首页> 外国专利> Signal processing complex components in multilayer neural network - having differentiable complex transition function associated at each network with weighted complex synapses during learning phase

Signal processing complex components in multilayer neural network - having differentiable complex transition function associated at each network with weighted complex synapses during learning phase

机译:多层神经网络中的信号处理复杂组件-在学习阶段,每个网络具有可加权的复杂突触与可微分的复杂过渡函数

摘要

During the learning phase of the signal processing, the neural network is configured according to a stochastic gradient method applied to a domain of complex signals. Real and imaginary parts with parameters (i,j,k) are taken at the ith neuron in the kth layer and the jth neuron in the (k-1)th layer. Each part of the error function is modified by a gradient term weighted by a learning speed factor. Each is adjusted by subtracting the partial differential in the error function with respect to the said part multiplied by the weighting factor. The weighting factor is calculated by increasing its value progressively until the error then increases followed by a fine adjustment. USE/ADVANTAGE - Complex signal processing, phase modulation, modulation in quadrature, radar. Non-linear processing, reduced errors.
机译:在信号处理的学习阶段,神经网络是根据应用于复杂信号域的随机梯度方法配置的。具有参数(i,j,k)的实部和虚部在第k层的第i个神经元和第(k-1)层的第j个神经元处获取。误差函数的每个部分都由通过学习速度因子加权的梯度项进行修改。通过减去相对于所述部分的误差函数中的偏微分乘以加权因子来调整每个。加权因子的计算方法是逐渐增加其值,直到误差增加,然后进行细调。使用/优势-复杂信号处理,相位调制,正交调制,雷达。非线性处理,减少错误。

著录项

  • 公开/公告号FR2696601A1

    专利类型

  • 公开/公告日1994-04-08

    原文格式PDF

  • 申请/专利权人 THOMSON CSF;

    申请/专利号FR19920011815

  • 发明设计人 VIGOUROUX JEAN-RONAN;BUREL GILLES;

    申请日1992-10-06

  • 分类号H04B3/14;H04B7/005;H04L1/00;G01S13/00;

  • 国家 FR

  • 入库时间 2022-08-22 04:33:41

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