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Evaluation for Sortie Generation Capacity of the Carrier Aircraft Based on the Variable Structure RBF Neural Network with the Fast Learning Rate

机译:基于可变结构RBF神经网络的快速学习速率评估载波飞机的分类发电容量

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摘要

The neural network has the advantages of self-learning, self-adaptation, and fault tolerance. It can establish a qualitative and quantitative evaluation model which is closer to human thought patterns. However, the structure and the convergence rate of the radial basis function (RBF) neural network need to be improved. This paper proposes a new variable structure radial basis function (VS-RBF) with a fast learning rate, in order to solve the problem of structural optimization design and parameter learning algorithm for the radial basis function neural network. The number of neurons in the hidden layer is adjusted by calculating the output information of neurons in the hidden layer and the multi-information between neurons in the hidden layer and output layer. This method effectively solves the problem that the RBF neural network structure is too large or too small. The convergence rate of the RBF neural network is improved by using the robust regression algorithm and the fast learning rate algorithm. At the same time, the convergence analysis of the VS-RBF neural network is given to ensure the stability of the RBF neural network. Compared with other self-organizing RBF neural networks (self-organizing RBF (SORBF) and rough RBF neural networks (RS-RBF)), VS-RBF has a more compact structure, faster dynamic response speed, and better generalization ability. The simulations of approximating a typical nonlinear function, identifying UCI datasets, and evaluating sortie generation capacity of an carrier aircraft show the effectiveness of VS-RBF.
机译:神经网络具有自学,自适应和容错的优点。它可以建立一个更接近人类思维模式的定性和定量评估模型。然而,需要改善径向基函数(RBF)神经网络的结构和收敛速率。本文提出了一种新的变量结构径向基函数(VS-RBF),具有快速学习率,以解决径向基函数神经网络的结构优化设计和参数学习算法的问题。通过计算隐藏层中神经元的输出信息和隐藏层和输出层中神经元之间的多信息来调整隐藏层中的神经元数。该方法有效解决了RBF神经网络结构太大或太小的问题。通过使用鲁棒回归算法和快速学习速率算法来提高RBF神经网络的收敛速率。同时,给出了VS-RBF神经网络的收敛性分析,以确保RBF神经网络的稳定性。与其他自组织RBF神经网络相比(自组织RBF(SORBF)和粗RBF神经网络(RS-RBF)),VS-RBF具有更紧凑的结构,更快的动态响应速度和更好的泛化能力。近似典型非线性函数,识别UCI数据集的模拟,以及评估载波飞机的流量生成容量,显示了VS-RBF的有效性。

著录项

  • 来源
    《Complexity 》 |2018年第12期| 共19页
  • 作者单位

    School of Automation Harbin University of Science and Technology Harbin Heilongjiang 150080 China;

    School of Automation Harbin University of Science and Technology Harbin Heilongjiang 150080 China;

    College of Automation Harbin Engineering University Harbin Heilongjiang 150001 China;

    College of Power and Energy Engineering Harbin Engineering University Harbin Heilongjiang 150001 China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论 ;
  • 关键词

    Evaluation for; Sortie Generation; Capacity;

    机译:评估;Sortie生成;容量;

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