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Inverse problem of aircraft structural parameter identification: application of genetic algorithms compared with artificial neural networks

机译:飞机结构参数辨识的反问题:遗传算法与人工神经网络的比较

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摘要

This article is the second part of a two paper series exploring the application of two advanced computing techniques: artificial neural networks (ANNs) and genetic algorithms (GAs), to the problem of structural parameter identification for an idealised model of an aircraft wing. In this article, GAs are used to determine an idealised finite element model that is representative of the wing of the Pilatus PC-9/A trainer aircraft. This is achieved through an optimisation process that attempts to match the static and dynamic response of the model to measured aircraft structural responses. A number of approaches were trialed with improvements made to each successive approach in an attempt to find a suitable unique parameter set. Structural parameters were found for a three-element model which has characteristics very similar to those of the PC-9/A wing. A comparison is also provided between the performance of the neural network and GA approaches.
机译:本文是两篇论文系列的第二部分,探讨了两种先进的计算技术:人工神经网络(ANN)和遗传算法(GA)在飞机机翼理想化模型的结构参数识别问题上的应用。在本文中,遗传算法用于确定代表Pilatus PC-9 / A教练机机翼的理想化有限元模型。这是通过尝试将模型的静态和动态响应与测量的飞机结构响应匹配的优化过程来实现的。为了找到合适的唯一参数集,尝试了多种方法,并对每种连续方法进行了改进。发现了三元素模型的结构参数,该模型的特性与PC-9 / A机翼非常相似。还提供了神经网络性能和GA方法之间的比较。

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