A modified RBF neural network for efficient current-mode VLSI implementation

R. Dogaru, A. Murgan, S. Ortmann, M. Glesner
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引用次数: 40

Abstract

A modified RBF neural network model is proposed allowing efficient VLSI implementation in both analog or digital technology. This model is based essentially on replacing the standard Gaussian basis function with a piece-wise linear one and on using a fast allocation unit learning algorithm for determination of unit centers. The modified RBF approximates optimally Gaussians for the whole range of parameters (radius and distance). The learning algorithm is fully on-line and easy to be implemented in VLSI using the proposed neural structures for on-line signal processing tasks. Applying the standard test problem of the chaotic time series prediction, the functional performances of different RBF networks were compared. Experimental results show that the proposed architecture outperforms the standard RBF networks, the main advantages being related with low hardware requirements and fast learning while the learning algorithm can be also efficient embedded in silicon. A suggestion for current-mode implementation is presented together with considerations regarding the computational requirements of the proposed model for digital implementations.
基于改进RBF神经网络的高效电流模VLSI实现
提出了一种改进的RBF神经网络模型,可以在模拟或数字技术下实现高效的VLSI。该模型本质上是基于用分段线性基函数代替标准高斯基函数,并使用快速分配单元学习算法来确定单元中心。改进的RBF对整个参数范围(半径和距离)最优逼近高斯分布。该学习算法是完全在线的,并且易于在超大规模集成电路中使用所提出的神经结构来实现在线信号处理任务。应用混沌时间序列预测的标准测试问题,比较了不同RBF网络的功能性能。实验结果表明,该结构优于标准RBF网络,主要优点是硬件要求低,学习速度快,学习算法可以高效嵌入到芯片中。提出了电流模式实现的建议,并考虑了所提出的模型对数字实现的计算要求。
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