Nanocomputing with delays

J. Fortes
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引用次数: 1

Abstract

The push to obtain smaller and denser circuits solely based on lithography and silicon technology is quickly reaching limits imposed by device physics and processing technology. It is anticipated that these limits will invalidate Moore's law and lead to unacceptable manufacturing costs, unreliable devices, and hard-to-manage power dissipation and interconnect problems. Nanotechnologies that rely on self-assembly, biomolecular components, and nanoelectronics are promising alternatives to silicon-based microelectronics. They will eventually enable levels of integration that exceed that of today's silicon-based microelectronics by three orders of magnitude. These nascent technologies present intriguing challenges and exciting opportunities to use biologically inspired solutions to address system architecture questions. This paper discusses recent results of an ongoing collaborative research effort by nanotechnologists, neurocomputing experts, and computer and circuit designers to explore novel architectures for nanoscale neuromorphic systems. The focus is placed on implementations whose behavior depends on how propagation delays affect communication among system components. The components under consideration are reminiscent of spiking neurons and, unlike in classical systems, interconnect is used for computation as well as communication purposes. Hybrid systems are also briefly discussed.
具有延迟的纳米计算
仅仅基于光刻和硅技术来获得更小、更密集的电路的努力正迅速达到器件物理和加工技术所施加的极限。预计这些限制将使摩尔定律失效,并导致不可接受的制造成本,不可靠的设备,以及难以管理的功耗和互连问题。纳米技术依赖于自组装、生物分子组件和纳米电子学,是硅基微电子的有前途的替代品。它们最终将使集成水平超过当今硅基微电子的三个数量级。这些新生的技术为使用生物学启发的解决方案来解决系统架构问题提供了有趣的挑战和令人兴奋的机会。本文讨论了纳米技术专家、神经计算专家、计算机和电路设计师为探索纳米级神经形态系统的新架构而进行的合作研究的最新成果。重点放在其行为取决于传播延迟如何影响系统组件之间通信的实现上。考虑中的组件让人想起尖峰神经元,与经典系统不同的是,互联不仅用于通信目的,还用于计算。对混合动力系统也作了简要讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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