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Nonlinear system identification using a genetic algorithm and recurrent artificial neural networks.

机译:使用遗传算法和递归人工神经网络进行非线性系统识别。

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摘要

In this study, the application of Recurrent Artificial Neural Network (RANN) in nonlinear system identification has been extensively explored. Three RANN-based identification models have been presented to describe the behavior of the nonlinear systems. The approximation accuracy of RANN-based models relies on two key factors: architecture and weights. Due to its inherent property of parallelism and evolutionary mechanism, a Genetic Algorithm (GA) becomes a promising technique to obtain good neural network architecture. A GA is developed to approach the optimal architecture of a RANN with multiple hidden layers in this study. In order to approach the optimal architecture of Neural Networks in the sense of minimizing the identification error, an effective encoding scheme is in demand. A new Direct Matrix Mapping Encoding (DMME) method is proposed to represent the architecture of a neural network. A modified Back-propagation (BP) algorithm, in the sense of not only tuning NN weights but tuning other adjustable parameters as well, is utilized to tune the weights of RANNs and other parameters. The RANN with optimized or approximately optimized architecture and trained weights have been applied to the identification of nonlinear dynamic systems with unknown nonlinearities, which is a challenge in the control community. The effectiveness of these models and identification algorithms are extensively verified in the identification of several complex nonlinear systems such as a "smart" actuator preceded by hysteresis and friction-plague harmonic drive.
机译:在这项研究中,已经广泛探索了递归人工神经网络(RANN)在非线性系统识别中的应用。已经提出了三种基于RANN的识别模型来描述非线性系统的行为。基于RANN的模型的逼近精度取决于两个关键因素:体系结构和权重。由于其固有的并行性和进化机制,遗传算法(GA)成为一种获得良好神经网络架构的有前途的技术。在本研究中,开发了一种遗传算法以接近具有多个隐藏层的RANN的最佳架构。为了在最小化识别误差的意义上接近神经网络的最佳架构,需要一种有效的编码方案。提出了一种新的直接矩阵映射编码(DMME)方法来表示神经网络的体系结构。在不仅调整NN权重而且还调整其他可调整参数的意义上,改进的反向传播(BP)算法被用于调整RANN和其他参数的权重。具有优化或近似优化的架构以及训练有素的权重的RANN已被应用于识别未知非线性的非线性动态系统,这在控制领域是一个挑战。这些模型和识别算法的有效性在识别几个复杂的非线性系统(例如“智能”致动器,然后再进行磁滞和摩擦鼠疫谐波驱动)中得到了广泛验证。

著录项

  • 作者

    Zhu, Yuqing.;

  • 作者单位

    Concordia University (Canada).;

  • 授予单位 Concordia University (Canada).;
  • 学科 Engineering Industrial.
  • 学位 M.A.Sc.
  • 年度 2006
  • 页码 118 p.
  • 总页数 118
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

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