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Efficient classification algorithm and a new training mode for the adaptive radial basis function neural network equaliser

机译:自适应径向基函数神经网络均衡器的高效分类算法和新的训练模式

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摘要

The study presents a new classification algorithm and a new online training mode used for learning the parameters of a Bayesian RBFNN (radial basis function neural network) equaliser in a non-linear time-varying channel. The classification algorithm is used to determine the centres of the hidden layer neurons that are equal to the channel states. This proposed unsupervised classification algorithm is based on both the K-means and the rival penalised competitive algorithms. Its main advantage is neither an initialisation phase nor a knowledge of the channel states number is required. The connections of weights and the spread of the hidden neurons are learned by the gradient descent algorithm, which applies a new proposed training mode. This training mode combines the advantages of both the online and the offline training modes such as stability and good speed of convergence. The performances of the RBFNN equaliser trained by the proposed method are shown in comparison with the performances of the optimal Bayesian equaliser and those of the same equaliser trained by other known training modes. All these performances are studied by using different types of channels.
机译:该研究提出了一种新的分类算法和一种新的在线训练模式,用于学习非线性时变信道中的贝叶斯RBFNN(径向基函数神经网络)均衡器的参数。分类算法用于确定与通道状态相等的隐藏层神经元的中心。该提出的无监督分类算法是基于K均值和竞争对手的惩罚竞争算法的。它的主要优点是既不需要初始化阶段,也不需要知道通道状态号。权重的连接和隐藏神经元的扩散是通过梯度下降算法学习的,该算法应用了一种新提出的训练模式。这种训练模式结合了在线和离线训练模式的优点,例如稳定性和良好的收敛速度。与最佳贝叶斯均衡器和通过其他已知训练模式训练的相同均衡器的性能相比,显示了通过该方法训练的RBFNN均衡器的性能。通过使用不同类型的通道来研究所有这些性能。

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