Latency-aware mapping for 3D NoC using rank-based multi-objective genetic algorithm

Three dimensional network-on-chip (3D NoC) has been suggested as a potential alternative to solve insurmountable problems in 2D field such as global wire length and packet latency for many years. And the mapping problem plays an import role in 3D NoC design which will have a great influence on overa...

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Hauptverfasser: Jiawen Wang, Li Li, Hongbing Pan, Shuzhuan He, Rong Zhang
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:Three dimensional network-on-chip (3D NoC) has been suggested as a potential alternative to solve insurmountable problems in 2D field such as global wire length and packet latency for many years. And the mapping problem plays an import role in 3D NoC design which will have a great influence on overall system performance. In this paper, we mainly focus on the latency-aware mapping for 3D NoC. Differing from the conventional mapping algorithms, the packet latency under no congestion and congestion are both taken into account. Since more than one metrics are considered in this situation, instead of the traditional single-objective genetic algorithm, a rank-based multi-objective genetic algorithm (RMGA) is adopted in our work to explore the optimal approximation of the Pareto-front efficiently and accurately. To evaluate the proposed algorithm, the video object plane decoder (VOPD) is used as a case study. The results show that the RMGA can obtain the approximate Pareto-front well and compared with the best results chosen from random generated solutions, the RMGA can achieve an improvement of 24.4% and 15.4% for latency metrics under no congestion and congestion respectively.
ISSN:2162-7541
2162-755X
DOI:10.1109/ASICON.2011.6157209