基于混合多群优化的NoC合成

Muhammad Obaidullah, G. Khan
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引用次数: 2

摘要

片上网络(NoC)已被提出作为连接片上系统(SoC)的大量核心的互连框架。假设基于网格的NoC,我们探索了将核心分配到交叉点,并产生了具有最小平均通信流量,功耗和芯片面积的最佳NoC配置。我们使用预合成的网络组件数据来估计NoC的功耗和芯片面积。NoC配置和映射问题属于NP-hard复杂性集,因此我们提出了一种结合禁忌搜索、力定向交换、子群和离散粒子群优化(DPSO)的混合群优化方案。优化的主要目标是配置NoC,使总NoC延迟、功耗和占用的面积最小。采用DPSO作为主要的优化方案,并对其进行了修改,使每个粒子的移动也受到NoC交通矩阵中导出的力的影响。该方法在一些多媒体应用核心图和随机生成核心的大型网络中进行了测试。与现有的NoC合成算法相比,平均而言,我们的混合技术需要更少的迭代次数和时间来达到最优解。
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Hybrid multi-swarm optimization based NoC synthesis
Network-on-Chip (NoC) has been proposed as an interconnection framework for connecting large number of cores for a System-on-Chip (SoC). Assuming a mesh-based NoC, we explore the assignment of cores to cross-points and produce a best NoC configuration with minimum average communication traffic, power consumption and chip area. We use pre-synthesized network components data to estimate power and chip area of the NoC. NoC configuration and mapping problem belongs to NP-hard complexity set, therefore we propose a hybrid scheme of swarm optimization that combines Tabu-search, force-directed swapping, sub-swarms, and Discrete Particle Swarm Optimization (DPSO). The main goal of the optimization is to configure the NoC such that the total NoC latency, power consumption, and area occupied are minimal. DPSO is used as the main optimization scheme and modified so that each particle move is also influenced by a force derived from the NoC traffic matrix. The methodology is tested for some multimedia application core graphs as well as large network of randomly generated cores. It is determined that on average our hybrid technique required less number of iterations and time to reach an optimal solution when compared with existing NoC synthesis algorithms.
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