TY - JOUR
T1 - Nonlinear Reduced Models for State and Parameter Estimation
AU - Cohen, Albert
AU - Dahmen, Wolfgang
AU - Mula, Olga
AU - Nichols, James
N1 - Publisher Copyright:
© 2022 Society for Industrial and Applied Mathematics and American Statistical Association
PY - 2022
Y1 - 2022
N2 - State estimation aims at approximately reconstructing the solution u to a parametrized partial differential equation from m linear measurements when the parameter vector y is unknown. Fast numerical recovery methods have been proposed in Maday et al. [Internat. J. Numer. Methods Engrg., 102 (2015), pp. 933-965] based on reduced models which are linear spaces of moderate dimension n that are tailored to approximate the solution manifold \scrM where the solution sits. These methods can be viewed as deterministic counterparts to Bayesian estimation approaches and are proved to be optimal when the prior is expressed by approximability of the solution with respect to the reduced model [P. Binev et al., SIAM/ASA J. Uncertain. Quantif., 5 (2017), pp. 1-29]. However, they are inherently limited by their linear nature, which bounds from below their best possible performance by the Kolmogorov width dmp\scrM q of the solution manifold. In this paper, we propose to break this barrier by using simple nonlinear reduced models that consist of a finite union of linear spaces Vk, each having dimension at most m and leading to different estimators u k. A model selection mechanism based on minimizing the PDE residual over the parameter space is used to select from this collection the final estimator u. Our analysis shows that u meets optimal recovery benchmarks that are inherent to the solution manifold and not tied to its Kolmogorov width. The residual minimization procedure is computationally simple in the relevant case of affine parameter dependence in the PDE. In addition, it results in an estimator y for the unknown parameter vector. In this setting, we also discuss an alternating minimization (coordinate descent) algorithm for joint state and parameter estimation that potentially improves the quality of both estimators.
AB - State estimation aims at approximately reconstructing the solution u to a parametrized partial differential equation from m linear measurements when the parameter vector y is unknown. Fast numerical recovery methods have been proposed in Maday et al. [Internat. J. Numer. Methods Engrg., 102 (2015), pp. 933-965] based on reduced models which are linear spaces of moderate dimension n that are tailored to approximate the solution manifold \scrM where the solution sits. These methods can be viewed as deterministic counterparts to Bayesian estimation approaches and are proved to be optimal when the prior is expressed by approximability of the solution with respect to the reduced model [P. Binev et al., SIAM/ASA J. Uncertain. Quantif., 5 (2017), pp. 1-29]. However, they are inherently limited by their linear nature, which bounds from below their best possible performance by the Kolmogorov width dmp\scrM q of the solution manifold. In this paper, we propose to break this barrier by using simple nonlinear reduced models that consist of a finite union of linear spaces Vk, each having dimension at most m and leading to different estimators u k. A model selection mechanism based on minimizing the PDE residual over the parameter space is used to select from this collection the final estimator u. Our analysis shows that u meets optimal recovery benchmarks that are inherent to the solution manifold and not tied to its Kolmogorov width. The residual minimization procedure is computationally simple in the relevant case of affine parameter dependence in the PDE. In addition, it results in an estimator y for the unknown parameter vector. In this setting, we also discuss an alternating minimization (coordinate descent) algorithm for joint state and parameter estimation that potentially improves the quality of both estimators.
KW - optimal recovery
KW - parameter estimation
KW - reduced order modeling
KW - state estimation
UR - http://www.scopus.com/inward/record.url?scp=85130037521&partnerID=8YFLogxK
U2 - 10.1137/20M1380818
DO - 10.1137/20M1380818
M3 - Article
SN - 2166-2525
VL - 10
SP - 227
EP - 267
JO - SIAM-ASA Journal on Uncertainty Quantification
JF - SIAM-ASA Journal on Uncertainty Quantification
IS - 1
ER -