首页> 外文会议>International Conference on Modeling Decisions for Artificial Intelligence(MDAI 2007); 20070816-18; Kitakyushu(JP) >Boltzmann Machine Incorporated Hybrid Neural Fuzzy System for Hardware/Software Partitioning in Embedded System Design
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Boltzmann Machine Incorporated Hybrid Neural Fuzzy System for Hardware/Software Partitioning in Embedded System Design

机译:Boltzmann Machine Incorporated混合神经模糊系统在嵌入式系统设计中的软/硬件划分

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摘要

Nowadays one of the most vital problems in embedded system codesign is Hardware/Software (HW/SW) partitioning. Due to roughly assumed parameters in design specification and imprecise benchmarks for judging the solution's quality, embedded system designers have been working on finding a more efficient method for HW/SW partitioning for years. We propose an application of a hybrid neural fuzzy system incorporating Boltzmann machine to the HW/SW partitioning problem. Its architecture and performance estimation against other popular algorithm are evaluated. The simulation result shows the proposed system outperforms other algorithm both in cost and performance.
机译:如今,嵌入式系统代码签名中最重要的问题之一是硬件/软件(HW / SW)分区。由于设计规范中粗略假定的参数以及用于评估解决方案质量的不精确基准,嵌入式系统设计人员多年来一直在寻找一种更有效的硬件/软件分区方法。我们提出将混合玻尔兹曼机的混合神经模糊系统应用于硬件/软件分区问题的应用。针对其他流行算法,评估了其架构和性能评估。仿真结果表明,该系统在成本和性能上均优于其他算法。

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