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Neural network with weight adjustment based on prior history of input signals

机译:具有基于输入信号先验历史的权重调整的神经网络

摘要

A dynamically stable associative learning neural network system include a plurality of synapses and a non-linear function circuit and includes an adaptive weight circuit for adjusting the weight of each synapse based upon the present signal and the prior history of signals applied to the input of the particular synapse and the present signal and the prior history of signals applied to the input of a predetermined set of other collateral synapses. A flow-through neuron circuit embodiment includes a flow-through synapse having a predetermined fixed weight. A neural network is formed employing neuron circuits of both the above types. A set of flow-through neuron circuits are connected by flow- through synapses to form separate paths between each input terminal and a corresponding output terminal. Other neuron circuits having only adjustable weight synapses are included within the network. This neuron network is initialized by setting the adjustable synapses at some value near the minimum weight. The neural network is taught by successively application of sets of inputs signals to the input terminals until a dynamic equilibrium is reached.
机译:一种动态稳定的联想学习神经网络系统,包括多个突触和一个非线性函数电路,并包括一个自适应加权电路,用于根据当前信号和施加到神经元输入的先验信号历史来调整每个突触的权重。特定的突触和当前信号以及信号的先验历史应用于输入的一组其他附带突触的预定集合。流通神经元电路实施例包括具有预定固定权重的流通突触。使用上述两种类型的神经元电路形成神经网络。一组直通神经元电路通过直通突触连接,以在每个输入端子和相应的输出端子之间形成单独的路径。网络中还包括其他仅具有可调整的权重突触的神经元电路。通过将可调整的突触设置为接近最小权重的某个值来初始化此神经元网络。通过连续将输入信号集施加到输入端子,直到达到动态平衡,来教授神经网络。

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