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PANTHER: a parallel neuro-systolic architecture for real-time processing

M.I. Patel, Meghna Ranganathan

发表年份
2002
引用次数
4

摘要

In this paper, we describe a parallel neuro-systolic architecture called PANTHER for use in real-time applications. The architecture is a special purpose, backpropagation based linear neural network. The PEs in the array are capable of computing several neural functions. A two-stage sigmoid generator block is used instead of lookup tables as a means for activation function generation. Additionally, reduced precision arithmetic is employed to avoid floating point computation and hardware. The neural network is composed of a linear systolic array of simple PEs that are easily configurable to meet any neural topology. The neural network architecture can be integrated with an expert system in order to realize an intelligent decision making system. Such a system is currently being investigated and some results for the robotic obstacle avoidance problem are reported in this paper. The proposed hardware is expected to yield a response time of 5 ns per decision based on a 200 MHz clock.

关键词

Computer scienceArtificial neural networkSystolic arrayBackpropagationBlock (permutation group theory)Lookup tableSigmoid functionActivation functionTime delay neural networkComputer architecture

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