On the impact of interlayer misalignment for dual-layer data detection in three dimensional magnetic recording

IF 2.5 3区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Journal of Magnetism and Magnetic Materials Pub Date : 2024-09-12 DOI:10.1016/j.jmmm.2024.172522
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Abstract

Three-dimensional magnetic recording (3DMR) is a crucial technology for significantly increasing the storage capacity of hard disk drives (HDDs). However, the presence of inter-symbol interference (ISI), intertrack interference (ITI), and interlayer interference (ILI) poses significant challenges to the accurate detection of data stored on multiple layers. This study addresses the impact of interlayer misalignment on the bit error rate (BER) performance in 3DMR systems. We evaluate the performance based on a neural network estimator for reconstructing the top-layer read response signal using feedback from a Viterbi detector. This enables the separation of bottom-layer signals by subtraction from the mixed readback signal. We introduce a dual-layer partial response maximum likelihood (PRML) detector for simultaneous bit retrieval from both layers. Furthermore, we investigate methods of a per-layer binary classifier and a dual-layer four-class classifier based on neural networks. Our study demonstrates the BER performance of these detection schemes influenced by the interlayer misalignment, especially when the offset is 0, 10%, 50%, and 90% of the bit dimensions between the two layers. The results show that the neural network-based reconstruction and separation method achieves better bottom-layer BER performance under a slight interlayer misalignment. The BER performance benefits more from a mild downtrack offset than the crosstrack offset. The neural network-based separation detection and the dual-layer PRML achieve the lowest top-layer BER and the worst bottom-layer BER when the interlayer misalignment is half a bit.

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层间错位对三维磁记录双层数据检测的影响
三维磁记录(3DMR)是大幅提高硬盘(HDD)存储容量的关键技术。然而,符号间干扰(ISI)、磁道间干扰(ITI)和层间干扰(ILI)的存在给多层存储数据的准确检测带来了巨大挑战。本研究探讨了层间错位对 3DMR 系统误码率 (BER) 性能的影响。我们基于神经网络估计器评估性能,该估计器利用维特比检测器的反馈重建顶层读取响应信号。这样就能通过从混合回读信号中减去信号来分离底层信号。我们引入了双层部分响应最大似然(PRML)检测器,可同时从两层进行比特检索。此外,我们还研究了基于神经网络的每层二进制分类器和双层四类分类器的方法。我们的研究表明,这些检测方案的误码率性能受到层间错位的影响,尤其是当两层之间的偏移量分别为比特维度的 0、10%、50% 和 90% 时。结果表明,基于神经网络的重构和分离方法在轻微的层间错位情况下取得了更好的底层误码率性能。与串行偏移相比,轻微的下行偏移更有利于提高误码率性能。当层间错位为半比特时,基于神经网络的分离检测和双层 PRML 实现了最低的顶层误码率和最差的底层误码率。
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来源期刊
Journal of Magnetism and Magnetic Materials
Journal of Magnetism and Magnetic Materials 物理-材料科学:综合
CiteScore
5.30
自引率
11.10%
发文量
1149
审稿时长
59 days
期刊介绍: The Journal of Magnetism and Magnetic Materials provides an important forum for the disclosure and discussion of original contributions covering the whole spectrum of topics, from basic magnetism to the technology and applications of magnetic materials. The journal encourages greater interaction between the basic and applied sub-disciplines of magnetism with comprehensive review articles, in addition to full-length contributions. In addition, other categories of contributions are welcome, including Critical Focused issues, Current Perspectives and Outreach to the General Public. Main Categories: Full-length articles: Technically original research documents that report results of value to the communities that comprise the journal audience. The link between chemical, structural and microstructural properties on the one hand and magnetic properties on the other hand are encouraged. In addition to general topics covering all areas of magnetism and magnetic materials, the full-length articles also include three sub-sections, focusing on Nanomagnetism, Spintronics and Applications. The sub-section on Nanomagnetism contains articles on magnetic nanoparticles, nanowires, thin films, 2D materials and other nanoscale magnetic materials and their applications. The sub-section on Spintronics contains articles on magnetoresistance, magnetoimpedance, magneto-optical phenomena, Micro-Electro-Mechanical Systems (MEMS), and other topics related to spin current control and magneto-transport phenomena. The sub-section on Applications display papers that focus on applications of magnetic materials. The applications need to show a connection to magnetism. Review articles: Review articles organize, clarify, and summarize existing major works in the areas covered by the Journal and provide comprehensive citations to the full spectrum of relevant literature.
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