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Stochastic quasi-Newton method for minimum bit error rate nonlinear equalizers online training

机译:最小误码率非线性均衡器在线训练的随机拟牛顿法。

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摘要

A sliding window hybrid quasi Newton algorithm is proposed in this paper for minimum bit error rate nonlinear equalizers online training. Switching between sliding window stochastic gradient algorithm and sliding window quasi Newton algorithm makes the new algorithm be stable and converge fast. Moreover, by modifying the quasi Newton method, the new algorithm can be applied to high-dimensional parameters. In simulations, the new algorithm is used for training nonlinear equalizers in direct sequence spread spectrum communications and its high efficiency is proved by simulation results.
机译:针对最小误码率非线性均衡器的在线训练,提出了一种滑动窗口混合拟牛顿算法。滑动窗口随机梯度算法和滑动窗口准牛顿算法之间的切换使新算法稳定且收敛迅速。此外,通过修改准牛顿法,可以将新算法应用于高维参数。在仿真中,该新算法用于直接序列扩频通信中的非线性均衡器训练,仿真结果证明了该算法的高效率。

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