Identifying the uncertainty structure using maximum likelihood estimation

M. Zagrobelny, J. Rawlings
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引用次数: 20

Abstract

The identification of accurate disturbance models from data has application both to estimator design and controller performance monitoring. Methods to find the disturbance model include maximum likelihood estimation, Bayesian estimation, covariance matching, correlation techniques (such as autocovariance least-squares), and subspace identification methods. Here we formulate a maximum likelihood estimation (MLE) problem for the unknown process and measurement noise covariances. To form the MLE problem, the entire set of measurements is written as a linear combination of the white noises affecting the system. This measurement signal then has a multivariate normal distribution with a known mean and unknown variance. Since the structure of the variance is known, the likelihood is expressed in terms of the unknown process and measurement noise covariance matrices. The MLE problem is a nonlinear optimization problem for these covariances. A solution to this problem is shown to exist. Necessary conditions for uniqueness are shown to be the same as those for the autocovariance least-squares problem. While the size of the measurement signal makes the problem computationally demanding, the symmetry and sparsity of the problem aid in the numerical optimization. Simulations demonstrate the effectiveness of the MLE problem in finding the process and measurement noise covariances for low-dimensional systems. The MLE method is compared to existing approaches, and fruitful avenues of future research are discussed.
利用最大似然估计识别不确定性结构
从数据中识别出准确的扰动模型,对估计器的设计和控制器的性能监测都有一定的应用价值。寻找干扰模型的方法包括极大似然估计、贝叶斯估计、协方差匹配、相关技术(如自协方差最小二乘)和子空间识别方法。本文提出了未知过程和测量噪声协方差的最大似然估计(MLE)问题。为了形成MLE问题,整个测量集被写成影响系统的白噪声的线性组合。然后,该测量信号具有已知均值和未知方差的多元正态分布。由于方差的结构是已知的,故似然用未知过程和测量噪声协方差矩阵表示。最大似然问题是对这些协方差的非线性优化问题。这个问题的解决方案是存在的。唯一性的必要条件与自协方差最小二乘问题的必要条件相同。虽然测量信号的大小使问题的计算要求很高,但问题的对称性和稀疏性有助于数值优化。仿真结果表明,该方法在寻找低维系统过程噪声协方差和测量噪声协方差方面是有效的。将最大似然估计方法与现有方法进行了比较,并对未来的研究方向进行了讨论。
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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