학술논문

Deep Neural Network-Based Detection and Partial Response Equalization for Multilayer Magnetic Recording
Document Type
Periodical
Source
IEEE Transactions on Magnetics IEEE Trans. Magn. Magnetics, IEEE Transactions on. 57(3):1-12 Mar, 2021
Subject
Fields, Waves and Electromagnetics
Magnetic recording
Equalizers
Magnetic multilayers
Magnetic heads
Switches
Magnetization
Nonhomogeneous media
Convolutional neural network (NN) (CNN)
detection
dual-layer recording
multilayer magnetic recording (MLMR)
partial response equalization
two-dimensional magnetic recording (TDMR)
Viterbi algorithm (VA)
Language
ISSN
0018-9464
1941-0069
Abstract
To increase the storage capacity limit of magnetic recording channels, recent studies proposed multilayer magnetic recording (MLMR): the vertical stacking of magnetic media layers. MLMR readback waveforms consist of the superposition of signals from each layer recovered by a read head placed above the upper layer. This article considers the problem of equalization and detection for MLMR comprising two layers. To this end, we use MLMR waveforms generated using a grain switching probability (GSP) model that is trained on realistic micromagnetic simulations. We propose three systems for equalization and detection. The first is a convolutional neural network (CNN) equalizer followed by an MLMR Viterbi algorithm (VA) for detection. We show that this system outperforms the traditional 2-D linear minimum mean squared error (2-D-LMMSE) equalizer. The second system uses CNNs for equalization and separation of signals from each layer, which is followed by a regular VA. The third system contains CNNs trained to directly provide soft bit estimates. By interfacing the CNN detector with a channel decoder, we show that an areal density gain of 16.2% can be achieved by a two-layer MLMR system over a one-layer system.