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Network on Chip Optimization Based on Surrogate Model Assisted Evolutionary Algorithms

机译:基于代理模型辅助进化算法的片上网络优化

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摘要

Network-on-Chip (NoC) design is attracting more and more attention nowadays, but there is a lack of design optimization method due to the computationally very expensive simulations of NoC. To address this problem, an algorithm, called NoC design optimization based on Gaussian process model assisted differential evolution (NDPAD), is presented. Using the surrogate model-aware evolutionary search (SMAS) framework with the tournament selection based constraint handling method, NDPAD can obtain satisfactory solutions using a limited number of expensive simulations. The evolutionary search strategies and training data selection methods are then investigated to handle integer design parameters in NoC design optimization problems. Comparison shows that comparable or even better design solutions can be obtained compared to standard EAs, and much less computation effort is needed.
机译:如今,片上网络(NoC)设计吸引了越来越多的关注,但是由于计算上非常昂贵的NoC模拟,因此缺乏设计优化方法。为了解决这个问题,提出了一种基于高斯过程模型辅助差分进化(NDPAD)的NoC设计优化算法。使用基于模型的替代模型进化搜索(SMAS)框架和基于锦标赛选择的约束处理方法,NDPAD可以使用有限数量的昂贵模拟来获得令人满意的解决方案。然后研究了进化搜索策略和训练数据选择方法,以处理NoC设计优化问题中的整数设计参数。比较表明,与标准EA相比,可以获得相当甚至更好的设计解决方案,并且所需的计算工作更少。

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