A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio

In the literature, we can find several blind adaptive deconvolution algorithms based on closed-form approximated expressions for the conditional expectation (the expectation of the source input given the equalized or deconvolutional output), involving the maximum entropy density approximation techni...

Full description

Bibliographic Details
Main Author: Monika Pinchas
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Entropy
Subjects:
Online Access:http://www.mdpi.com/1099-4300/21/1/72
_version_ 1798006930867748864
author Monika Pinchas
author_facet Monika Pinchas
author_sort Monika Pinchas
collection DOAJ
description In the literature, we can find several blind adaptive deconvolution algorithms based on closed-form approximated expressions for the conditional expectation (the expectation of the source input given the equalized or deconvolutional output), involving the maximum entropy density approximation technique. The main drawback of these algorithms is the heavy computational burden involved in calculating the expression for the conditional expectation. In addition, none of these techniques are applicable for signal-to-noise ratios lower than 7 dB. In this paper, I propose a new closed-form approximated expression for the conditional expectation based on a previously obtained expression where the equalized output probability density function is calculated via the approximated input probability density function which itself is approximated with the maximum entropy density approximation technique. This newly proposed expression has a reduced computational burden compared with the previously obtained expressions for the conditional expectation based on the maximum entropy approximation technique. The simulation results indicate that the newly proposed algorithm with the newly proposed Lagrange multipliers is suitable for signal-to-noise ratio values down to 0 dB and has an improved equalization performance from the residual inter-symbol-interference point of view compared to the previously obtained algorithms based on the conditional expectation obtained via the maximum entropy technique.
first_indexed 2024-04-11T13:02:16Z
format Article
id doaj.art-fe7301557cb1402d8d7e8a6ce55f2ce0
institution Directory Open Access Journal
issn 1099-4300
language English
last_indexed 2024-04-11T13:02:16Z
publishDate 2019-01-01
publisher MDPI AG
record_format Article
series Entropy
spelling doaj.art-fe7301557cb1402d8d7e8a6ce55f2ce02022-12-22T04:22:54ZengMDPI AGEntropy1099-43002019-01-012117210.3390/e21010072e21010072A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise RatioMonika Pinchas0Department of Electrical and Electronic Engineering, Ariel University, Ariel 40700, IsraelIn the literature, we can find several blind adaptive deconvolution algorithms based on closed-form approximated expressions for the conditional expectation (the expectation of the source input given the equalized or deconvolutional output), involving the maximum entropy density approximation technique. The main drawback of these algorithms is the heavy computational burden involved in calculating the expression for the conditional expectation. In addition, none of these techniques are applicable for signal-to-noise ratios lower than 7 dB. In this paper, I propose a new closed-form approximated expression for the conditional expectation based on a previously obtained expression where the equalized output probability density function is calculated via the approximated input probability density function which itself is approximated with the maximum entropy density approximation technique. This newly proposed expression has a reduced computational burden compared with the previously obtained expressions for the conditional expectation based on the maximum entropy approximation technique. The simulation results indicate that the newly proposed algorithm with the newly proposed Lagrange multipliers is suitable for signal-to-noise ratio values down to 0 dB and has an improved equalization performance from the residual inter-symbol-interference point of view compared to the previously obtained algorithms based on the conditional expectation obtained via the maximum entropy technique.http://www.mdpi.com/1099-4300/21/1/72Bayesian approachdeconvolutionmaximum entropy density approximation technique
spellingShingle Monika Pinchas
A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
Entropy
Bayesian approach
deconvolution
maximum entropy density approximation technique
title A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
title_full A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
title_fullStr A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
title_full_unstemmed A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
title_short A New Efficient Expression for the Conditional Expectation of the Blind Adaptive Deconvolution Problem Valid for the Entire Range ofSignal-to-Noise Ratio
title_sort new efficient expression for the conditional expectation of the blind adaptive deconvolution problem valid for the entire range ofsignal to noise ratio
topic Bayesian approach
deconvolution
maximum entropy density approximation technique
url http://www.mdpi.com/1099-4300/21/1/72
work_keys_str_mv AT monikapinchas anewefficientexpressionfortheconditionalexpectationoftheblindadaptivedeconvolutionproblemvalidfortheentirerangeofsignaltonoiseratio
AT monikapinchas newefficientexpressionfortheconditionalexpectationoftheblindadaptivedeconvolutionproblemvalidfortheentirerangeofsignaltonoiseratio