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Programmable current-mode neural network for implementation in analogue MOS VLSI

机译:用于模拟MOS VLSI的可编程电流模式神经网络

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The authors present simple and efficient circuit techniques for the implementation of feedback and feedforward neural networks in analogue MOS VLSI. Synaptic weight storage is achieved using programmable threshold-voltage devices, such as the metal-nitride-semiconductor transistor and the floating-gate MOS transistor. Basic electronic neural functions, such as adaptive weighted summation and sigmoidal nonlinearity functions, are implemented using simple current-mode analogue signal processing building blocks. This is particularly attractive when neural networks of increased complexity are implemented in modern scaled VLSI technologies, where voltage signal handling is severely limited for analogue applications. A four-neuron chip is designed, using the new current-mode building blocks, fabricated and experimentally verified using the MOSIS 2 mu m double-poly, double-metal p-well CMOS process. Intensive computer simulation and experimental results are provided.
机译:作者介绍了用于在模拟MOS VLSI中实现反馈和前馈神经网络的简单有效的电路技术。突触权重存储可通过使用可编程阈值电压器件(例如金属氮化物半导体晶体管和浮栅MOS晶体管)来实现。基本的电子神经函数,例如自适应加权求和和S形非线性函数,是使用简单的电流模式模拟信号处理构件来实现的。当在现代规模化的VLSI技术中实现复杂度不断提高的神经网络时,这尤其有吸引力,因为电压信号处理严重限制了模拟应用。使用新的电流模式构件设计了一个四神经元芯片,并使用MOSIS 2微米双多晶硅双金属p阱CMOS工艺制造并进行了实验验证。提供了密集的计算机仿真和实验结果。

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