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使用比特流的神经网络实现。

Neural network implementation using bit streams.

作者信息

Patel Nitish D, Nguang Sing Kiong, Coghill George G

机构信息

Department of Electrical and Computer Engineering University of Auckland, Auckland 1001, New Zealand.

出版信息

IEEE Trans Neural Netw. 2007 Sep;18(5):1488-504. doi: 10.1109/tnn.2007.895822.

Abstract

A new method for the parallel hardware implementation of artificial neural networks (ANNs) using digital techniques is presented. Signals are represented using uniformly weighted single-bit streams. Techniques for generating bit streams from analog or multibit inputs are also presented. This single-bit representation offers significant advantages over multibit representations since they mitigate the fan-in and fan-out issues which are typical to distributed systems. To process these bit streams using ANNs concepts, functional elements which perform summing, scaling, and squashing have been implemented. These elements are modular and have been designed such that they can be easily interconnected. Two new architectures which act as monotonically increasing differentiable nonlinear squashing functions have also been presented. Using these functional elements, a multilayer perceptron (MLP) can be easily constructed. Two examples successfully demonstrate the use of bit streams in the implementation of ANNs. Since every functional element is individually instantiated, the implementation is genuinely parallel. The results clearly show that this bit-stream technique is viable for the hardware implementation of a variety of distributed systems and for ANNs in particular.

摘要

提出了一种使用数字技术对人工神经网络(ANN)进行并行硬件实现的新方法。信号使用均匀加权的单比特流来表示。还介绍了从模拟或多比特输入生成比特流的技术。这种单比特表示相对于多比特表示具有显著优势,因为它们减轻了分布式系统中典型的扇入和扇出问题。为了使用ANN概念处理这些比特流,已经实现了执行求和、缩放和挤压操作的功能元件。这些元件是模块化的,并且设计得使其能够轻松互连。还提出了两种新的架构,它们充当单调递增的可微非线性挤压函数。使用这些功能元件,可以轻松构建多层感知器(MLP)。两个示例成功展示了比特流在ANN实现中的应用。由于每个功能元件都是单独实例化的,因此该实现是真正并行的。结果清楚地表明,这种比特流技术对于各种分布式系统的硬件实现,特别是对于ANN,是可行的。

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