/usr/include/trilinos/Stokhos_StieltjesGramSchmidtBuilderImp.hpp is in libtrilinos-stokhos-dev 12.4.2-2.
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1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 | // $Id: Stokhos_SGModelEvaluator.cpp,v 1.10 2009/10/06 16:51:22 agsalin Exp $
// $Source: /space/CVS/Trilinos/packages/stokhos/src/Stokhos_SGModelEvaluator.cpp,v $
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#include "Stokhos_OneDOrthogPolyBasis.hpp"
#include "Stokhos_StieltjesPCEBasis.hpp"
#include "Stokhos_CompletePolynomialBasis.hpp"
template <typename ordinal_type, typename value_type>
Stokhos::StieltjesGramSchmidtBuilder<ordinal_type,value_type>::
StieltjesGramSchmidtBuilder(
const Teuchos::RCP<const Stokhos::Quadrature<ordinal_type, value_type> >& quad_,
const Teuchos::Array< Stokhos::OrthogPolyApprox<ordinal_type, value_type> >& pces,
ordinal_type new_order, bool use_pce_qp, bool normalize) :
quad(quad_)
{
// Create array to store new coordinate bases
ordinal_type new_dim = pces.size();
Teuchos::Array< Teuchos::RCP<const OneDOrthogPolyBasis<ordinal_type, value_type> > > new_coordinate_bases(new_dim);
// Create Stieltjes basis for each pce
for (ordinal_type k=0; k<new_dim; k++) {
new_coordinate_bases[k] = Teuchos::rcp(
new StieltjesPCEBasis<ordinal_type,value_type>(
new_order, Teuchos::rcp(&(pces[k]),false), quad, use_pce_qp,
normalize)
);
}
// Create tensor product basis from coordinate bases
tensor_basis = Teuchos::rcp(
new CompletePolynomialBasis<ordinal_type,value_type>(new_coordinate_bases)
);
// Use Gram-Schmidt to orthogonalize tensor product bases
const Teuchos::Array<value_type>& weights = quad->getQuadWeights();
const Teuchos::Array< Teuchos::Array<value_type> >& points =
quad->getQuadPoints();
ordinal_type nqp = points.size();
Teuchos::RCP< Teuchos::Array< Teuchos::Array<value_type> > > new_points =
Teuchos::rcp(new Teuchos::Array< Teuchos::Array<value_type> >(nqp));
Teuchos::RCP< Teuchos::Array<value_type> > new_weights =
Teuchos::rcp(new Teuchos::Array<value_type>(weights));
for (ordinal_type i=0; i<nqp; i++)
(*new_points)[i].resize(new_dim);
for (ordinal_type k=0; k<new_dim; k++) {
Teuchos::Array<value_type> st_points;
Teuchos::Array<value_type> st_weights;
Teuchos::Array< Teuchos::Array<value_type> > st_values;
new_coordinate_bases[k]->getQuadPoints(new_order+1, st_points, st_weights,
st_values);
for (ordinal_type i=0; i<nqp; i++)
(*new_points)[i][k] = st_points[i];
}
gs_basis = Teuchos::rcp(
new GramSchmidtBasis<ordinal_type,value_type>(tensor_basis,
*new_points,
*new_weights,
1e-15)
);
// Create new quadrature object
Teuchos::RCP<const OrthogPolyBasis<ordinal_type,value_type> > new_basis =
gs_basis;
gs_quad = Teuchos::rcp(
new UserDefinedQuadrature<ordinal_type,value_type>(new_basis,
new_points,
new_weights)
);
}
template <typename ordinal_type, typename value_type>
Teuchos::RCP<const Stokhos::OrthogPolyBasis<ordinal_type, value_type> >
Stokhos::StieltjesGramSchmidtBuilder<ordinal_type,value_type>::
getReducedBasis() const
{
return gs_basis;
}
template <typename ordinal_type, typename value_type>
Teuchos::RCP<Stokhos::Quadrature<ordinal_type, value_type> >
Stokhos::StieltjesGramSchmidtBuilder<ordinal_type,value_type>::
getReducedQuadrature() const
{
return gs_quad;
}
template <typename ordinal_type, typename value_type>
void
Stokhos::StieltjesGramSchmidtBuilder<ordinal_type,value_type>::
computeReducedPCEs(
const Teuchos::Array< Stokhos::OrthogPolyApprox<ordinal_type, value_type> >& pces,
Teuchos::Array< Stokhos::OrthogPolyApprox<ordinal_type, value_type> >& new_pces)
{
// Map pce coefficients to tensor basis to Gram-Schmidt basis
ordinal_type dim = pces.size();
if (new_pces.size() != pces.size())
new_pces.resize(dim);
for (ordinal_type k=0; k<dim; k++) {
OrthogPolyApprox<ordinal_type,value_type> p_tensor(tensor_basis);
p_tensor.term(k, 0) = pces[k].mean();
p_tensor.term(k, 1) = 1.0;
new_pces[k].reset(gs_basis);
gs_basis->transformCoeffs(p_tensor.coeff(), new_pces[k].coeff());
}
}
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