Analog weight adaptation hardware
作者:A. J. Annema, H. Wallinga
摘要
The demands on offsets in analog weight adaptation circuitry are very high for onchip learning feed-forward neural networks using a back-propagation type of learning rule. Exceeding of the specifications for weight adaptation offsets prevents the weights from converging to their optimum, which leads to a significantly degraded learning behavior. This letter presents a circuit, including a tuning system, that minimizes weight adaptation offsets and that can be used to implement analog on-chip back-propagation learning feed-forward neural networks.
论文关键词:Neural Network, Artificial Intelligence, Complex System, Nonlinear Dynamics, Learning Rule
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论文官网地址:https://doi.org/10.1007/BF02311572