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Applications of a gradient flow algorithm for parameter identification of non-linear systems in continuous-time

机译:梯度流算法在连续时间非线性系统参数辨识中的应用

摘要

An efficient methodology for parameter identification is developed for general multi-degree of freedom linear or nonlinear systems in continuous time. The new methodology is based on a gradient flow algorithm and demonstrated to be useful in identifying unknown parameters for the systems defined by both linear and nonlinear differential equations. The new methodology identifies the unknown parameters by solving a system of differential equations rather than the conventional post-data fitting analysis. It is named the trajectory gradient integral flow (TGIF) algorithm. For the cases of stable, one-dimensional linear systems, the asymptotic stability of the TGIF algorithm is guaranteed in the neighborhood of the operating point. For higher order linear or nonlinear systems, certain criteria for stability are developed using the eigenvalue analysis and the Routh-Hurwitz stability criteria. A well-known system identification result is that any method works the best with non-steady, non-periodic data set that is driven by randomized inputs, however this is not an essential requirement with the TGIF algorithm. In fact, it is possible to perform efficient parameter identification with the TGIF algorithm using an unit step input or a simple sine input. Improvements over previous approaches include: (1) the new methodology is easy to apply for nonlinear systems, (2) it works well with a simple unit step or sinusoidal inputs as well as bounded (control) inputs, (3) it demonstrates a reasonable large "domain of attraction", (4) it can be applied for either "on-line" or "off-line" parameter identification processes.
机译:针对连续时间内通用的多自由度线性或非线性系统,开发了一种有效的参数识别方法。新方法基于梯度流算法,并被证明可用于识别由线性和非线性微分方程定义的系统的未知参数。新方法通过求解微分方程组而不是传统的数据后拟合分析来识别未知参数。它被称为轨迹梯度积分流(TGIF)算法。对于稳定的一维线性系统,在工作点附近可以保证TGIF算法的渐近稳定性。对于高阶线性或非线性系统,使用特征值分析和Routh-Hurwitz稳定性准则可以建立某些稳定性准则。众所周知的系统识别结果是,任何方法对于由随机输入驱动的非稳定,非周期性数据集都效果最佳,但这不是TGIF算法的基本要求。实际上,可以使用TGIF算法使用单位步长输入或简单的正弦输入来执行有效的参数识别。对先前方法的改进包括:(1)新方法易于应用于非线性系统;(2)通过简单的单位步长或正弦输入以及有界(控制)输入可很好地工作;(3)证明了合理的方法大的“吸引域”,(4)可用于“在线”或“离线”参数识别过程。

著录项

  • 作者

    Shin Jae Ho 1967-;

  • 作者单位
  • 年度 1998
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  • 原文格式 PDF
  • 正文语种 en_US
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