Neural Networks Input Techniques to Maintain a Small Skew Angle in Bit-Patterned Magnetic Recording with a V-Shaped Read-Head Array

K. A. Fatika, S. Koonkarnkhai, P. Kovintavewat, C. Warisarn
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Abstract

The demand for enormous storage devices has kept increasing, leading to the development of various advanced technologies with a vast storage capacity. Extensive numbers of related research studies have been aiming at optimizing code design and algorithms analytically; however, enacting them on practical devices has been scarce. Achieving this demand might bring some obstacles called two-dimensional interference and skew angle (SA). To meet the challenge of the obstacle, we propose a SA detection method for bit-patterned magnetic recording systems by computing a specific target by three readback sequences before estimating the SA value and detecting the SA amount happening in the system using an application of neural network namely multilayer perceptron. An error correction code, low-density parity-check, is applied, and its decoder outputs a log-likelihood ratio whose probability density distribution is examined. The simulation results show that the sliding window technique can significantly provide a better bit error rate performance.
v形读头阵列位模式磁记录中保持小倾斜角的神经网络输入技术
对海量存储设备的需求不断增加,导致各种具有海量存储容量的先进技术不断发展。大量的相关研究旨在分析优化代码设计和算法;然而,在实际设备上实现它们的机会很少。实现这一要求可能会带来一些障碍,称为二维干涉和偏角(SA)。为了应对这一障碍的挑战,我们提出了一种位模式磁记录系统的SA检测方法,该方法通过三个回读序列计算特定目标,然后使用多层感知器即神经网络来估计系统中的SA值并检测系统中发生的SA量。应用了一种纠错码,即低密度奇偶校验,其解码器输出一个对数似然比,该似然比的概率密度分布被检查。仿真结果表明,滑动窗口技术可以显著提高误码率。
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