학술논문

Turbo-Detection for Multilayer Magnetic Recording Using Deep Neural Network-Based Equalizer and Media Noise Predictor
Document Type
Periodical
Source
IEEE Transactions on Magnetics IEEE Trans. Magn. Magnetics, IEEE Transactions on. 58(4):1-11 Apr, 2022
Subject
Fields, Waves and Electromagnetics
Media
Equalizers
Detectors
Target tracking
Magnetic recording
Convolutional neural networks
Predictive models
Bahl–Cocke–Jelinek–Raviv (BCJR) detector
convolutional neural network (CNN)
CNN equalizer-separator
CNN media noise predictor
deep neural network (DNN)
low-density parity-check (LDPC) decoder
multilayer magnetic recording (MLMR)
turbo-detector
Language
ISSN
0018-9464
1941-0069
Abstract
This article considers deep neural network (DNN)-based turbo-detection for multilayer magnetic recording (MLMR), an emerging hard disk drive (HDD) technology that uses vertically stacked magnetic media layers with readers above the top-most layer. The proposed system uses two layers with two upper layer tracks and one lower layer track. The reader signals are processed by convolutional neural networks (CNNs) to separate the upper and lower layer signals and equalize them to 2-D and 1-D partial response (PR) targets, respectively. The upper and lower layer signals feed 2-D and 1-D Bahl–Cocke–Jelinek–Raviv (BCJR) detectors, respectively. The detectors’ soft outputs feed a multilayer CNN-based media noise predictor whose predicted noise outputs are fed back to the BCJR equalizers to reduce their bit error rates (BERs). The BCJR equalizers also interface with low-density parity-check (LDPC) decoders. Additional BER reductions are achieved by sending soft-information from the upper layer BCJR to the lower layer BCJR. Simulations of this turbo-detection system on a two-layer MLMR signal generated by a grain-switching-probabilistic (GSP) media model show density gains of 11.32% over a comparable system with no lower layer and achieve an overall density of 2.6551 terabits per square inch (Tb/in 2 ).