by the results of six non-trivial examples with different versions of the algorithms. The research method used and the proposed general algorithm for the reconstruction of multidimensional Gaussian processes have not been discussed in the literature.
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spelling doaj.art-5af6797d084841d4963b3c266eb5e4562023-11-20T15:05:24ZengMDPI AGEntropy1099-43002020-09-012210107910.3390/e22101079Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear SystemsVladimir Kazakov0Mauro A. Enciso1Francisco Mendoza2Departamento Telecomunicaciones, Sección de Posgrado e Investigación, Instituto Politécnico Nacional, Unidad Zacatenco, National Polytechnic Institute of Mexico, Ave. IPN s/n, Building Z, Access 4, 3th Floor, SEPI Telecommunications, Mexico City 07738, MexicoDepartamento Telecomunicaciones, Sección de Posgrado e Investigación, Instituto Politécnico Nacional, Unidad Zacatenco, National Polytechnic Institute of Mexico, Ave. IPN s/n, Building Z, Access 4, 3th Floor, SEPI Telecommunications, Mexico City 07738, MexicoDepartamento Telecomunicaciones, Sección de Posgrado e Investigación, Instituto Politécnico Nacional, Unidad Zacatenco, National Polytechnic Institute of Mexico, Ave. IPN s/n, Building Z, Access 4, 3th Floor, SEPI Telecommunications, Mexico City 07738, MexicoBased on the application of the conditional mean rule, a sampling-recovery algorithm is studied for a Gaussian two-dimensional process. The components of such a process are the input and output processes of an arbitrary linear system, which are characterized by their statistical relationships. Realizations are sampled in both processes, and the number and location of samples in the general case are arbitrary for each component. As a result, general expressions are found that determine the optimal structure of the recovery devices, as well as evaluate the quality of recovery of each component of the two-dimensional process. The main feature of the obtained algorithm is that the realizations of both components or one of them is recovered based on two sets of samples related to the input and output processes. This means that the recovery involves not only its own samples of the restored realization, but also the samples of the realization of another component, statistically related to the first one. This type of general algorithm is characterized by a significantly improved recovery quality, as evidenced by the results of six non-trivial examples with different versions of the algorithms. The research method used and the proposed general algorithm for the reconstruction of multidimensional Gaussian processes have not been discussed in the literature.https://www.mdpi.com/1099-4300/22/10/1079sampling recovery algorithm of a realization of multidimensional gaussian processconditional mean rulebasic functionerror recovery functioncovariance functioncross-covariance function
spellingShingle Vladimir Kazakov
Mauro A. Enciso
Francisco Mendoza
Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
Entropy
sampling recovery algorithm of a realization of multidimensional gaussian process
conditional mean rule
basic function
error recovery function
covariance function
cross-covariance function
title Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
title_full Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
title_fullStr Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
title_full_unstemmed Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
title_short Two-Dimensional Sampling-Recovery Algorithm of a Realization of Gaussian Processes on the Input and Output of Linear Systems
title_sort two dimensional sampling recovery algorithm of a realization of gaussian processes on the input and output of linear systems
topic sampling recovery algorithm of a realization of multidimensional gaussian process
conditional mean rule
basic function
error recovery function
covariance function
cross-covariance function
url https://www.mdpi.com/1099-4300/22/10/1079
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