학술논문

Reduced Complexity Neural Network Equalizers for Two-Dimensional Magnetic Recording
Document Type
Periodical
Source
IEEE Transactions on Magnetics IEEE Trans. Magn. Magnetics, IEEE Transactions on. 59(3):1-8 Mar, 2023
Subject
Fields, Waves and Electromagnetics
Equalizers
Complexity theory
Detectors
Magnetic recording
Artificial neural networks
Neural networks
Magnetic heads
Equalization
neural network (NN)
reduced complexity
two-dimensional magnetic recording (TDMR)
Language
ISSN
0018-9464
1941-0069
Abstract
This article investigates the reduced complexity neural network (NN)-based architectures for equalization over the two-dimensional magnetic recording (TDMR) digital communication channel for data storage. We use realistic waveforms measured from a hard disk drive (HDD) with TDMR technology. We show that the multilayer perceptron (MLP) nonlinear equalizer achieves a 10.91% reduction in bit error rate (BER) over the linear equalizer with cross-entropy (CE)-based optimization. However, the MLP equalizer’s complexity is $6.6\times $ the linear equalizer’s complexity. Thus, we propose the reduced complexity MLP (RC-MLP) equalizers. Each RC-MLP variant consists of finite-impulse response (FIR) filters, a nonlinear activation, and a hidden delay line. A proposed RC-MLP variant entails only $1.59\times $ the linear equalizer’s complexity while achieving a 8.23% reduction in BER over the linear equalizer.