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Interconnection strengths and injected currents of a Hopfield neural net applied to an adaptive linear combiner

机译:应用于自适应线性组合器的Hopfield神经网络的互连强度和注入电流

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Mathematical expressions for the interconnection strengths and injected currents of a Hopfield type neural network are derived for the case where the network is expected to perform as an adaptive algorithm of an adaptive linear combiner (adaline). It is shown that the performance of the neural network is theoretically optimum. The problem is basically a quadratic programming one, and it is shown that the proposed neural network solution can be used for both cases where the variables are unconstrained and binary constrained. A representative application is given in the form of a simulation of a FIR filter.
机译:对于希望将网络用作自适应线性组合器(自适应)的自适应算法的情况,推导了Hopfield型神经网络的互连强度和注入电流的数学表达式。结果表明,神经网络的性能在理论上是最佳的。该问题基本上是二次编程问题,并且表明所提出的神经网络解决方案可用于变量不受约束和二进制受约束的两种情况。代表性的应用是以FIR滤波器的仿真形式给出的。

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