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Instantaneous Gradient Based Dual Mode Feed-Forward Neural Network Blind Equalization Algorithm

机译:基于瞬时梯度的双模前馈神经网络盲均衡算法

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To further improve the performance of feed-forward neural network blind equalization based on Constant Modulus Algorithm (CMA) cost function, an instantaneous gradient based dual mode between Modified Constant Modulus Algorithm (MCMA) and Decision Directed (DD) algorithm was proposed. The neural network weights change quantity of the adjacent iterative process is defined as instantaneous gradient. After the network converges, the weights of neural network to achieve a stable energy state and the instantaneous gradient would be zero. Therefore dual mode algorithm can be realized by criterion which set according to the instantaneous gradient. Computer simulation results show that the dual mode feed-forward neural network blind equalization algorithm proposed in this study improves the convergence rate and convergence precision effectively, at the same time, has good restart and tracking ability under channel burst interference condition.
机译:为了进一步提高基于恒模算法(CMA)成本函数的前馈神经网络盲均衡的性能,提出了一种基于瞬时梯度的改进的恒模算法(MCMA)和决策直接算法(DD)之间的双模算法。相邻迭代过程的神经网络权重变化量定义为瞬时梯度。网络收敛后,神经网络的权重达到稳定的能量状态,瞬时梯度将为零。因此,可以通过根据瞬时梯度设定的准则来实现双模算法。计算机仿真结果表明,本文提出的双模前馈神经网络盲均衡算法有效提高了收敛速度和收敛精度,同时在信道突发干扰条件下具有良好的重启和跟踪能力。

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