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Dynamic Grain State Estimation for High-Density TDMR: Progress and Future Directions

机译:高密度TDMR的动态晶粒态估计:进展和未来方向

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Dynamic grain state estimation (DGSE) algorithms for 2-D magnetic recording (TDMR) employ probabilistic message-passing algorithms that jointly estimate magnetic grain configurations and coded data bits, in order to iteratively assist channel decoding. At high densities (e.g., between 1 and 3 magnetic grains per coded bit), occasionally, a bit will not be written on any grain, and hence will effectively be overwritten (or erased) by bits on surrounding grains. DGSE enables the detection of overwritten bits so that their log-likelihood ratios are assigned small magnitudes, effectively making them erasures, which are easily filled in by linear channel codes. Past papers employing Bahl-Cocke-Jelinek-Raviv-based detectors on a simple four-rectangular-grain model have shown that the DGSE is surprisingly resilient to mismatch between the detector’s assumed grain model and the actual model generating the data. This paper presents a novel DGSE–TDMR detector based on the generalized belief propagation (GBP) algorithm. The new detector employs a random discretized-nuclei Voronoi grain model. Simulation results show that the GBP-based TDMR turbo-detector accurately detects the overwritten bits and that it achieves low decoded bit error rates at densities as high as 0.4966 user bits per grain.
机译:用于2D磁记录(TDMR)的动态晶粒状态估计(DGSE)算法采用概率消息传递算法,该算法共同估算磁晶粒配置和编码数据位,以便迭代地辅助信道解码。在高密度下(例如,每个编码位在1到3个磁性颗粒之间),有时不会在任何颗粒上写入一个位,因此将被周围颗粒上的位有效地覆盖(或擦除)。 DGSE使得能够检测出被覆盖的比特,从而为它们的对数似然比分配较小的幅度,从而有效地进行擦除,这些擦除很容易由线性信道代码填充。过去的论文在简单的四矩形颗粒模型上使用基于Bahl-Cocke-Jelinek-Raviv的探测器,表明DGSE令人惊讶地具有弹性,可以使探测器的假定颗粒模型与生成数据的实际模型不匹配。本文提出了一种基于广义置信传播(GBP)算法的新型DGSE–TDMR检测器。新的探测器采用了随机离散核Voronoi晶粒模型。仿真结果表明,基于GBP的TDMR涡轮检测器可以准确地检测出被覆盖的比特,并且以高达每粒子0.4966用户比特的密度实现了较低的解码比特误码率。

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