Fourier series-based approximation of time-varying parameters in ordinary differential equations

IF 2 2区 数学 Q1 MATHEMATICS, APPLIED Inverse Problems Pub Date : 2024-02-01 DOI:10.1088/1361-6420/ad1fe5
Anna Fitzpatrick, Molly Folino, Andrea Arnold
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Abstract

Many real-world systems modeled using differential equations involve unknown or uncertain parameters. Standard approaches to address parameter estimation inverse problems in this setting typically focus on estimating constants; yet some unobservable system parameters may vary with time without known evolution models. In this work, we propose a novel approximation method inspired by the Fourier series to estimate time-varying parameters (TVPs) in deterministic dynamical systems modeled with ordinary differential equations. Using ensemble Kalman filtering in conjunction with Fourier series-based approximation models, we detail two possible implementation schemes for sequentially updating the time-varying parameter estimates given noisy observations of the system states. We demonstrate the capabilities of the proposed approach in estimating periodic parameters, both when the period is known and unknown, as well as non-periodic TVPs of different forms with several computed examples using a forced harmonic oscillator. Results emphasize the importance of the frequencies and number of approximation model terms on the time-varying parameter estimates and corresponding dynamical system predictions.
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基于傅里叶级数的常微分方程时变参数近似法
现实世界中许多使用微分方程建模的系统都涉及未知或不确定参数。在这种情况下,解决参数估计逆问题的标准方法通常侧重于估计常数;然而,在没有已知演化模型的情况下,一些不可观测的系统参数可能会随时间变化。在这项工作中,我们受傅立叶级数的启发,提出了一种新的近似方法,用于估计以常微分方程建模的确定性动态系统中的时变参数(TVPs)。我们将集合卡尔曼滤波与基于傅立叶级数的近似模型结合使用,详细介绍了两种可能的实施方案,用于在对系统状态进行噪声观测的情况下顺序更新时变参数估计。我们通过几个使用受迫谐波振荡器的计算实例,展示了所提方法在估计周期参数(包括已知和未知周期)以及不同形式的非周期性 TVP 方面的能力。结果强调了近似模型项的频率和数量对时变参数估计和相应动力系统预测的重要性。
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来源期刊
Inverse Problems
Inverse Problems 数学-物理:数学物理
CiteScore
4.40
自引率
14.30%
发文量
115
审稿时长
2.3 months
期刊介绍: An interdisciplinary journal combining mathematical and experimental papers on inverse problems with theoretical, numerical and practical approaches to their solution. As well as applied mathematicians, physical scientists and engineers, the readership includes those working in geophysics, radar, optics, biology, acoustics, communication theory, signal processing and imaging, among others. The emphasis is on publishing original contributions to methods of solving mathematical, physical and applied problems. To be publishable in this journal, papers must meet the highest standards of scientific quality, contain significant and original new science and should present substantial advancement in the field. Due to the broad scope of the journal, we require that authors provide sufficient introductory material to appeal to the wide readership and that articles which are not explicitly applied include a discussion of possible applications.
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