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首页> 外文期刊>IEEE Transactions on Neural Networks >A CMOS feedforward neural-network chip with on-chip parallel learning for oscillation cancellation
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A CMOS feedforward neural-network chip with on-chip parallel learning for oscillation cancellation

机译:具有用于振荡消除的片上并行学习的CMOS前馈神经网络芯片

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摘要

The paper presents a mixed signal CMOS feedforward neural-network chip with on-chip error-reduction hardware for real-time adaptation. The chip has compact on-chip weighs capable of high-speed parallel learning; the implemented learning algorithm is a genetic random search algorithm: the random weight change (RWC) algorithm. The algorithm does not require a known desired neural network output for error calculation and is suitable for direct feedback control. With hardware experiments, we demonstrate that the RWC chip, as a direct feedback controller, successfully suppresses unstable oscillations modeling combustion engine instability in real time.
机译:本文提出了一种混合信号CMOS前馈神经网络芯片,该芯片具有用于实时自适应的片上减少错误的硬件。该芯片具有紧凑的片上重量,能够进行高速并行学习;实现的学习算法是遗传随机搜索算法:随机权重变化(RWC)算法。该算法不需要已知的所需神经网络输出即可进行误差计算,并且适用于直接反馈控制。通过硬件实验,我们证明了RWC芯片作为直接反馈控制器能够成功地实时抑制建模内燃机不稳定的不稳定振荡​​。

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