引入两阶段OSD学习方法提高RBF神经网络在直升机声音识别系统中的学习率

G. Montazer, Reza Sabzevari, Fatemeh Ghorbani
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引用次数: 4

摘要

本文提出了一种用于训练径向基函数神经网络的学习算法的新方法。该方法可用于需要实时再训练RBF神经网络的应用。该方法是一种两阶段学习算法,优化了最优最陡梯度(OSD)学习方法的功能。该方法通过初始计算RBF单元的中心和宽度,加快了性能的提高。这种方法已经在一个音频处理应用中进行了测试,该应用是一个利用旋翼声识别直升机的系统。通过比较采用不同学习策略所获得的结果,得出了有趣的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of learning rate for RBF neural networks in a helicopter sound identification system introducing two-phase OSD learning method
This paper presents a novel approach in learning algorithms commonly used for training radial basis function neural networks. This approach could be used in applications which need real-time capabilities for retraining RBF neural networks. Proposed method is a two-phase learning algorithm which optimizes the functionality of optimum steepest decent (OSD) learning method. This methodology speeds to attain better performance by initial calculation of centre and width of RBF units. This method has been tested in an audio processing application, a system for identifying helicopters using their sound of rotors. Comparing results obtained by employing different learning strategies shows interesting outcomes as have come in this paper.
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