A Novel Adaptive Square Root UKF with Forgetting Factor for the Time-Variant Parameter Identification

Yanzhe Zhang, Yong Ding, Jianqing Bu, Lina Guo
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Abstract

The unscented Kalman filter (UKF) serves as an efficient estimator widely utilized for the recursive identification of parameters. However, the UKF is not well suited for tracking time-variant parameters. Moreover, the unscented transformation (UT) used in the UKF typically relies on Cholesky decomposition to perform the square root operation of the covariance matrix. This method necessitates the matrix to maintain symmetry and positive definiteness. Due to the adverse influence of rounding error and noise, it becomes challenging to guarantee the positive definiteness of the matrix in each recursive step for practical engineering. The square root UKF (SRUKF) eliminates the need for the square root operation in the UT by directly updating the square root of the covariance matrix during each recursion. However, the SRUKF still relies on the rank 1 update to the Cholesky factorization to perform the recursive process, which also necessitates the matrix to be positive definite. Furthermore, the SRUKF is ineffective in the identification of time-variant parameters. Therefore, this paper proposes a modification to the SRUKF that ensures unconditional numerical stability by utilizing QR decomposition. Subsequently, the modified square root UKF (MSRUKF) method is enhanced by incorporating an adaptive forgetting factor that can be adjusted based on the residual information from each recursive step. This adaptation leads to the development of the adaptive SRUKF with forgetting factor (ASRUKF-FF) method, which significantly improves the tracking capability for time-variant parameters. To validate the effectiveness of the proposed method, this paper demonstrates its application in identifying the time-variant stiffness and damping parameters of a three-story frame structure. In addition, the method is employed to estimate the time-variant stiffness of the bridge excited by vehicles. The simulation results show that the proposed method has the superiority of high accuracy, strong robustness, and widespread applicability, even with incomplete measurements and inappropriate parameter settings.
一种带遗忘因子的时变参数自适应平方根UKF辨识方法
无气味卡尔曼滤波器(UKF)是一种有效的估计器,广泛应用于参数递归辨识。然而,UKF并不适合于跟踪时变参数。此外,UKF中使用的unscented变换(UT)通常依赖于Cholesky分解来执行协方差矩阵的平方根运算。这种方法要求矩阵保持对称和正确定性。由于舍入误差和噪声的不利影响,在实际工程中,如何保证矩阵在每一步递归中的正确定性成为一项挑战。平方根UKF (SRUKF)通过在每次递归期间直接更新协方差矩阵的平方根,消除了在UT中进行平方根操作的需要。然而,SRUKF仍然依赖于对Cholesky分解的秩1更新来执行递归过程,这也需要矩阵是正定的。此外,SRUKF在时变参数的识别中是无效的。因此,本文提出利用QR分解对SRUKF进行修正,以保证其数值的无条件稳定性。随后,改进的平方根UKF (MSRUKF)方法加入了一个自适应遗忘因子,该因子可以根据每个递归步骤的残差信息进行调整。这种适应导致了带遗忘因子的自适应SRUKF (ASRUKF-FF)方法的发展,显著提高了对时变参数的跟踪能力。为了验证该方法的有效性,本文通过实例验证了该方法在三层框架结构时变刚度和阻尼参数识别中的应用。此外,还利用该方法对车辆作用下桥梁的时变刚度进行了估计。仿真结果表明,该方法具有精度高、鲁棒性强、适用范围广等优点,即使在测量不完整、参数设置不合理的情况下也能实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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