R&D: Convolutional Neural Network Based Symbol Detector for 2D Magnetic Recording
Alternate ConvNet architecture reduces network complexity by about 74%, yet results in only 2% decrease in density compared to best performing detector.
This is a Press Release edited by StorageNewsletter.com on March 30, 2021 at 2:31 pmIEEE Transactions on Magnetics has published an article written by Jinlu Shen, Benjamin J. Belzer, Krishnamoorthy Sivakumar, School of Electrical Engineering and Computer Science, Washington State University, Pullman, WA, USA, Kheong Sann Chan, Nanjing Institute of Technology, Nanjing, China, and Ashish James, Institute for Infocomm Research, A*STAR, Singapore.
Abstract: “Data detection in magnetic recording (MR) channels can be viewed as an image processing problem, proceeding from the 2-D image of readback bits, to higher level abstractions of features using convolutional layers that finally allow classification of individual bits. In this work, convolutional neural networks (ConvNets) are employed in place of the typical partial response equalizer and maximum-likelihood detector with noise prediction to directly process the un-equalized readback signals and output soft estimates. Several variations of ConvNets are compared in terms of network complexity and performance. The best performing ConvNet detector with two convolutional layers provides a data storage density of up to 3.7489 Terabits/in 2 on a low track pitch two-dimensional MR channel simulated with a grain-flipping-probability (GFP) model. An alternate ConvNet architecture reduces the network complexity by about 74%, yet results in only a 2.09% decrease in density compared to the best performing detector.“