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STABILIZATION OF SEQUENTIAL LEARNING NEURAL NETWORK IN SONAR TARGET CLASSIFICATION VIA A NOVEL APPROACH

机译:通过一种新方法稳定声纳目标分类中的顺序学习神经网络

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摘要

In this paper, the processing of sonar signals has been carried out using a Minimal Resource Allocation Network (MRAN) in identification of commonly encountered features in indoor environments. The stability-plasticity behaviors of the network have been investigated. From previous observations, the experimental results show that MRAN possesses lower network complexity but experiences higher plasticity, and is unstable. A novel approach is proposed to solve these problems in MRAN and has also been experimentally proven that the network generalizes faster at a lower number of neurons (nodes) compared to the original MRAN. This new approach has been applied as a preprocessing tool to equip the network with certain information about the data to be used in training the network later. With this initial 'guidance', the network predicts extremely well in both sequential and random learning.
机译:在本文中,声纳信号的处理已使用最小资源分配网络(MRAN)进行,以识别室内环境中常见的特征。已经研究了网络的稳定性-可塑性行为。从以前的观察,实验结果表明MRAN具有较低的网络复杂性,但具有较高的可塑性,并且不稳定。提出了一种新颖的方法来解决MRAN中的这些问题,并已通过实验证明,与原始MRAN相比,该网络在较少数量的神经元(节点)上泛化速度更快。这种新方法已被用作预处理工具,为网络配备了有关数据的某些信息,这些信息将在以后的网络训练中使用。有了这个最初的“指导”,网络就可以很好地预测顺序学习和随机学习。

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