Dynamically Reconfigurable Hardware for Evolving Bio-Inspired Architectures

A. Upegui
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引用次数: 5

Abstract

During the last few years, reconfigurable computing devices have experienced an impressive development in their resource availability, speed, and configurability. Currently, commercial FPGAs offer the possibility of self-reconfiguring by partially modifying their configuration bit-string, providing high architectural flexibility, while guaranteeing high performance. On the other hand, we have bio-inspired hardware, a large research field taking inspiration from living beings in order to design hardware systems, which includes diverse approaches like evolvable hardware, neural hardware, and fuzzy hardware. Living beings are well known for their high adaptability to environmental changes, featuring very flexible adaptations at several levels. Bio-inspired hardware systems require such flexibility to be provided by the hardware platform on which the system is implemented. Even though some commercial FPGAs provide enhanced reconfigurability features such as partial and dynamic reconfiguration, their utilization is still in the early stages and they are not well supported by FPGA vendors, thus making their inclusion difficult in existing bio-inspired systems. This chapter presents a set of methodologies and architectures for exploiting the reconfigurability advantages of current commercial FPGAs in the design of bio-inspired hardware systems. Among the presented architectures are neural networks, spiking neuron models, fuzzy systems, cellular automata and Random Boolean Networks.
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动态可重构硬件的进化生物启发架构
在过去几年中,可重构计算设备在资源可用性、速度和可配置性方面取得了令人印象深刻的发展。目前,商业fpga通过部分修改其配置位串来提供自我重新配置的可能性,在保证高性能的同时提供了很高的架构灵活性。另一方面,我们有生物启发硬件,这是一个从生物身上获得灵感来设计硬件系统的大型研究领域,包括各种方法,如可进化硬件,神经硬件和模糊硬件。生物以其对环境变化的高度适应性而闻名,在几个层面上具有非常灵活的适应能力。仿生硬件系统需要实现系统的硬件平台提供这样的灵活性。尽管一些商业FPGA提供了增强的可重构特性,如局部和动态重构,但它们的利用仍处于早期阶段,并且FPGA供应商不支持它们,因此很难将它们包含在现有的仿生系统中。本章介绍了一套方法和架构,用于在设计仿生硬件系统时利用当前商用fpga的可重构性优势。提出的体系结构包括神经网络、脉冲神经元模型、模糊系统、元胞自动机和随机布尔网络。
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