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Irina Vaviļčenkova, Svetlana Asmuss ELEVENTH INTERNATIONAL CONFERENCE ON FUZZY SET THEORY AND APPLICATIONS Liptovský Ján, Slovak Republic, January 30 - February 3, 2012 Department of Mathematics, University of Latvia

On spline based fuzzy transforms

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Department of Mathematics, University of Latvia. On spline based fuzzy transforms. Irina Vaviļčenkova, Svetlana Asmuss. ELEVENTH INTERNATIONAL CONFERENCE ON FUZZY SET THEORY AND APPLICATIONS. Liptovský Ján, Slovak Republic , January 30 - February 3, 2012. - PowerPoint PPT Presentation

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Page 1: On spline based fuzzy transforms

Irina Vaviļčenkova, Svetlana Asmuss

ELEVENTH INTERNATIONAL CONFERENCE ON FUZZY SET THEORY AND APPLICATIONS

Liptovský Ján, Slovak Republic, January 30 - February 3, 2012

Department of Mathematics, University of Latvia

Page 2: On spline based fuzzy transforms

 

This talk is devoted to F-transform (fuzzy transform). The core idea of fuzzy

transform is inwrought with an interval fuzzy partitioning into fuzzy subsets,

determined by their membership functions. In this work we consider polynomial

splines of degree m and defect 1 with respect to the mesh of an interval with some

additional nodes. The idea of the direct F-transform is transformation from a

function space to a finite dimensional vector space. The inverse F-transform is

transformation back to the function space.

Page 3: On spline based fuzzy transforms

Fuzzy partitions

Page 4: On spline based fuzzy transforms

 

The fuzzy transform was proposed by I. Perfilieva in 2003 and studied in several papers

[1] I. Perfilieva, Fuzzy transforms: Theory and applications, Fuzzy Sets and Systems, 157 (2006) 993–1023.

 [2] I. Perfilieva, Fuzzy transforms, in: J.F. Peters, et al. (Eds.),

Transactions on Rough Sets II, Lecture Notes in Computer Science, vol. 3135, 2004, pp. 63–81.

 [3] L. Stefanini, F- transform with parametric generalized fuzzy

partitions, Fuzzy Sets and Systems 180 (2011) 98–120.

[4] I. Perfilieva, V. Kreinovich, Fuzzy transforms of higher order approximate derivatives: A theorem , Fuzzy Sets and Systems 180 (2011) 55–68.

[5] G. Patanè, Fuzzy transform and least-squares approximation: Analogies, differences, and generalizations, Fuzzy Sets and Systems 180 (2011) 41–54.

Page 5: On spline based fuzzy transforms

Classical fuzzy partition

Page 6: On spline based fuzzy transforms
Page 7: On spline based fuzzy transforms
Page 8: On spline based fuzzy transforms

An uniform fuzzy partition of the interval [0, 9] by fuzzy sets with triangular shaped membership funcions n=7

Page 9: On spline based fuzzy transforms

Polynomial splines

Page 10: On spline based fuzzy transforms

Quadratic spline construction

Page 11: On spline based fuzzy transforms

Cubic spline construction

Page 12: On spline based fuzzy transforms

An uniform fuzzy partition of the interval [0, 9] by fuzzy sets with cubic spline membership funcions n=7

Page 13: On spline based fuzzy transforms

Generally basic functions are specified by the mesh

but when we construct those functions with the help of polynomial splines we use additional nodes.

On additional nodes

where k directly depends on the degree of a spline used for constructing basic functions and the number of nodes in the original mesh

Page 14: On spline based fuzzy transforms

Additional nodes for splines with degree 1,2,3...m (uniform partition)

Page 15: On spline based fuzzy transforms

We consider additional nodes as parameters of fuzzy partition: the shape of basic functions depends of the choise of additional nodes

Page 16: On spline based fuzzy transforms

Direct F – transform

Page 17: On spline based fuzzy transforms

Inverse F-transform

The error of the inverse F-transform

Page 18: On spline based fuzzy transforms

Inverse F-transforms of the test function f(x)=sin(xπ/9)

Page 19: On spline based fuzzy transforms

Inverse F-transform errors in intervals for the test function f(x)=sin(xπ/9) in case of different basic functions, 3/2 step.

Page 20: On spline based fuzzy transforms

Inverse F-transform and inverse H-transform of the test function f(x)=sin(1/x) in case of linear spline basic functions, n=10 un n=20

Page 21: On spline based fuzzy transforms

Inverse F-transform and inverse H-transform of the test function f(x)=sin(1/x) in case of quadratic spline basic functions, n=10 un n=20

Page 22: On spline based fuzzy transforms

Inverse F-transform and inverse H-transform of the test function f(x)=sin(1/x) in case of cubic spline basic functions, n=10 un n=20

Page 23: On spline based fuzzy transforms

Generalized fuzzy partition

Page 24: On spline based fuzzy transforms
Page 25: On spline based fuzzy transforms
Page 26: On spline based fuzzy transforms

An uniform fuzzy partition and a fuzzy m-partition of the interval [0, 9] based on cubic spline membership funcions, n=7, m=3

Page 27: On spline based fuzzy transforms
Page 28: On spline based fuzzy transforms

Numerical example

Page 29: On spline based fuzzy transforms

Numerical example: approximation of derivatives

Page 30: On spline based fuzzy transforms

Approximation of derrivatives

Page 31: On spline based fuzzy transforms

F-transform and least-squares approximation

Page 32: On spline based fuzzy transforms

Direct transform

Page 33: On spline based fuzzy transforms
Page 34: On spline based fuzzy transforms

Direct transform matrix analysis

Matrix M1 for linear spline basic functions

The evaluation of inverse matrix norm is true

Page 35: On spline based fuzzy transforms

Matrix M2 for quadratic spline basic functions

The evaluation of inverse matrix norm is true

Page 36: On spline based fuzzy transforms

Matrix M3 for cubic spline basic functions

The evaluation of inverse matrix norm is true

Page 37: On spline based fuzzy transforms
Page 38: On spline based fuzzy transforms
Page 39: On spline based fuzzy transforms

Inverse transform

The error of the inverse transform

Page 40: On spline based fuzzy transforms

Inverse transforms of the test function f(x)=sin(xπ/9) in case of quadratic spline basic functions, n=7

Page 41: On spline based fuzzy transforms

Inverse transforms approximation errors of the test function f(x)=sin(xπ/9) in case of quadratic spline basic functions,

for n=10, n=20, n=40.

Page 42: On spline based fuzzy transforms

Inverse transforms of the test function f(x)=sin(xπ/9) in case of cubic spline basic functions, n=7

Page 43: On spline based fuzzy transforms

Inverse transforms approximation errors of the test function f(x)=sin(xπ/9) in case of cubic spline basic functions,

for n=10, n=20, n=40.

Page 44: On spline based fuzzy transforms