Title of article :
Hessian-based model reduction for large-scale systems with initial-condition inputs
Author/Authors :
O. Bashir، نويسنده , , K. Willcox، نويسنده , , O. Ghattas، نويسنده , , B. van Bloemen Waanders، نويسنده , , J. Hill، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Reduced-order models that are able to approximate output quantities of interest of high-fidelity computational
models over a wide range of input parameters play an important role in making tractable
large-scale optimal design, optimal control, and inverse problem applications. We consider the problem
of determining a reduced model of an initial value problem that spans all important initial conditions,
and pose the task of determining appropriate training sets for reduced-basis construction as a sequence
of optimization problems. We show that, under certain assumptions, these optimization problems have an
explicit solution in the form of an eigenvalue problem, yielding an efficient model reduction algorithm that
scales well to systems with states of high dimension. Furthermore, tight upper bounds are given for the
error in the outputs of the reduced models. The reduction methodology is demonstrated for a large-scale
contaminant transport problem. Copyright q 2007 John Wiley & Sons, Ltd.
Keywords :
Model reduction , optimization , initial-condition problems
Journal title :
International Journal for Numerical Methods in Engineering
Journal title :
International Journal for Numerical Methods in Engineering