Geometric Subspace Updates with Applications to Online Adaptive Nonlinear Model Reduction∗
نویسندگان
چکیده
In many scientific applications, including model reduction and image processing, subspaces are used as ansatz spaces for the low-dimensional approximation and reconstruction of the state vectors of interest. We introduce a procedure for adapting an existing subspace based on information from the least-squares problem that underlies the approximation problem of interest such that the associated least-squares residual vanishes exactly. The method builds on a Riemmannian optimization procedure on the Grassmann manifold of low-dimensional subspaces, namely the Grassmannian Rank-One Update Subspace Estimation (GROUSE). We establish for GROUSE a closed-form expression for the residual function along the geodesic descent direction. Specific applications of subspace adaptation are discussed in the context of image processing and model reduction of nonlinear partial differential equation systems.
منابع مشابه
Geometric Subspace Updates with Applications to 1 Online Adaptive Nonlinear Model Reduction
In many scientific applications, including model reduction and image processing, 4 subspaces are used as ansatz spaces for the low-dimensional approximation and reconstruction of 5 the state vectors of interest. We introduce a procedure for adapting an existing subspace based on 6 information from the least-squares problem that underlies the approximation problem of interest 7 such that the ass...
متن کاملAdaptive fuzzy sliding mode and indirect radial-basis-function neural network controller for trajectory tracking control of a car-like robot
The ever-growing use of various vehicles for transportation, on the one hand, and the statistics ofsoaring road accidents resulting from human error, on the other hand, reminds us of the necessity toconduct more extensive research on the design, manufacturing and control of driver-less intelligentvehicles. For the automatic control of an autonomous vehicle, we need its dynamic...
متن کاملFast local reduced basis updates for the efficient reduction of nonlinear systems with hyper-reduction
Projection-based model reduction techniques rely on the definition of a small dimensional subspace in which the solution is approximated. Using local subspaces reduces the dimensionality of each subspace and enables larger speedups. Transitions between local subspaces require special care and updating the reduced bases associated with each subspace increases the accuracy of the reduced-order mo...
متن کاملOnline Streaming Feature Selection Using Geometric Series of the Adjacency Matrix of Features
Feature Selection (FS) is an important pre-processing step in machine learning and data mining. All the traditional feature selection methods assume that the entire feature space is available from the beginning. However, online streaming features (OSF) are an integral part of many real-world applications. In OSF, the number of training examples is fixed while the number of features grows with t...
متن کاملGeometric Subspace Updates with Applications To
In many scientific applications, including model reduction and image processing, 4 subspaces are used as ansatz spaces for the low-dimensional approximation and reconstruction of 5 the state vectors of interest. We introduce a procedure for adapting an existing subspace based on 6 information from the least-squares problem that underlies the approximation problem of interest 7 such that the ass...
متن کامل