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An Improved Compound Gradient Vector Based Neural Network On-Line Training Algorithm

机译:改进的基于复合梯度向量的神经网络在线训练算法

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摘要

An improved compound gradient vector based a fast convergent NN online training weight update scheme is proposed in this paper. The convergent analysis indicates that because the compound gradient vector is employed during the weight update, the convergent speed of the presented algorithm is faster than the back propagation (BP) algorithm. In this scheme an adaptive learning factor is introduced in which the global convergence is obtained, and the convergence procedure on plateau and flat bottom area can speed up. Some simulations have been conducted and the results demonstrate the satisfactory convergent performance and strong robustness are obtained using the improved compound gradient vector NN online learning scheme for real time control involving uncertainty parameter plant.
机译:提出了一种基于改进的复合梯度向量的快速收敛的神经网络在线训练权重更新方案。收敛分析表明,由于在权重更新过程中采用了复合梯度矢量,因此该算法的收敛速度比反向传播算法要快。在该方案中,引入了自适应学习因子,在该学习因子中获得了全局收敛,并且可以加快高原和平坦底部区域上的收敛过程。进行了一些仿真,结果表明,使用改进的复合梯度向量NN在线学习方案进行实时性控制,涉及不确定性参数工厂,可以获得令人满意的收敛性能和强大的鲁棒性。

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