A method of constructing neuro-fuzzy controller based on adaptive algorithm of self-organizing network to control the angle of heel of the unmanned aerial vehicle

L. U. Emaletdinova, A. N. Kabirova, R. S. Konopelko
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引用次数: 3

Abstract

The article discusses the method of designing, training and use of the neuro — fuzzy controller to control the behavior of the angle of heel of the unmanned aerial vehicle. The regulator is constructed in the form of a fuzzy neural network, the inputs of which are fuzzy linguistic variables such as the deviation of the angle of heel from the nominal impact, speed and acceleration, while output is a clear option, that is the control action exerted on the object of regulation. To train the network an adaptive algorithm of self-organizing fuzzy network is used, which allows building the architecture of the fuzzy neural network based on the source data and the Gaussian membership functions. The technique of designing the training and testing samples, based on knowledge of the desired behavior of the object under different nominal impacts, is proposed. The results of experimental research on selection of parameters of membership functions and using designed controller are given.
提出了一种基于自组织网络自适应算法构建神经模糊控制器的方法来控制无人机的跟角
本文讨论了神经模糊控制器的设计、训练和使用方法,以控制无人机的跟角行为。该调节器以模糊神经网络的形式构建,其输入是模糊语言变量,如脚跟角与标称碰撞的偏差、速度和加速度,而输出是一个明确的选项,即施加在调节对象上的控制动作。为了训练神经网络,采用自适应自组织模糊网络算法,基于源数据和高斯隶属函数构建模糊神经网络结构。提出了一种基于物体在不同名义冲击下的期望行为的知识来设计训练和测试样本的技术。给出了隶属函数参数的选择和设计控制器的实验研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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