matlab中自带的sobol的函数提供的sobol序列

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matlab中自带的sobol的函数提供的sobol序列

2022-12-08 13:37| 来源: 网络整理| 查看: 265

 

1 clc; 2 clear all; 3 close all; 4 M=9;% 维度,几个参数 5 nPop=200; 6 VarMin=[0.6, 0.10, 0.002, 0.02, 0.17, 0.0, 0.17, 0.0, 0.0];%各个参数下限 7 VarMax=[2.0, 0.49, 0.05, 0.30, 2.6, 0.0, 1.30, 0.99, 5.0];%各个参数上限 8 p = sobolset(M); 9 % R=p(1:nPop,:);% 我只用前nPop个 10 R=[]; 11 for i=1:nPop 12 r=p(i,:); 13 r=VarMin+r.*(VarMax-VarMin); 14 R=[R; r]; 15 end 16 plot(R(:,1),'b*')

 

 

当然,matlab中还有其余的抽样类型:

 

Construct Halton quasi-random point set、Latin hypercube sample、Construct Sobol quasi-random point set、Continuous uniform random numbers

 

 

 

haltonset

Class: haltonset

Construct Halton quasi-random point set

Syntax

p = haltonset(d)p = haltonset(d,prop1,val1,prop2,val2,...)

    Description

p = haltonset(d) constructs a d-dimensional point set p of the haltonset class, with default property settings.

p = haltonset(d,prop1,val1,prop2,val2,...) specifies property name/value pairs used to construct p.

The object p returned by haltonset encapsulates properties of a specified quasi-random sequence. The point set is finite, with a length determined by the Skip and Leap properties and by limits on the size of point set indices (maximum value of 253). Values of the point set are not generated and stored in memory until you access p using net or parenthesis indexing.

  Examples

Generate a 3-D Halton point set, skip the first 1000 values, and then retain every 101st point:

p = haltonset(3,'Skip',1e3,'Leap',1e2) p = Halton point set in 3 dimensions (8.918019e+013 points) Properties: Skip : 1000 Leap : 100 ScrambleMethod : none

Use scramble to apply reverse-radix scrambling:

p = scramble(p,'RR2') p = Halton point set in 3 dimensions (8.918019e+013 points) Properties: Skip : 1000 Leap : 100 ScrambleMethod : RR2

Use net to generate the first four points:

X0 = net(p,4) X0 = 0.0928 0.6950 0.0029 0.6958 0.2958 0.8269 0.3013 0.6497 0.4141 0.9087 0.7883 0.2166

Use parenthesis indexing to generate every third point, up to the 11th point:

X = p(1:3:11,:) X = 0.0928 0.6950 0.0029 0.9087 0.7883 0.2166 0.3843 0.9840 0.9878 0.6831 0.7357 0.7923   References

[1] Kocis, L., and W. J. Whiten. "Computational Investigations of Low-Discrepancy Sequences." ACM Transactions on Mathematical Software. Vol. 23, No. 2, 1997, pp. 266–294.

lhsdesign

Latin hypercube sample

Syntax

X = lhsdesign(n,p)X = lhsdesign(...,'smooth','off')X = lhsdesign(...,'criterion',criterion)X = lhsdesign(...,'iterations',k)

    Description

X = lhsdesign(n,p) returns an n-by-p matrix, X, containing a latin hypercube sample of n values on each of p variables. For each column of X, then values are randomly distributed with one from each interval (0,1/n), (1/n,2/n), ..., (1-1/n,1), and they are randomly permuted.

X = lhsdesign(...,'smooth','off') produces points at the midpoints of the above intervals: 0.5/n, 1.5/n, ..., 1-0.5/n. The default is 'on'.

X = lhsdesign(...,'criterion',criterion) iteratively generates latin hypercube samples to find the best one according to criterion, which can be 'none', 'maximin', or 'correlation'.

CriterionDescription

'none'

No iteration.

'maximin'

Maximize minimum distance between points. This is the default.

'correlation'

Reduce correlation.

 

X = lhsdesign(...,'iterations',k) iterates up to k times in an attempt to improve the design according to the specified criterion. The default isk = 5.

sobolset

Class: sobolset

Construct Sobol quasi-random point set

Syntax

p = sobolset(d)p = sobolset(d,prop1,val1,prop2,val2,...)

    Description

p = sobolset(d) constructs a d-dimensional point set p of the sobolset class, with default property settings.

p = sobolset(d,prop1,val1,prop2,val2,...) specifies property name/value pairs used to construct p.

The object p returned by sobolset encapsulates properties of a specified quasi-random sequence. The point set is finite, with a length determined by the Skip and Leap properties and by limits on the size of point set indices (maximum value of 253). Values of the point set are not generated and stored in memory until you access p using net or parenthesis indexing.

  Examples

Generate a 3-D Sobol point set, skip the first 1000 values, and then retain every 101st point:

p = sobolset(3,'Skip',1e3,'Leap',1e2) p = Sobol point set in 3 dimensions (8.918019e+013 points) Properties: Skip : 1000 Leap : 100 ScrambleMethod : none PointOrder : standard

Use scramble to apply a random linear scramble combined with a random digital shift:

p = scramble(p,'MatousekAffineOwen') p = Sobol point set in 3 dimensions (8.918019e+013 points) Properties: Skip : 1000 Leap : 100 ScrambleMethod : MatousekAffineOwen PointOrder : standard

Use net to generate the first four points:

X0 = net(p,4) X0 = 0.7601 0.5919 0.9529 0.1795 0.0856 0.0491 0.5488 0.0785 0.8483 0.3882 0.8771 0.8755

Use parenthesis indexing to generate every third point, up to the 11th point:

X = p(1:3:11,:) X = 0.7601 0.5919 0.9529 0.3882 0.8771 0.8755 0.6905 0.4951 0.8464 0.1955 0.5679 0.3192   References

[1] Bratley, P., and B. L. Fox. "Algorithm 659 Implementing Sobol's Quasirandom Sequence Generator." ACM Transactions on Mathematical Software. Vol. 14, No. 1, 1988, pp. 88–100.

[2] Joe, S., and F. Y. Kuo. "Remark on Algorithm 659: Implementing Sobol's Quasirandom Sequence Generator." ACM Transactions on Mathematical Software. Vol. 29, No. 1, 2003, pp. 49–57.

[3] Hong, H. S., and F. J. Hickernell. "Algorithm 823: Implementing Scrambled Digital Sequences." ACM Transactions on Mathematical Software. Vol. 29, No. 2, 2003, pp. 95–109.

[4] Matousek, J. "On the L2-Discrepancy for Anchored Boxes." Journal of Complexity. Vol. 14, No. 4, 1998, pp. 527–556.

  See Also

haltonset | net | scramble

unifrnd

Continuous uniform random numbers

collapse all in page Syntax

R = unifrnd(A,B)R = unifrnd(A,B,m,n,...)R = unifrnd(A,B,[m,n,...])

    Description

R = unifrnd(A,B) returns an array R of random numbers generated from the continuous uniform distributions with lower and upper endpoints specified by A and B, respectively. If A and B are arrays, R(i,j) is generated from the distribution specified by the corresponding elements of A andB. If either A or B is a scalar, it is expanded to the size of the other input.

R = unifrnd(A,B,m,n,...) or R = unifrnd(A,B,[m,n,...]) returns an m-by-n-by-... array. If A and B are scalars, all elements of R are generated from the same distribution. If either A or B is an array, they must be m-by-n-by-... .

  Examples

Generate one random number each from the continuous uniform distributions on the intervals (0,1), (0,2), ..., (0,5):

a = 0; b = 1:5; r1 = unifrnd(a,b) r1 = 0.8147 1.8116 0.3810 3.6535 3.1618

Generate five random numbers each from the same distributions:

B = repmat(b,5,1); R = unifrnd(a,B) R = 0.0975 0.3152 0.4257 2.6230 3.7887 0.2785 1.9412 1.2653 0.1428 3.7157 0.5469 1.9143 2.7472 3.3965 1.9611 0.9575 0.9708 2.3766 3.7360 3.2774 0.9649 1.6006 2.8785 2.7149 0.8559

Generate five random numbers from the continuous uniform distribution on (0,2):

r2 = unifrnd(a,b(2),1,5) r2 = 1.4121 0.0637 0.5538 0.0923 0.1943   More About Uniform Distribution (Continuous)   See Also

rand | random | unifcdf | unifinv | unifit | unifpdf | unifstat

Introduced before R2006a

 

 



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