遗传算法硬件实现的通用体系结构

Tatsuhiro Tachibana, Y. Murata, N. Shibata, K. Yasumoto, Minoru Ito
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引用次数: 30

摘要

本文提出了一种在fpga上灵活实现各种问题的遗传算法的技术。为此,作者提出了一种通用的遗传算法体系结构。所提出的架构允许设计人员轻松地将GA作为由执行GA操作的并行管道组成的硬件电路来实现。所提出的架构是可扩展的,可以增加并行管道的数量。该架构适用于各种问题,并允许设计人员估计所得到电路的大小。作者给出了一个根据给定参数预测电路尺寸的模型。基于所提出的方法,作者已经实现了一个工具,以方便遗传电路的设计和开发。通过对背包问题和旅行商问题(TSP)的实验,作者表明,基于该方法合成的FPGA电路比PC上的软件实现运行速度更快,功耗更低,并且该模型能够准确地预测所合成电路的尺寸
本文章由计算机程序翻译,如有差异,请以英文原文为准。
General Architecture for Hardware Implementation of Genetic Algorithm
In this paper, the authors propose a technique to flexibly implement genetic algorithms (GAs) for various problems on FPGAs. For the purpose, the authors propose a common architecture for GA. The proposed architecture allows designers to easily implement a GA as a hardware circuit consisting of parallel pipelines which execute GA operations. The proposed architecture is scalable to increase the number of parallel pipelines. The architecture is applicable to various problems and allows designers to estimate the size of resulting circuits. The authors give a model for predicting the size of resulting circuits from given parameters. Based on the proposed method, the authors have implemented a tool to facilitate GA circuit design and development. Through experiments using knapsack problem and traveling salesman problem (TSP), the authors show that the FPGA circuits synthesized based on the proposed method run much faster and consume much lower power than software implementation on a PC and the model can predict the size of the resulting circuit accurately enough
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