Analog VLSI implementation of a neural network with competitive learning

F. Pelayo, A. Prieto, B. Pino, P. Martín-Smith
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引用次数: 9

Abstract

An analog VLSI implementation of a neural network is presented which has been designed for use in clustered systems with competitive learning. The circuit implements an inhibitory cluster that includes the winner-unit computation. The synaptic weights are externally alterable asynchronously with network operation. A test chip has been designed with the rules of a 2- mu m CMOS process which shows high integration density (about 200 synaptic connections per square millimeter). Simulation results and VLSI realization details of different modules comprised in the chip are also presented.<>
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模拟VLSI实现的一个具有竞争性学习的神经网络
提出了一种神经网络的模拟VLSI实现,该实现被设计用于具有竞争学习的集群系统。该电路实现了包含赢家单元计算的抑制簇。突触权值随网络运行异步变化。采用2 μ m CMOS工艺设计了高集成度(每平方毫米约200个突触连接)的测试芯片。给出了芯片中不同模块的仿真结果和VLSI实现细节。
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Cellular neural network design using a learning algorithm Accurate design of analog CNN in CMOS digital technologies A possible transformation of the fully connected neural nets into partially connected networks The non-idealities of the IC-realization and the stability of CNN-networks Realization of CNNs by optical parallel processing with spatial light valves
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