初始条件未知的空间分布非线性系统参数辨识的计算方法

J. Kasać, V. Milić, J. Stepanic, G. Mester
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引用次数: 11

摘要

提出了一种高精度的非线性多变量动态系统参数辨识算法。提出的计算方法基于以下假设:a)系统由未知系统参数向量非线性参数化;B)只能部分测量系统状态;C)没有国家观察员;D)初始条件是未知的,除了可测量的系统状态。将辨识问题表述为一个连续的动态优化问题,用高阶Adams方法将其离散化,用一种类似于时间反向传播(BPTT)算法的逆时递归算法进行数值求解。该算法对于均匀空间分布的非线性系统的辨识特别有效,并通过仅具有未知初始速度和位置测量的非线性参数化弹性多自由度扭转系统的参数辨识得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computational approach to parameter identification of spatially distributed nonlinear systems with unknown initial conditions
In this paper, a high-precision algorithm for parameter identification of nonlinear multivariable dynamic systems is proposed. The proposed computational approach is based on the following assumptions: a) system is nonlinearly parameterized by a vector of unknown system parameters; b) only partial measurement of system state is available; c) there are no state observers; d) initial conditions are unknown except for measurable system states. The identification problem is formulated as a continuous dynamic optimization problem which is discretized by higher-order Adams method and numerically solved by a backward-in-time recurrent algorithm which is similar to the backpropagation-through-time (BPTT) algorithm. The proposed algorithm is especially effective for identification of homogenous spatially distributed nonlinear systems what is demonstrated on the parameter identification of a multi-degree-of-freedom torsional system with nonlinearly parameterized elastic forces, unknown initial velocities and positions measurement only.
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