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Two-Stage Method for Diagonal Recurrent Neural Network Identification of a High-Power Continuous Microwave Heating System

机译:高功率连续微波加热系统对角复发神经网络识别的两级方法

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摘要

This paper proposes a diagonal recurrent neural network (DRNN) based identification scheme to handle the complexity and nonlinearity of high-power continuous microwave heating system (HPCMHS). The new DRNN design involves a two-stage training process that couples an efficient forward model selection technique with gradient-based optimization. In the first stage, an impact recurrent network structure is obtained by a fast recursive algorithm in a stepwise forward procedure. To ensure stability, update rules are further developed using Lyapunov stability criterion to tune parameters of reduced size model at the second stage. The proposed approach is tested with an experimental regression problem and a practical HPCMHS identification, and the results are compared with four typical network models. The results show that the new design demonstrates improved accuracy and model compactness with reduced computational complexity over the existing methods.
机译:本文提出了基于对角线复发性神经网络(DRNN)的识别方案,以处理大功率连续微波加热系统(HPCMHS)的复杂性和非线性。新的DRNN设计涉及两级训练过程,耦合有效的基于梯度优化的高效前进模型选择技术。在第一阶段,通过逐步前进的过程通过快速递归算法获得冲击经频网络结构。为了确保稳定性,使用Lyapunov稳定标准进一步开发更新规则,以在第二阶段调谐减小尺寸模型的参数。通过实验回归问题和实际的HPCMHS识别测试所提出的方法,并将结果与​​四种典型的网络模型进行比较。结果表明,新设计表明,提高了准确性和模型紧凑性,通过现有方法降低了计算复杂性。

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