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A high-order recurrent neuro-fuzzy system with internal dynamics: Application to the adaptive noise cancellation

机译:具有内部动力学的高阶递归神经模糊系统:在自适应噪声消除中的应用

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摘要

A high-order recurrent neuro-fuzzy system (HO-RNFS) is suggested in this paper, suitable for modeling highly complex nonlinear temporal processes. Feedback connections are introduced in the network including the context and the feedback nodes that serve as a means to memorize the firing history. The feedback paths in the firing loop are implemented through finite impulse response (FIR) synaptic filters leading to a higher-order network with enhanced temporal capabilities. The inference mechanism of the HO-RNFS is implemented by means of dynamic fuzzy rules where multiple steps-ahead predictions are provided for the internal variables, at the consequent part. Its structure is organized in an on-line fashion using a concurrent structure and parameter algorithm. Structure learning generates dynamically the input and output clusters of the rules, while parameter learning adjusts the network weights. The HO-RNFS is compared to the recurrent self-organizing neural fuzzy inference network (RSONFTN), being a special case of the suggested network. The experimental setup includes a benchmark temporal system and the adaptive noise cancellation problem. Extensive experimentation reveals that HO-RNFS exhibits superior speech enhancement performance as contrasted to RSONFTN, when complex noise passages are considered.
机译:本文提出了一种高阶递归神经模糊系统(HO-RNFS),适用于建模高度复杂的非线性时间过程。在网络中引入了反馈连接,包括上下文和反馈节点,这些节点用作记忆触发历史的一种手段。触发回路中的反馈路径通过有限脉冲响应(FIR)突触滤波器实现,从而形成具有增强的时间能力的高阶网络。 HO-RNFS的推理机制是通过动态模糊规则实现的,其中动态变量规则在随后的部分为内部变量提供了多个提前预测。使用并发结构和参数算法以在线方式组织其结构。结构学习动态生成规则的输入和输出群集,而参数学习则调整网络权重。 HO-RNFS与递归自组织神经模糊推理网络(RSONFTN)进行了比较,这是建议网络的特例。实验装置包括基准时间系统和自适应噪声消除问题。广泛的实验表明,当考虑复杂的噪声通道时,与RSONFTN相比,HO-RNFS具有更好的语音增强性能。

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