Title :
Area-Efficient Scalable MAP Processor Design for High-Throughput Multistandard Convolutional Turbo Decoding
Author :
Lin, Chen-Hung ; Chen, Chun-Yu ; An-Yeu Wu
Author_Institution :
Grad. Inst. of Electron. Eng., Nat. Taiwan Univ., Taipei, Taiwan
Abstract :
Most of advanced wireless standards, such as WiMAX and LTE, have adopted different convolutional turbo code (CTC) schemes with various block sizes and throughput rates. Thus, a reconfigurable and scalable hardware accelerator for multistandard CTC decoding is necessary. In this paper, we propose scalable maximum a posteriori algorithm (MAP) processor designs which can support both single-binary (SB) and double-binary (DB) CTC decoding, and handle arbitrary block sizes for high throughput CTC decoding. We first propose three combinations of parallel-window (PW) and hybrid-window (HW) MAP decoding. Moreover, the computational modules and storages of the dual-mode (SB/DB) MAP decoding are designed to achieve a high area utilization. To verify the proposed approaches, a 1.28 mm 2 dual-mode 2PW-1HW MAP processor is implemented in 0.13 μ m CMOS process. The prototyping chip achieves a maximum throughput rate of 500 Mb/s at 125 MHz with an energy efficiency of 0.19 nJ/bit and an area efficiency of 3.13 bits/mm2 . For the multistandard systems, the expected throughput rates of the WiMAX and LTE CTC schemes is achieved by using five dual-mode 2PW-1HW MAP processors.
Keywords :
CMOS integrated circuits; Long Term Evolution; WiMax; convolutional codes; maximum likelihood decoding; turbo codes; DB CTC decoding; LTE; SB CTC decoding; WiMAX; area-efficient scalable MAP processor design; double-binary CTC decoding; dual-mode 2PW-1HW MAP processor; dual-mode MAP decoding; hardware accelerator; high-throughput multistandard convolutional turbo decoding; hybrid-window MAP decoding; multistandard systems; parallel-window MAP decoding; scalable maximum a posteriori algorithm; single-binary CTC decoding; size 0.13 mum; wireless standards; Maximum a posteriori algorithm (MAP); multistandard platform; turbo codes;
Journal_Title :
Very Large Scale Integration (VLSI) Systems, IEEE Transactions on
DOI :
10.1109/TVLSI.2009.2032553