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首页> 外文期刊>International Journal of Systems Signal Control & Engineering Applications >Performance Analysis of Adaptive Self-Normalized Radial Basis Function Neural Network (ASN-RBF) For Blind Source Separation
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Performance Analysis of Adaptive Self-Normalized Radial Basis Function Neural Network (ASN-RBF) For Blind Source Separation

机译:自适应自归一化径向基函数神经网络盲源分离的性能分析

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This study focuses on extracting the individual source signals from an artificially mixed signal. Number of signals involved is minimum 3 source signals. An adaptive self-normalized Radial Basis function network is developed for solving unknown source separation problems. The gradient descent optimization algorithm is applied to update the parameters in the generative model. The performance of the proposed network is compared with the model by using temporal predictability and it is illustrated with computer simulated experiments. The scaling problem in the Blind Source Separation using temporal predictability is eliminated by the proposed ASN-RBF network.
机译:这项研究的重点是从人工混合信号中提取单个源信号。涉及的信号数量至少为3个源信号。为了解决未知源分离问题,开发了自适应自归一化径向基函数网络。应用梯度下降优化算法来更新生成模型中的参数。利用时间可预测性将所提出的网络的性能与模型进行比较,并通过计算机仿真实验对其进行说明。提出的ASN-RBF网络消除了使用时间可预测性的盲源分离中的缩放问题。

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