基于混合RBF-IGNG网络的悬浮物建模

Parid Alilat, S. Loumi
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引用次数: 2

摘要

本文的目的是寻找有效的算法,允许处理考虑到海洋成分的建模和制图。通过对具有进化(可扩展)结构和无监督竞争学习的生长神经气体家族进行分析,对其进行了一些修改和改进(修改的IGNG),使其与建模神经网络相关联;这种修改主要集中在参数的自动化上。为了改善结果,我们提出在我们的技术中,通过将高斯宽度乘以一个自动寻找的因子来扩大RBF的影响范围,从而在学习的基础上最小化建模误差。研究了refs的高斯宽度类型及其形状。开发的方法、实施的程序和建议的网络都取得了令人满意的结果。
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Modelling of suspended matter by hybrid RBF-IGNG network
The aim of this paper is to look for efficient algorithms allowing to deal with taking into account the modelization and the cartography of the sea components. Through the analysis carried on the family of Growing Neural Gas with an evolutive (scalable) architecture and with non supervised competitive learning, some modifications and improvements (modified IGNG) have been brought in order to associate them with the neural network of modelization; this modification is essentially focused on the automation of parameters. So as to improve the results, we propose in our technique to widen the sphere of influence of the RBF by multiplying the Gaussian widths by a factor which is automatically sought for so as to minimize the error of modelization on the learning basis. A study on the type of Gaussian widths of the REF and their shapes has been carried. The developed methodology, the implemented procedures and the proposed networks all yielded satisfying results.
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