磁记录介质的高效LDPC编码器设计

D. Theodoropoulos, N. Kranitis, A. Tsigkanos, A. Paschalis
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引用次数: 0

摘要

低密度奇偶校验(LDPC)码被广泛认为是磁记录(MR)介质上前向纠错(FEC)的一种有利选择。然而,到目前为止,绝大多数相关研究都集中在代码设计和算法的分析优化上。尽管低硬件占用的高速编码和解码对MR媒体很重要,但迄今为止,这种编码方案的硬件实现很少。在提出的LDPC码变体中,基于原型的码由于其优异的性能特征和高效的实现,是一个很有前途的选择。在这项工作中,我们利用了我们之前在空间应用中LDPC编码器的架构,并为迄今为止为MR媒体提出的基于原型的LDPC编码提出了高效的编码器设计。所提出的设计以现场可编程门阵列(FPGA)加速器的形式在硬件上实现。在FPGA开发板上演示了所介绍架构的效率,实现了多gbps的吞吐量,足以满足现代MR应用标准。
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Efficient LDPC Encoder Designs for Magnetic Recording Media
Low-Density Parity-Check (LDPC) codes are widely considered an advantageous option for forward error correction (FEC) on magnetic recording (MR) media. The vast majority of related research, however, has so far been focused on the analytical optimization of code design and algorithms. Although high-speed encoding and decoding with low hardware footprint are important for MR media, hardware implementations for such encoding schemes have so far been scarce. Among the proposed LDPC code variants, protograph-based codes are a promising option, because of their excellent performance characteristics and efficient implementation. In this work, we leverage the architecture of our previous work on LDPC encoders for space applications and we propose efficient encoder designs for the protograph-based LDPC codes proposed so far for MR media. The proposed designs are implemented in hardware as Field Programmable Gate Array (FPGA) accelerators. The efficiency of the introduced architectures is demonstrated on an FPGA development board, achieving multi-Gbps throughput, adequate for modern MR application standards.
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