基于深度神经网络的动态系统参数辨识权值生成方法

IF 1.1 4区 工程技术 Q3 ENGINEERING, AEROSPACE International Journal of Aerospace Engineering Pub Date : 2023-05-29 DOI:10.1155/2023/6610971
Weimeng Chu, Shunan Wu, Fangzhou Fu, Zhe Ye, Zhigang Wu
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引用次数: 0

摘要

深度学习的一般学习过程是非常耗时的。与传统的学习过程不同,提出了一种快速生成深度神经网络模型权向量的权重生成方法,该方法可用于动态系统的参数识别。通过对三种不同动态系统参数识别的深度神经网络模型的分析,揭示了隐含层权重向量与其输入之间的统计关系。然后,利用输入的统计模式和这些关系来模拟权重向量的统计模式。然后,设计了一种权重生成方法,快速生成深度神经网络模型的权重向量。通过对三个动态系统的参数辨识任务,验证了权值生成方法的有效性。数值结果验证了该方法的有效性和高效性。
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A Weight-Generating Approach of a Deep Neural Network for the Parameter Identification of Dynamic Systems
The general learning process of deep learning is extremely time-consuming. Unlike the traditional learning process, a weight-generating approach to quickly generate the weight vectors of a deep neural network model is proposed, which can be used for parameter identification of a dynamic system. Based on the analysis of three trained deep neural network models, which are used to identify the parameters of three different dynamic systems, the statistical relationships between the weight vectors of each hidden layer and its inputs are revealed. Then, the statistical patterns of the weight vectors are imitated by exploiting the statistical patterns of the inputs and these relationships. Then, a weight-generating approach is designed to quickly generate the weight vectors of a deep neural network model. The effectiveness of the weight-generating approach is tested on the tasks of parameter identification for the three dynamic systems. The numerical results are provided to demonstrate the validity and high efficiency of the proposed weight-generating approach.
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来源期刊
CiteScore
2.70
自引率
7.10%
发文量
195
审稿时长
22 weeks
期刊介绍: International Journal of Aerospace Engineering aims to serve the international aerospace engineering community through dissemination of scientific knowledge on practical engineering and design methodologies pertaining to aircraft and space vehicles. Original unpublished manuscripts are solicited on all areas of aerospace engineering including but not limited to: -Mechanics of materials and structures- Aerodynamics and fluid mechanics- Dynamics and control- Aeroacoustics- Aeroelasticity- Propulsion and combustion- Avionics and systems- Flight simulation and mechanics- Unmanned air vehicles (UAVs). Review articles on any of the above topics are also welcome.
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