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The Structures of Optical Neural Nets Based on New Matrix-Tensor Equivalental Models (MTEMs) and Results of Modeling

机译:基于新的矩阵-张量等效模型(MTEM)的光学神经网络的结构和建模结果

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The structures of optical neural nets (NN) based on new matrix-tensor equivalental models (MTEMs) and algorithms are described in this article. MTE models are neuroparadigm of non-iterative type, which is a generalization of Hopfield and Hamming networks. The adaptive multi-layer networks, auto-associative and hetero-associative memory of 2-D images of high order can be built on the basis of MTEMs. The capacity of such networks in comparison with capacity of Hopfield networks is increased (including capacity for greatly correlated images). The results of modeling show that the number of neurons in neural network MTEMs is 10-20 thousand and more. The problems of training of such networks, different modifications, including networks with double adaptive-equivalental auto-weighing of weights, organization of computing process in different modes of network are discussed. The basic components of networks: matrix-tensor "equivalentors" and variants of their realization on the basis of liquid-crystal structures and optical multipliers with spatial and time integration are considered. The efficiency of proposed optical neural networks on the basis of MTEMs is evaluated for both variants on the level of 10~9 connections per second. Modified optical connections are realized as liquid-crystal television screens.
机译:本文介绍了基于新的矩阵张量等效模型(MTEM)和算法的光学神经网络(NN)的结构。 MTE模型是非迭代类型的神经范式,它是Hopfield和Hamming网络的概括。可以在MTEM的基础上构建自适应多层网络,高阶二维图像的自联想和异联想存储。与Hopfield网络的容量相比,此类网络的容量有所增加(包括用于高度相关图像的容量)。建模结果表明,神经网络MTEM中的神经元数量为10-20 000个以上。讨论了这样的网络的训练,不同的修改(包括具有双重自适应对等自动权重的网络),不同网络模式下的计算过程组织等问题。考虑了网络的基本组成部分:矩阵张量“等效器”及其在液晶结构和具有空间和时间积分的光学倍增器的基础上实现的变体。在MTEM的基础上,以每秒10〜9个连接的级别对两种变体的光学神经网络的效率进行了评估。修改的光学连接被实现为液晶电视屏幕。

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  • 来源
    《Optical memory & neural networks》 |2010年第1期|p.31-38|共8页
  • 作者单位

    The Vinnitsa Social Economic Institute of University 'Ukraine', Vinnitsa National Technical University;

    rnThe Vinnitsa Social Economic Institute of University 'Ukraine', Vinnitsa National Technical University;

    rnThe Vinnitsa Social Economic Institute of University 'Ukraine', Vinnitsa National Technical University;

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