基于C3Map和ARPSO的节能规则三维NoC架构映射算法

Kartikeya Bhardwaj, P. Mane
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引用次数: 13

摘要

将知识产权(IP)核映射到片上网络(NoC)架构是基于片上网络设计的关键步骤。在这种设计中,能量、带宽和延迟是需要优化的关键参数。在本文中,我们提出了集中式三维映射(C3Map),使用一种新的八面体遍历技术和基于吸引-排斥粒子群优化(ARPSO)的算法将IP核映射到三维NoC架构上。这些算法有效、准确地探索了多目标NoC设计空间。为了得到Pareto最优IP映射,我们将IP映射表述为代价函数的最小化。我们还建议将ARPSO与已知的确定性技术进行杂交。我们在实际应用和E3S基准测试中评估了C3Map和ARPSO混合算法。实验结果证明了C3Map的效率和有效性,与已知技术相比,C3Map的通信能量和延迟分别降低了19.51%至25.81%和24.15%至31.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
C3Map and ARPSO based mapping algorithms for energy-efficient regular 3-D NoC architectures
Mapping of Intellectual Property (IP) cores onto Network-on-Chip (NoC) architectures is a key step in NoC-based designs. Energy, bandwidth, and latency are the key parameters that need to be optimized in such designs. In this paper, we propose Centralized 3-D Mapping (C3Map) using a new octahedral traversal technique and Attractive-Repulsive Particle Swarm Optimization (ARPSO) based algorithms for mapping IP cores onto 3-D NoC architectures. These algorithms efficiently and accurately explore the multi-objective NoC design space. We formulate the IP mapping as minimization of a cost function in order to obtain Pareto optimal IP mappings. We also propose hybridization of ARPSO with known deterministic techniques. We evaluate the proposed C3Map and ARPSO based hybrid algorithms for real-life applications and E3S benchmarks. The experimental results demonstrate the efficiency and effectiveness of C3Map as we achieved significant reduction in communication energy and latency, i.e. 19.51% to 25.81% and 24.15% to 31.21% respectively w.r.t. the known techniques.
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