Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording

Dynamic bit encoding and decoding of the magnetic recording process remain a challenge in that the process is restrained by the balance between reading and writing performance of the decoder's bit error rate (BER). Sequential neural networks offer data streamflow for processes to reproduce reco...

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Main Authors: Teanchai Chantakit, Chaiwat Buajong, Chanon Warisarn
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9173770/
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spelling doaj-29af970d374a4fefbe4634d2b2d7f7b62021-03-30T04:05:33ZengIEEEIEEE Access2169-35362020-01-01815524815525910.1109/ACCESS.2020.30184669173770Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic RecordingTeanchai Chantakit0https://orcid.org/0000-0003-2328-1442Chaiwat Buajong1https://orcid.org/0000-0002-4472-7207Chanon Warisarn2https://orcid.org/0000-0002-8408-1893College of Advanced Manufacturing Innovation, King Mongkut&#x2019;s Institute of Technology Ladkrabang, Bangkok, ThailandCollege of Advanced Manufacturing Innovation, King Mongkut&#x2019;s Institute of Technology Ladkrabang, Bangkok, ThailandCollege of Advanced Manufacturing Innovation, King Mongkut&#x2019;s Institute of Technology Ladkrabang, Bangkok, ThailandDynamic bit encoding and decoding of the magnetic recording process remain a challenge in that the process is restrained by the balance between reading and writing performance of the decoder's bit error rate (BER). Sequential neural networks offer data streamflow for processes to reproduce recoded bits from signal distribution, overcoming the limitation of codeword mapping designed for each specific bit-patterned magnetic recording (BPMR) channel. Here, we implement the vanilla long short-term memory (LSTM) for adaptive modulation decoders in various BPMR channel designs within a single network, which benefits multi-channel decoder calibration tools with the same standardization. Signal information from media readback, a two-dimensional (2D) equalizer, 2D Viterbi, and a 2D soft-output Viterbi algorithm (SOVA) detector is arranged as a tensor that enables sequence-to-sequence bit prediction even with a highly complex data arrangement. Our adaptive model can predict recorded bits from readback with accuracies of approximately 97% for rate 4/5 decoding and 75% for crossing platforms, using a recently proposed single-reader/two-track reading (SRTR) system at an areal density of 4 Tb/in<sup>2</sup> in a signal-to-noise ratio range of 1 to 8 dB. We conducted a BER simulation with the relevant results from conventional decoders and the LSTM model. Ultimately, our approach may demonstrate the limitation of supervised learning designed for BPMR systems and reveal a sequence data focus on LSTM that paves the way for sequential-type, unsupervised, mechanism-based, next-generation magnetic recordings.https://ieeexplore.ieee.org/document/9173770/Long-short term memory (LSTM)supervised learningdeep learningbit-patterned media recording (BPMR)channel decoding
collection DOAJ
language English
format Article
sources DOAJ
author Teanchai Chantakit
Chaiwat Buajong
Chanon Warisarn
spellingShingle Teanchai Chantakit
Chaiwat Buajong
Chanon Warisarn
Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
IEEE Access
Long-short term memory (LSTM)
supervised learning
deep learning
bit-patterned media recording (BPMR)
channel decoding
author_facet Teanchai Chantakit
Chaiwat Buajong
Chanon Warisarn
author_sort Teanchai Chantakit
title Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
title_short Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
title_full Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
title_fullStr Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
title_full_unstemmed Long-Short Term Memory-Based Application on Adaptive Cross-Platform Decoder for Bit Patterned Magnetic Recording
title_sort long-short term memory-based application on adaptive cross-platform decoder for bit patterned magnetic recording
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Dynamic bit encoding and decoding of the magnetic recording process remain a challenge in that the process is restrained by the balance between reading and writing performance of the decoder's bit error rate (BER). Sequential neural networks offer data streamflow for processes to reproduce recoded bits from signal distribution, overcoming the limitation of codeword mapping designed for each specific bit-patterned magnetic recording (BPMR) channel. Here, we implement the vanilla long short-term memory (LSTM) for adaptive modulation decoders in various BPMR channel designs within a single network, which benefits multi-channel decoder calibration tools with the same standardization. Signal information from media readback, a two-dimensional (2D) equalizer, 2D Viterbi, and a 2D soft-output Viterbi algorithm (SOVA) detector is arranged as a tensor that enables sequence-to-sequence bit prediction even with a highly complex data arrangement. Our adaptive model can predict recorded bits from readback with accuracies of approximately 97% for rate 4/5 decoding and 75% for crossing platforms, using a recently proposed single-reader/two-track reading (SRTR) system at an areal density of 4 Tb/in<sup>2</sup> in a signal-to-noise ratio range of 1 to 8 dB. We conducted a BER simulation with the relevant results from conventional decoders and the LSTM model. Ultimately, our approach may demonstrate the limitation of supervised learning designed for BPMR systems and reveal a sequence data focus on LSTM that paves the way for sequential-type, unsupervised, mechanism-based, next-generation magnetic recordings.
topic Long-short term memory (LSTM)
supervised learning
deep learning
bit-patterned media recording (BPMR)
channel decoding
url https://ieeexplore.ieee.org/document/9173770/
work_keys_str_mv AT teanchaichantakit longshorttermmemorybasedapplicationonadaptivecrossplatformdecoderforbitpatternedmagneticrecording
AT chaiwatbuajong longshorttermmemorybasedapplicationonadaptivecrossplatformdecoderforbitpatternedmagneticrecording
AT chanonwarisarn longshorttermmemorybasedapplicationonadaptivecrossplatformdecoderforbitpatternedmagneticrecording
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