Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems

Generally speaking, a communication channel refers to a medium through which an information-bearing signal is corrupted by noise and distortion. A communication channel may result from data storage over time or data transmission through space. A primary task for communication engineers is to mathema...

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Main Author: Pan, Lu
Other Authors: Ryan, William E.
Language:en
Published: The University of Arizona. 2013
Subjects:
Online Access:http://hdl.handle.net/10150/293753
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-2937532015-10-23T05:17:11Z Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems Pan, Lu Ryan, William E. Vasic, Bane Marcellin, Michael W. Ryan, William E. compressive sensing data storage signal processing Electrical & Computer Engineering coding Generally speaking, a communication channel refers to a medium through which an information-bearing signal is corrupted by noise and distortion. A communication channel may result from data storage over time or data transmission through space. A primary task for communication engineers is to mathematically characterize the channel to facilitate the design of appropriate detection and coding systems. In this dissertation, two different channel modeling challenges for ultra-high density magnetic storage are investigated: two-dimensional magnetic recording (TDMR) and bit-patterned magnetic recording (BPMR). In the case of TDMR, we characterize the error mechanisms during the write/read process of data on a TDMR medium by a finite-state machine, and then design a state-based detector that provides soft decisions for use by an outer decoder. In the case of BPMR, we employ an insertion/deletion (I/D) model. We propose a LDPC-CRC product coding scheme that enables the error detection without the involvement of Marker codes specifically designed for an I/D channel. We also propose a generalized Gilbert-Elliott (GE) channel to approximate the I/D channel in the sense of an equivalent I/D event rate. A lower bound of the channel capacity for the BPMR channel is derived, which supports our claim that commonly used error-correction codes are effective on the I/D channel under the assumption that I/D events are limited to a finite length. Another channel model we investigated is perpendicular magnetic recording model. Advanced signal processing for the pattern-dependent-noise-predictive channel detectors is our focus. Specifically, we propose an adaptive scheme for a hardware design that reduces the complexity of the detector and the truncation/saturation error caused by a fix-point representation of values in the detector. Lastly, we designed a sequence detector for compressively sampled Bluetooth signals, thus allowing data recovery via sub-Nyquist sampling. This detector skips the conventional step of reconstructing the original signal from compressive samples prior to detection. We also propose an adaptive design of the sampling matrix, which almost achieves Nyquist sampling performance with a relatively high compression ratio. Additionally, this adaptive scheme can automatically choose an appropriate compression ratio as a function of E(b)/N₀ without explicit knowledge of it. 2013 text Electronic Dissertation http://hdl.handle.net/10150/293753 en Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction or presentation (such as public display or performance) of protected items is prohibited except with permission of the author. The University of Arizona.
collection NDLTD
language en
sources NDLTD
topic compressive sensing
data storage
signal processing
Electrical & Computer Engineering
coding
spellingShingle compressive sensing
data storage
signal processing
Electrical & Computer Engineering
coding
Pan, Lu
Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
description Generally speaking, a communication channel refers to a medium through which an information-bearing signal is corrupted by noise and distortion. A communication channel may result from data storage over time or data transmission through space. A primary task for communication engineers is to mathematically characterize the channel to facilitate the design of appropriate detection and coding systems. In this dissertation, two different channel modeling challenges for ultra-high density magnetic storage are investigated: two-dimensional magnetic recording (TDMR) and bit-patterned magnetic recording (BPMR). In the case of TDMR, we characterize the error mechanisms during the write/read process of data on a TDMR medium by a finite-state machine, and then design a state-based detector that provides soft decisions for use by an outer decoder. In the case of BPMR, we employ an insertion/deletion (I/D) model. We propose a LDPC-CRC product coding scheme that enables the error detection without the involvement of Marker codes specifically designed for an I/D channel. We also propose a generalized Gilbert-Elliott (GE) channel to approximate the I/D channel in the sense of an equivalent I/D event rate. A lower bound of the channel capacity for the BPMR channel is derived, which supports our claim that commonly used error-correction codes are effective on the I/D channel under the assumption that I/D events are limited to a finite length. Another channel model we investigated is perpendicular magnetic recording model. Advanced signal processing for the pattern-dependent-noise-predictive channel detectors is our focus. Specifically, we propose an adaptive scheme for a hardware design that reduces the complexity of the detector and the truncation/saturation error caused by a fix-point representation of values in the detector. Lastly, we designed a sequence detector for compressively sampled Bluetooth signals, thus allowing data recovery via sub-Nyquist sampling. This detector skips the conventional step of reconstructing the original signal from compressive samples prior to detection. We also propose an adaptive design of the sampling matrix, which almost achieves Nyquist sampling performance with a relatively high compression ratio. Additionally, this adaptive scheme can automatically choose an appropriate compression ratio as a function of E(b)/N₀ without explicit knowledge of it.
author2 Ryan, William E.
author_facet Ryan, William E.
Pan, Lu
author Pan, Lu
author_sort Pan, Lu
title Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
title_short Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
title_full Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
title_fullStr Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
title_full_unstemmed Coding and Signal Processing Techniques for High Efficiency Data Storage and Transmission Systems
title_sort coding and signal processing techniques for high efficiency data storage and transmission systems
publisher The University of Arizona.
publishDate 2013
url http://hdl.handle.net/10150/293753
work_keys_str_mv AT panlu codingandsignalprocessingtechniquesforhighefficiencydatastorageandtransmissionsystems
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