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On optimal design of experiments for static polynomial approximation of nonlinear systems

机译:关于非线性系统静态多项式近似实验的最优设计

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Models are of great importance for many purposes, including control design. However, most real systems are complex, frequently nonlinear and first principle models tend to be too complicated, or even unknown, for control-oriented modeling. Therefore, data-based models are often used; however, since most likely the true system is not an element of any assumed model class, the available model is an approximation of the real system. To identify nonlinear systems, universal approximations are often used, e.g., polynomial nonlinear models whose number of parameters rapidly increases with model complexity. Because of the high number of parameters to be identified and the presence of nonlinearity, the accurate choice of an appropriate excitation becomes essential and not trivial. The aim of the present paper is to analyze classical design of experiment (DOE) and present its limits in terms of prediction error, for the static polynomial setup under investigation. First, when the system belongs to the assumed model class, we suggest the use of a more suitable optimization criterion that we prove to be a generalization of the well-known V-optimality. Second, we show that if we design the excitation input based on a higher degree model than the one to be identified, it gives rise to a more efficient approximation. (C) 2020 Elsevier B.V. All rights reserved.
机译:模型对于许多目的而言非常重要,包括控制设计。然而,大多数真实的系统都很复杂,通常非线性和第一原理模型往往太复杂,甚至未知,用于面向控制的模型。因此,通常使用基于数据的模型;然而,由于真实系统不是任何假定的模型类的元素,因此可用模型是真实系统的近似值。为了识别非线性系统,通常使用通用近似,例如,参数数量的多项式非线性模型与模型复杂性快速增加。由于要识别的数量较多,并且存在非线性的存在,所以适当的激励的准确选择变得必不可少,而不是微不足道的。本文的目的是分析实验(DOE)的经典设计,并在预测误差方面提出其限制,用于静态多项式在调查中的静态多项式设置。首先,当系统属于假定的模型类时,我们建议使用更合适的优化标准,以便我们证明是众所周知的V-Operalaly的概括。其次,如果我们设计基于更高的程度模型的激励输入而不是识别的激励输入,它会产生更有效的近似。 (c)2020 Elsevier B.V.保留所有权利。

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