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Porous Silica-Based Optoelectronic Elements as Interconnection Weights in Molecular Neural Networks

机译:多孔硅基光电元件作为分子神经网络中的互连权重

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The paper describes a unique approach to optoelectronic elements application in artificial intelligence. Previously we considered molecular neural networks on the base of the functional porous silica thin films. But, for the successful molecular neural network design, we need efficient connections among them. Therefore we are presenting a material with tuneable non-linear optical (NLO) properties to be used for the optical signal transfer. The idea is briefly described and then followed by an experimental part to validate its feasibility. Promising results show that it is possible to design and synthesize the material with tuneable NLO properties.
机译:本文介绍了一种将光电子元件应用于人工智能的独特方法。以前,我们在功能性多孔二氧化硅薄膜的基础上考虑了分子神经网络。但是,为了成功进行分子神经网络设计,我们需要它们之间的有效连接。因此,我们提出了一种具有可调谐非线性光学(NLO)特性的材料,可用于光信号传输。对该概念进行了简要描述,然后进行实验部分以验证其可行性。有希望的结果表明,可以设计和合成具有可调NLO属性的材料。

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