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Robust parameter estimation for nonlinear multistage time-delay systems with noisy measurement data

机译:带有噪声测量数据的非线性多级时滞系统的鲁棒参数估计

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In this paper, we consider estimation problems involving a class of nonlinear systems characterized by two non-standard attributes: (ⅰ) such systems evolve over multiple stages; and (ⅱ) the dynamics in each stage involve unknown time-delays and unknown system parameters. These unknown quantities are to be estimated such that a least-squares error function between the system output and a set of noisy measurement data from a real plant is minimized. We first present the classical parameter estimation formulation, where the expectation of the error function is regarded as the cost function. However, in practice, there exists uncertainty in the distribution of the measurement data. The optimal parameter estimate should be able to withstand this uncertainty. Accordingly, we propose a new parameter estimation formulation, in which the cost function is the variance of the error function and the constraint indicates an allowable sacrifice from the optimal expectation value of the classical parameter estimation problem. For these two estimation problems, we show that the gradients of their cost functions and the constraint function with respect to the time-delays and system parameters can be computed through solving a set of auxiliary time-delay systems in conjunction with the governing multistage time-delay system, simultaneously. On this basis, we develop gradient-based optimization algorithms to determine the unknown time-delays and system parameters. Finally, we consider two example problems to illustrate the effectiveness and applicability of our proposed algorithms.
机译:在本文中,我们考虑了涉及具有两个非标准属性特征的一类非线性系统的估计问题: (ⅱ)每个阶段的动力学都涉及未知的时间延迟和未知的系统参数。估计这些未知量,以使系统输出与来自实际工厂的一组噪声测量数据之间的最小二乘误差函数最小化。我们首先提出经典的参数估计公式,其中误差函数的期望被视为成本函数。但是,实际上,测量数据的分布存在不确定性。最佳参数估计应能够承受这种不确定性。因此,我们提出了一种新的参数估计公式,其中成本函数是误差函数的方差,并且约束条件表示从经典参数估计问题的最佳期望值中可以允许的牺牲。对于这两个估计问题,我们表明可以通过求解一组辅助时滞系统并结合控制多级时机来计算其成本函数和约束函数相对于时延和系统参数的梯度。同时延迟系统。在此基础上,我们开发了基于梯度的优化算法来确定未知的时间延迟和系统参数。最后,我们考虑两个示例问题,以说明所提出算法的有效性和适用性。

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