时变细胞神经网络模拟实现

N.K. Al-Ani, Noor Aldin Addel, Laith Khalid Kharbully
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引用次数: 1

摘要

提出了一种用于优化和图像处理的可编程细胞神经网络的设计方法和实现方法。时变单元增益(TVCNN)“硬件退火”也嵌入到网络中。实验结果表明,该系统具有较好的全局寻优能力。单元增益作为退火控制信号采用连续可调MOS放大器实现。用于此功能的可调放大器结合了有源输入和可调节级联输出。TVCNN的提案设计方法将同时采用电压模式和电流模式的概念来实现,在我们的实施决策中有成本和速度的概念。实验仿真结果表明,该方法对标准CMOS技术下的实时信号和图像处理是有效的。它在输入范围内提供了很高的精度。以优化任务为例,给出了确定晶体管尺寸和元件值等可设计参数值的解析公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Varying Cellular Neural Networks Analogue Realization
A design method and implementation of a programmable cellular neural network for optimization and image processing applications is presented. The time-varying cell gain (TVCNN) "hardware annealing" is also embedded in the network. The test of such a system showed highly efficient in finding globally the optimal solutions for cellular neural networks. The cell gain as an annealing control signal is implemented by using a continuously adjustable MOS amplifier. The adjustable amplifier that used for this function combines an active input and a regulated cascade output. The proposal design method of TVCNN will be implemented by applying both the voltage-mode and current-mode concepts to have an idea of cost and speed in our implementation decision. Experimental simulation shows that the proposed approach is effective for real-time signal and image processing using standard CMOS technology. It offers a high accuracy over an input range. The analytical formulas for determination the values of designable parameters as a transistor sizes and component values are illustrated by an example of optimization task.
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