Presentation is loading. Please wait.

Presentation is loading. Please wait.

1 Iterative Solution Methods Starts with an initial approximation for the solution vector (x 0 ) At each iteration updates the x vector by using the sytem.

Similar presentations


Presentation on theme: "1 Iterative Solution Methods Starts with an initial approximation for the solution vector (x 0 ) At each iteration updates the x vector by using the sytem."— Presentation transcript:

1 1 Iterative Solution Methods Starts with an initial approximation for the solution vector (x 0 ) At each iteration updates the x vector by using the sytem Ax=b During the iterations A, matrix is not changed so sparcity is preserved Each iteration involves a matrix-vector product If A is sparse this product is efficiently done

2 2 Iterative solution procedure Write the system Ax=b in an equivalent form x=Ex+f (like x=g(x) for fixed-point iteration) Starting with x 0, generate a sequence of approximations {x k } iteratively by x k+1 =Ex k +f Representation of E and f depends on the type of the method used But for every method E and f are obtained from A and b, but in a different way

3 3 Convergence As k , the sequence {x k } converges to the solution vector under some conditions on E matrix This imposes different conditions on A matrix for different methods For the same A matrix, one method may converge while the other may diverge Therefore for each method the relation between A and E should be found to decide on the convergence

4 4 Different Iterative methods Jacobi Iteration Gauss-Seidel Iteration Successive Over Relaxation (S.O.R) SOR is a method used to accelerate the convergence Gauss-Seidel Iteration is a special case of SOR method

5 5 Jacobi iteration

6 6 x k+1 =Ex k +f iteration for Jacobi method A can be written as A=L+D+U (not decomposition) x k+1 =-D -1 (L+U)x k +D -1 b E=-D -1 (L+U) f=D -1 b Ax=b  (L+D+U)x=b Dx k+1 =-(L+U)x k +b Dx k+1

7 7 Gauss-Seidel (GS) iteration Use the latest update

8 8 x (k+1) =Ex (k) +f iteration for Gauss-Seidel x k+1 =-(D+L) -1 Ux k +(D+L) -1 b E=-(D+L) -1 U f=-(D+L) -1 b Ax=b  (L+D+U)x=b (D+L)x k+1 =-Ux k +b Dx k+1

9 9 Comparison Gauss-Seidel iteration converges more rapidly than the Jacobi iteration since it uses the latest updates But there are some cases that Jacobi iteration does converge but Gauss-Seidel does not To accelerate the Gauss-Seidel method even further, successive over relaxation method can be used

10 10 Successive Over Relaxation Method GS iteration can be also written as follows Correction term Multiply with Faster convergence

11 11 SOR 1<  <2 over relaxation (faster convergence) 0<  <1 under relaxation (slower convergence) There is an optimum value for  Find it by trial and error (usually around 1.6)

12 12 x (k+1) =Ex (k) +f iteration for SOR Dx k+1 =(1-  )Dx k +  b-  Lx k+1 -  Ux k (D+  L)x k+1 =[(1-  )D-  U]x k +  b E=(D+  L) -1 [(1-  )D-  U] f=  (D+  L) -1 b

13 13 The Conjugate Gradient Method Converges if A is a symmetric positive definite matrix Convergence is faster

14 14 Convergence of Iterative Methods Define the solution vector as Define an error vector as Substitute this into

15 15 Convergence of Iterative Methods Convergence condition iteration power The iterative method will converge for any initial iteration vector if the following condition is satisfied

16 16 Norm of a vector A vector norm should satisfy these conditions Vector norms can be defined in different forms as long as the norm definition satisfies these conditions

17 17 Commonly used vector norms Sum norm or ℓ 1 norm Euclidean norm or ℓ 2 norm Maximum norm or ℓ  norm

18 18 Norm of a matrix A matrix norm should satisfy these conditions Important identitiy

19 19 Commonly used matrix norms Maximum column-sum norm or ℓ 1 norm Spectral norm or ℓ 2 norm Maximum row-sum norm or ℓ  norm

20 20 Example Compute the ℓ 1 and ℓ  norms of the matrix 17 13 15 16 1910

21 21 Convergence condition Express E in terms of modal matrix P and   :Diagonal matrix with eigenvalues of E on the diagonal

22 22 Sufficient condition for convergence If the magnitude of all eigenvalues of iteration matrix E is less than 1 than the iteration is convergent It is easier to compute the norm of a matrix than to compute its eigenvalues is a sufficient condition for convergence

23 23 Convergence of Jacobi iteration E=-D -1 (L+U)

24 24 Convergence of Jacobi iteration Evaluate the infinity(maximum row sum) norm of E Diagonally dominant matrix If A is a diagonally dominant matrix, then Jacobi iteration converges for any initial vector

25 25 Stopping Criteria Ax=b At any iteration k, the residual term is r k =b-Ax k Check the norm of the residual term ||b-Ax k || If it is less than a threshold value stop

26 26 Example 1 (Jacobi Iteration) Diagonally dominant matrix

27 27 Example 1 continued... Matrix is diagonally dominant, Jacobi iterations are converging

28 28 Example 2 The matrix is not diagonally dominant

29 29 Example 2 continued... The residual term is increasing at each iteration, so the iterations are diverging. Note that the matrix is not diagonally dominant

30 30 Convergence of Gauss-Seidel iteration GS iteration converges for any initial vector if A is a diagonally dominant matrix GS iteration converges for any initial vector if A is a symmetric and positive definite matrix Matrix A is positive definite if x T Ax>0 for every nonzero x vector

31 31 Positive Definite Matrices A matrix is positive definite if all its eigenvalues are positive A symmetric diagonally dominant matrix with positive diagonal entries is positive definite If a matrix is positive definite All the diagonal entries are positive The largest (in magnitude) element of the whole matrix must lie on the diagonal

32 32 Positive Definitiness Check Not positive definite Largest element is not on the diagonal Not positive definite All diagonal entries are not positive Positive definite Symmetric, diagonally dominant, all diagonal entries are positive

33 33 Positive Definitiness Check A decision can not be made just by investigating the matrix. The matrix is diagonally dominant and all diagonal entries are positive but it is not symmetric. To decide, check if all the eigenvalues are positive

34 34 Example (Gauss-Seidel Iteration) Diagonally dominant matrix Jacobi iteration

35 35 Example 1 continued... Jacobi iteration When both Jacobi and Gauss-Seidel iterations converge, Gauss-Seidel converges faster

36 36 Convergence of SOR method If 0<  <2, SOR method converges for any initial vector if A matrix is symmetric and positive definite If  >2, SOR method diverges If 0<  <1, SOR method converges but the convergence rate is slower (deceleration) than the Gauss-Seidel method.

37 37 Operation count The operation count for Gaussian Elimination or LU Decomposition was 0 (n 3 ), order of n 3. For iterative methods, the number of scalar multiplications is 0 (n 2 ) at each iteration. If the total number of iterations required for convergence is much less than n, then iterative methods are more efficient than direct methods. Also iterative methods are well suited for sparse matrices


Download ppt "1 Iterative Solution Methods Starts with an initial approximation for the solution vector (x 0 ) At each iteration updates the x vector by using the sytem."

Similar presentations


Ads by Google