Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems

We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood (DML) blind estimation of multiple FIR channels. The first one is a modification of the Iterative Quadratic ML (IQML) algorithm. IQML gives biased estimates of the channel and performs poorly at low S...

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Published in:Circuits, Systems, and Signal Processing
Main Authors: De Carvalho, Elisabeth, Omar, Samir, Slock, Dirk
Format: Article in Journal/Newspaper
Language:English
Published: 2013
Subjects:
DML
Online Access:https://vbn.aau.dk/da/publications/5e21484f-2872-48c2-ac8f-b4942857d22e
https://doi.org/10.1007/s00034-012-9474-2
id ftalborgunivpubl:oai:pure.atira.dk:publications/5e21484f-2872-48c2-ac8f-b4942857d22e
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spelling ftalborgunivpubl:oai:pure.atira.dk:publications/5e21484f-2872-48c2-ac8f-b4942857d22e 2024-09-15T18:03:47+00:00 Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems De Carvalho, Elisabeth Omar, Samir Slock, Dirk 2013-04 https://vbn.aau.dk/da/publications/5e21484f-2872-48c2-ac8f-b4942857d22e https://doi.org/10.1007/s00034-012-9474-2 eng eng https://vbn.aau.dk/da/publications/5e21484f-2872-48c2-ac8f-b4942857d22e info:eu-repo/semantics/restrictedAccess De Carvalho , E , Omar , S & Slock , D 2013 , ' Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems ' , Circuits, Systems and Signal Processing , vol. 32 , no. 2 , pp. 683-709 . https://doi.org/10.1007/s00034-012-9474-2 Blind channel estimation · Deterministic maximum likelihood · Performance analysis · DIQML · PQML article 2013 ftalborgunivpubl https://doi.org/10.1007/s00034-012-9474-2 2024-08-22T00:15:02Z We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood (DML) blind estimation of multiple FIR channels. The first one is a modification of the Iterative Quadratic ML (IQML) algorithm. IQML gives biased estimates of the channel and performs poorly at low SNR due to noise induced bias. The IQML cost function can be “denoised” by eliminating the noise contribution: the resulting algorithm, Denoised IQML (DIQML), gives consistent estimates and outperforms IQML. Furthermore, DIQML is asymptotically globally convergent and hence insensitive to the initialization. Its asymptotic performance does not reach the DML performance though. The second strategy, called Pseudo-Quadratic ML (PQML), is naturally denoised. The denoising in PQML is furthermore more efficient than in DIQML: PQML yields the same asymptotic performance as DML, as opposed to DIQML, but requires a consistent initialization. We furthermore compare DIQML and PQML to the strategy of alternating minimization w.r.t. symbols and channel for solving DML (AQML). An asymptotic performance analysis, a complexity evaluation and simulation results are also presented. The proposed DIQML and PQML algorithms can immediately be applied also to other subspace problems such as frequency estimation of sinusoids in noise or direction of arrival estimation with uniform linear arrays. Article in Journal/Newspaper DML Aalborg University's Research Portal Circuits, Systems, and Signal Processing 32 2 683 709
institution Open Polar
collection Aalborg University's Research Portal
op_collection_id ftalborgunivpubl
language English
topic Blind channel estimation · Deterministic maximum likelihood · Performance analysis · DIQML · PQML
spellingShingle Blind channel estimation · Deterministic maximum likelihood · Performance analysis · DIQML · PQML
De Carvalho, Elisabeth
Omar, Samir
Slock, Dirk
Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
topic_facet Blind channel estimation · Deterministic maximum likelihood · Performance analysis · DIQML · PQML
description We analyze two algorithms that have been introduced previously for Deterministic Maximum Likelihood (DML) blind estimation of multiple FIR channels. The first one is a modification of the Iterative Quadratic ML (IQML) algorithm. IQML gives biased estimates of the channel and performs poorly at low SNR due to noise induced bias. The IQML cost function can be “denoised” by eliminating the noise contribution: the resulting algorithm, Denoised IQML (DIQML), gives consistent estimates and outperforms IQML. Furthermore, DIQML is asymptotically globally convergent and hence insensitive to the initialization. Its asymptotic performance does not reach the DML performance though. The second strategy, called Pseudo-Quadratic ML (PQML), is naturally denoised. The denoising in PQML is furthermore more efficient than in DIQML: PQML yields the same asymptotic performance as DML, as opposed to DIQML, but requires a consistent initialization. We furthermore compare DIQML and PQML to the strategy of alternating minimization w.r.t. symbols and channel for solving DML (AQML). An asymptotic performance analysis, a complexity evaluation and simulation results are also presented. The proposed DIQML and PQML algorithms can immediately be applied also to other subspace problems such as frequency estimation of sinusoids in noise or direction of arrival estimation with uniform linear arrays.
format Article in Journal/Newspaper
author De Carvalho, Elisabeth
Omar, Samir
Slock, Dirk
author_facet De Carvalho, Elisabeth
Omar, Samir
Slock, Dirk
author_sort De Carvalho, Elisabeth
title Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
title_short Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
title_full Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
title_fullStr Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
title_full_unstemmed Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems
title_sort performance and complexity analysis of blind fir channel identification algorithms based on deterministic maximum likelihood in simo systems
publishDate 2013
url https://vbn.aau.dk/da/publications/5e21484f-2872-48c2-ac8f-b4942857d22e
https://doi.org/10.1007/s00034-012-9474-2
genre DML
genre_facet DML
op_source De Carvalho , E , Omar , S & Slock , D 2013 , ' Performance and Complexity Analysis of Blind FIR Channel Identification Algorithms Based on Deterministic Maximum Likelihood in SIMO Systems ' , Circuits, Systems and Signal Processing , vol. 32 , no. 2 , pp. 683-709 . https://doi.org/10.1007/s00034-012-9474-2
op_relation https://vbn.aau.dk/da/publications/5e21484f-2872-48c2-ac8f-b4942857d22e
op_rights info:eu-repo/semantics/restrictedAccess
op_doi https://doi.org/10.1007/s00034-012-9474-2
container_title Circuits, Systems, and Signal Processing
container_volume 32
container_issue 2
container_start_page 683
op_container_end_page 709
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