Stavrakoudis Dimitris G, Theocharis John B
Department of Electrical and Computer Engineering, Division of Electronics and Computer Engineering, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece.
IEEE Trans Syst Man Cybern B Cybern. 2007 Oct;37(5):1305-20. doi: 10.1109/tsmcb.2007.900516.
A class of pipelined recurrent fuzzy neural networks (PRFNNs) is proposed in this paper for nonlinear adaptive speech prediction. The PRFNNs are modular structures comprising a number of modules that are interconnected in a chained form. Each module is implemented by a small-scale recurrent fuzzy neural network (RFNN) with internal dynamics. Due to module nesting, the PRFNNs offer a number of desirable attributes, including decomposition of the modeling task, enhanced temporal processing capabilities, and multistage dynamic fuzzy inference. Tuning of the PRFNN adaptable parameters is accomplished by a series of gradient descent methods with different weighting of the modules and the decoupled extended Kalman filter (DEKF) algorithm, based on weight grouping. Extensive experimentation is carried out to evaluate the performance of the PRFNNs on the speech prediction platform. Comparative analysis shows that the PRFNNs outperform the single-RFNN models in terms of the prediction gains that are obtained and computational efficiency. Furthermore, PRFNNs provide considerably better performance compared to pipelined recurrent neural networks, for models with similar model complexity.
本文提出了一类用于非线性自适应语音预测的流水线递归模糊神经网络(PRFNN)。PRFNN是模块化结构,由多个以链式形式相互连接的模块组成。每个模块由具有内部动态特性的小规模递归模糊神经网络(RFNN)实现。由于模块嵌套,PRFNN具有许多理想的属性,包括建模任务的分解、增强的时间处理能力和多级动态模糊推理。基于权重分组,通过一系列对模块进行不同加权的梯度下降方法和解耦扩展卡尔曼滤波器(DEKF)算法来完成PRFNN自适应参数的调整。在语音预测平台上进行了大量实验以评估PRFNN的性能。对比分析表明,PRFNN在获得的预测增益和计算效率方面优于单RFNN模型。此外,对于具有相似模型复杂度的模型,PRFNN与流水线递归神经网络相比提供了相当更好的性能。