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Analog circuit design and implementation of an adaptive resonance theory (ART) neural network architecture

机译:模拟电路设计和自适应共振理论(ART)神经网络架构的实现

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Abstract: This paper presents an analog circuit implementation for an adaptive resonance theory neural network architecture, called the augmented ART-1 neural network (AART1-NN). The AART1-NN is a modification of the popular ART1-NN, developed by Carpenter and Grossberg, and it exhibits the same behavior as the ART1-NN. The AART1-NN is a real-time model, and has the ability to classify an arbitrary set of binary input patterns into different clusters. The design of the AART1-NN model. The circuit is implemented by utilizing analog electronic components, such as, operational amplifiers, transistors, capacitors, and resistors. The implemented circuit is verified using the PSpice circuit simulator, running on Sun workstations. Results obtained from the PSpice circuit simulation compare favorably with simulation results produced by solving the differential equations numerically. The prototype system developed here can be used as a building block for larger AART1-NN architectures, as well as for other types of ART architectures that involve the AART1-NN model.!3
机译:摘要:本文提出了一种用于自适应共振理论神经网络架构的模拟电路实现,称为增强ART-1神经网络(AART1-NN)。 AART1-NN是由Carpenter和Grossberg开发的流行的ART1-NN的修改,并且表现出与ART1-NN相同的行为。 AART1-NN是一个实时模型,能够将任意一组二进制输入模式分类到不同的群集中。 AART1-NN模型的设计。该电路是利用模拟电子元件实现的,例如运算放大器,晶体管,电容器和电阻器。使用在Sun工作站上运行的PSpice电路模拟器验证了已实现的电路。从PSpice电路仿真获得的结果与通过数值求解微分方程产生的仿真结果相比具有优势。此处开发的原型系统可以用作较大的AART1-NN体系结构以及涉及AART1-NN模型的其他类型ART体系结构的构建基块!3

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