NAG Library Function Document

nag_rand_field_1d_predef_setup (g05znc)

 Contents

    1  Purpose
    7  Accuracy

1
Purpose

nag_rand_field_1d_predef_setup (g05znc) performs the setup required in order to simulate stationary Gaussian random fields in one dimension, for a preset variogram, using the circulant embedding method. Specifically, the eigenvalues of the extended covariance matrix (or embedding matrix) are calculated, and their square roots output, for use by nag_rand_field_1d_generate (g05zpc), which simulates the random field.

2
Specification

#include <nag.h>
#include <nagg05.h>
void  nag_rand_field_1d_predef_setup (Integer ns, double xmin, double xmax, Integer maxm, double var, Nag_Variogram cov, Integer np, const double params[], Nag_EmbedPad pad, Nag_EmbedScale corr, double lam[], double xx[], Integer *m, Integer *approx, double *rho, Integer *icount, double eig[], NagError *fail)

3
Description

A one-dimensional random field Zx in  is a function which is random at every point x, so Zx is a random variable for each x. The random field has a mean function μx=𝔼Zx and a symmetric positive semidefinite covariance function Cx,y=𝔼Zx-μxZy-μy. Zx is a Gaussian random field if for any choice of n and x1,,xn, the random vector Zx1,,ZxnT follows a multivariate Normal distribution, which would have a mean vector μ~ with entries μ~i=μxi and a covariance matrix C~ with entries C~ij=Cxi,xj. A Gaussian random field Zx is stationary if μx is constant for all x and Cx,y=Cx+a,y+a for all x,y,a and hence we can express the covariance function Cx,y as a function γ of one variable: Cx,y=γx-y. γ is known as a variogram (or more correctly, a semivariogram) and includes the multiplicative factor σ2 representing the variance such that γ0=σ2.
The functions nag_rand_field_1d_predef_setup (g05znc) and nag_rand_field_1d_generate (g05zpc) are used to simulate a one-dimensional stationary Gaussian random field, with mean function zero and variogram γx, over an interval xmin,xmax, using an equally spaced set of N points. The problem reduces to sampling a Normal random vector X of size N, with mean vector zero and a symmetric Toeplitz covariance matrix A. Since A is in general expensive to factorize, a technique known as the circulant embedding method is used. A is embedded into a larger, symmetric circulant matrix B of size M2N-1, which can now be factorized as B=WΛW*=R*R, where W is the Fourier matrix (W* is the complex conjugate of W), Λ is the diagonal matrix containing the eigenvalues of B and R=Λ12W*. B is known as the embedding matrix. The eigenvalues can be calculated by performing a discrete Fourier transform of the first row (or column) of B and multiplying by M, and so only the first row (or column) of B is needed – the whole matrix does not need to be formed.
As long as all of the values of Λ are non-negative (i.e., B is positive semidefinite), B is a covariance matrix for a random vector Y, two samples of which can now be simulated from the real and imaginary parts of R*U+iV, where U and V have elements from the standard Normal distribution. Since R*U+iV=WΛ12U+iV, this calculation can be done using a discrete Fourier transform of the vector Λ12U+iV. Two samples of the random vector X can now be recovered by taking the first N elements of each sample of Y – because the original covariance matrix A is embedded in B, X will have the correct distribution.
If B is not positive semidefinite, larger embedding matrices B can be tried; however if the size of the matrix would have to be larger than maxm, an approximation procedure is used. We write Λ=Λ++Λ-, where Λ+ and Λ- contain the non-negative and negative eigenvalues of B respectively. Then B is replaced by ρB+ where B+=WΛ+W* and ρ0,1 is a scaling factor. The error ε in approximating the distribution of the random field is given by
ε= 1-ρ 2 traceΛ + ρ2 traceΛ- M .  
Three choices for ρ are available, and are determined by the input argument corr:
nag_rand_field_1d_predef_setup (g05znc) finds a suitable positive semidefinite embedding matrix B and outputs its size, m, and the square roots of its eigenvalues in lam. If approximation is used, information regarding the accuracy of the approximation is output. Note that only the first row (or column) of B is actually formed and stored.

4
References

Dietrich C R and Newsam G N (1997) Fast and exact simulation of stationary Gaussian processes through circulant embedding of the covariance matrix SIAM J. Sci. Comput. 18 1088–1107
Schlather M (1999) Introduction to positive definite functions and to unconditional simulation of random fields Technical Report ST 99–10 Lancaster University
Wood A T A and Chan G (1997) Algorithm AS 312: An Algorithm for Simulating Stationary Gaussian Random Fields Journal of the Royal Statistical Society, Series C (Applied Statistics) (Volume 46) 1 171–181

5
Arguments

1:     ns IntegerInput
On entry: the number of sample points to be generated in realizations of the random field.
Constraint: ns1.
2:     xmin doubleInput
On entry: the lower bound for the interval over which the random field is to be simulated. Note that if cov=Nag_VgmBrownian (for simulating fractional Brownian motion), xmin is not referenced and the lower bound for the interval is set to zero.
Constraint: if covNag_VgmBrownian, xmin<xmax.
3:     xmax doubleInput
On entry: the upper bound for the interval over which the random field is to be simulated. Note that if cov=Nag_VgmBrownian (for simulating fractional Brownian motion), the lower bound for the interval is set to zero and so xmax is required to be greater than zero.
Constraints:
  • if covNag_VgmBrownian, xmin<xmax;
  • if cov=Nag_VgmBrownian, xmax>0.0.
4:     maxm IntegerInput
On entry: the maximum size of the circulant matrix to use. For example, if the embedding matrix is to be allowed to double in size three times before the approximation procedure is used, then choose maxm = 2k+2  where k = 1+ log2ns-1 .
Suggested value: 2k+2​ where ​ k = 1+ log2ns-1 .
Constraint: maxm 2 k , where k is the smallest integer satisfying 2 k 2 ns-1 .
5:     var doubleInput
On entry: the multiplicative factor σ2 of the variogram γx.
Constraint: var0.0.
6:     cov Nag_VariogramInput
On entry: determines which of the preset variograms to use. The choices are given below. Note that x=x, where  is the correlation length and is a parameter for most of the variograms, and σ2 is the variance specified by var.
cov=Nag_VgmSymmStab
Symmetric stable variogram
γx = σ2 exp - x ν ,  
where
  • =params[0], >0,
  • ν=params[1], 0ν2.
cov=Nag_VgmCauchy
Cauchy variogram
γx = σ2 1+ x 2 -ν ,  
where
  • =params[0], >0,
  • ν=params[1], ν>0.
cov=Nag_VgmDifferential
Differential variogram with compact support
γx = σ21+8x+25x2+32x31-x8, x<1, 0, x1,  
where
  • =params[0], >0.
cov=Nag_VgmExponential
Exponential variogram
γx=σ2exp-x,  
where
  • =params[0], >0.
cov=Nag_VgmGauss
Gaussian variogram
γx=σ2exp-x2,  
where
  • =params[0], >0.
cov=Nag_VgmNugget
Nugget variogram
γx= σ2, x=0, 0, x0.  
No parameters need be set for this value of cov.
cov=Nag_VgmSpherical
Spherical variogram
γx= σ21-1.5x+0.5x3, x<1, 0, x1,  
where
  • =params[0], >0.
cov=Nag_VgmBessel
Bessel variogram
γx=σ22νΓν+1Jνxxν,  
where
  • Jν(·) is the Bessel function of the first kind,
  • =params[0], >0,
  • ν=params[1], ν-0.5.
cov=Nag_VgmHole
Hole effect variogram
γx=σ2sinxx,  
where
  • =params[0], >0.
cov=Nag_VgmWhittleMatern
Whittle-Matérn variogram
γx=σ221-νxνKνxΓν,  
where
  • Kν(·) is the modified Bessel function of the second kind,
  • =params[0], >0,
  • ν=params[1], ν>0.
cov=Nag_VgmContParam
Continuously parameterised variogram with compact support
γx= σ221-νxνKνxΓν1+8x+25x2+32x31-x8, x<1, 0, x1,  
where
  • x = xs ,
  • Kν(·) is the modified Bessel function of the second kind,
  • =params[0], >0,
  • s=params[1], s>0 (second correlation length),
  • ν=params[2], ν>0.
cov=Nag_VgmGenHyp
Generalized hyperbolic distribution variogram
γx=σ2δ2+x2λ2δλKλκδKλκδ2+x212,  
where
  • Kλ(·) is the modified Bessel function of the second kind,
  • =params[0], >0,
  • λ=params[1], no constraint on λ
  • δ=params[2], δ>0,
  • κ=params[3], κ>0.
cov=Nag_VgmCosine
Cosine variogram
γx=σ2cosx,  
where
  • =params[0], >0.
cov=Nag_VgmBrownian
Used for simulating fractional Brownian motion BHt. Fractional Brownian motion itself is not a stationary Gaussian random field, but its increments X~i=BHti-BHti-1 can be simulated in the same way as a stationary random field. The variogram for the so-called ‘increment process’ is
CX~ti,X~tj=γ~x=δ2H2xδ-12H+xδ+12H-2xδ2H,  
where
  • x=tj-ti,
  • H=params[0], 0<H<1, H is the Hurst parameter,
  • δ=params[1], δ>0, normally δ=ti-ti-1 is the (fixed) stepsize.
We scale the increments to set γ0=1; let Xi=X~iδ-H, then
CXti,Xtj = γx = 12 xδ - 1 2H + xδ + 1 2H - 2 xδ 2H .  
The increments Xi can then be simulated using nag_rand_field_1d_generate (g05zpc), then multiplied by δH to obtain the original increments X~i for the fractional Brownian motion.
Constraint: cov=Nag_VgmSymmStab, Nag_VgmCauchy, Nag_VgmDifferential, Nag_VgmExponential, Nag_VgmGauss, Nag_VgmNugget, Nag_VgmSpherical, Nag_VgmBessel, Nag_VgmHole, Nag_VgmWhittleMatern, Nag_VgmContParam, Nag_VgmGenHyp, Nag_VgmCosine or Nag_VgmBrownian.
7:     np IntegerInput
On entry: the number of parameters to be set. Different variograms need a different number of parameters.
cov=Nag_VgmNugget
np must be set to 0.
cov=Nag_VgmDifferential, Nag_VgmExponential, Nag_VgmGauss, Nag_VgmSpherical, Nag_VgmHole or Nag_VgmCosine
np must be set to 1.
cov=Nag_VgmSymmStab, Nag_VgmCauchy, Nag_VgmBessel, Nag_VgmWhittleMatern or Nag_VgmBrownian
np must be set to 2.
cov=Nag_VgmContParam
np must be set to 3.
cov=Nag_VgmGenHyp
np must be set to 4.
8:     params[np] const doubleInput
On entry: the parameters set for the variogram.
Constraint: see cov for a description of the individual parameter constraints.
9:     pad Nag_EmbedPadInput
On entry: determines whether the embedding matrix is padded with zeros, or padded with values of the variogram. The choice of padding may affect how big the embedding matrix must be in order to be positive semidefinite.
pad=Nag_EmbedPadZeros
The embedding matrix is padded with zeros.
pad=Nag_EmbedPadValues
The embedding matrix is padded with values of the variogram.
Suggested value: pad=Nag_EmbedPadValues.
Constraint: pad=Nag_EmbedPadZeros or Nag_EmbedPadValues.
10:   corr Nag_EmbedScaleInput
On entry: determines which approximation to implement if required, as described in Section 3.
Suggested value: corr=Nag_EmbedScaleTraces.
Constraint: corr=Nag_EmbedScaleTraces, Nag_EmbedScaleSqrtTraces or Nag_EmbedScaleOne.
11:   lam[maxm] doubleOutput
On exit: contains the square roots of the eigenvalues of the embedding matrix.
12:   xx[ns] doubleOutput
On exit: the points at which values of the random field will be output.
13:   m Integer *Output
On exit: the size of the embedding matrix.
14:   approx Integer *Output
On exit: indicates whether approximation was used.
approx=0
No approximation was used.
approx=1
Approximation was used.
15:   rho double *Output
On exit: indicates the scaling of the covariance matrix. rho=1.0 unless approximation was used with corr=Nag_EmbedScaleTraces or Nag_EmbedScaleSqrtTraces.
16:   icount Integer *Output
On exit: indicates the number of negative eigenvalues in the embedding matrix which have had to be set to zero.
17:   eig[3] doubleOutput
On exit: indicates information about the negative eigenvalues in the embedding matrix which have had to be set to zero. eig[0] contains the smallest eigenvalue, eig[1] contains the sum of the squares of the negative eigenvalues, and eig[2] contains the sum of the absolute values of the negative eigenvalues.
18:   fail NagError *Input/Output
The NAG error argument (see Section 3.7 in How to Use the NAG Library and its Documentation).

6
Error Indicators and Warnings

NE_ALLOC_FAIL
Dynamic memory allocation failed.
See Section 2.3.1.2 in How to Use the NAG Library and its Documentation for further information.
NE_BAD_PARAM
On entry, argument value had an illegal value.
NE_ENUM_INT
On entry, np=value.
Constraint: for cov=value, np=value.
NE_ENUM_REAL_1
On entry, cov=Nag_VgmBrownian and xmax=value.
Constraint: xmax>0.0.
On entry, params[value]=value.
Constraint: dependent on cov.
NE_ENUM_REAL_2
On entry, covNag_VgmBrownian, xmin=value and xmax=value.
Constraint: xmin<xmax.
NE_INT
On entry, maxm=value.
Constraint: the minimum calculated value for maxm is value.
Where the minimum calculated value is given by 2 k , where k is the smallest integer satisfying 2 k 2 ns-1 .
On entry, ns=value.
Constraint: ns1.
NE_INTERNAL_ERROR
An internal error has occurred in this function. Check the function call and any array sizes. If the call is correct then please contact NAG for assistance.
See Section 2.7.6 in How to Use the NAG Library and its Documentation for further information.
NE_NO_LICENCE
Your licence key may have expired or may not have been installed correctly.
See Section 2.7.5 in How to Use the NAG Library and its Documentation for further information.
NE_REAL
On entry, var=value.
Constraint: var0.0.

7
Accuracy

If on exit approx=1, see the comments in Section 3 regarding the quality of approximation; increase the value of maxm to attempt to avoid approximation.

8
Parallelism and Performance

nag_rand_field_1d_predef_setup (g05znc) is threaded by NAG for parallel execution in multithreaded implementations of the NAG Library.
nag_rand_field_1d_predef_setup (g05znc) makes calls to BLAS and/or LAPACK routines, which may be threaded within the vendor library used by this implementation. Consult the documentation for the vendor library for further information.
Please consult the x06 Chapter Introduction for information on how to control and interrogate the OpenMP environment used within this function. Please also consult the Users' Note for your implementation for any additional implementation-specific information.

9
Further Comments

None.

10
Example

This example calls nag_rand_field_1d_predef_setup (g05znc) to calculate the eigenvalues of the embedding matrix for 8 sample points of a random field characterized by the symmetric stable variogram (cov=Nag_VgmSymmStab).

10.1
Program Text

Program Text (g05znce.c)

10.2
Program Data

Program Data (g05znce.d)

10.3
Program Results

Program Results (g05znce.r)

© The Numerical Algorithms Group Ltd, Oxford, UK. 2017