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首页> 外文期刊>IEEE Transactions on Electron Devices >Hardware implementation of a 'wired-once' neural net in thin-film technology on a glass substrate
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Hardware implementation of a 'wired-once' neural net in thin-film technology on a glass substrate

机译:在玻璃基板上采用薄膜技术的“一次成型”神经网络的硬件实现

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摘要

To prove the feasibility of implementing artificial neural networks on large inexpensive substrates, a net designed and fabricated on a glass wafer using hydrogenated-amorphous-silicon-based technology (a-Si:H) is discussed. The net functions as an autoassociative memory in which binary numbers corresponding to 28, 56, 112, and 224 are stored. Learning of the weight matrix is carried out with the associative memory algorithm using the delta rule. Phosphorus-doped microcrystalline silicon with a resistivity of 100 to 300 Omega -cm was used for the fabrication of the weight (synapse) resistors. Inverters with a beta of one were used to form negative-weight synapses, and inverters with a beta of 10 were used for the thresholding elements (neurons). The net functions surprisingly well; it filters both the learned numbers and some numbers of the form N=4k (with k an integer), and maps other random numbers to the closest one accepted, even though the experimental weight matrix is not identical to the theoretical one.
机译:为了证明在大型廉价基板上实施人工神经网络的可行性,讨论了使用氢化非晶硅基技术(a-Si:H)在玻璃晶圆上设计和制造的网络。网络用作自动关联存储器,其中存储了与28、56、112和224相对应的二进制数。权重矩阵的学习是使用delta规则通过关联记忆算法进行的。使用电阻率为100至300Ω-cm的掺磷微晶硅来制造重量(突触)电阻器。 beta为1的反相器用于形成负重突触,而beta为10的反相器用作阈值元素(神经元)。网络功能异常好;它会过滤学习到的数字和一些形式为N = 4k(k为整数)的数字,并将其他随机数映射到最接近的一个随机数,即使实验权重矩阵与理论值不相同。

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