# MATLAB Solving equations problem

I want to solve these equations using MATLAB and I am sure there is a non zero solution. The equations are:

``````0.7071*x            + 0.7071*z = x
-0.5*x + 0.7071*y +    0.5*z = y
-0.5*x - 0.7071*y +    0.5*z = z
``````

I wrote in MATLAB:

``````[x,y,z]=solve('0.7071 * x+0.7071 * z=x','-0.5 * x+0.7071 * y+0.5 * z=y','-0.5 * x-0.7071 * y+0.5 * z=z');
``````

But the result is x = y = z = 0. As I said I am sure that there is a solution. Can any one help?

-
As the first equation is lacking y it should not be difficult to find the solution by hand. What do you get? –  Peter Mortensen Nov 13 '09 at 12:42
+/- signs wouldn't have any effect. –  Nzbuu Nov 13 '09 at 13:38
@Hani: Why are you sure there is a non-zero solution? –  Peter Mortensen Nov 13 '09 at 14:48
...because it's a rotation matrix of the first kind. As such it has an eigenvector for the eigenvalue of 1. This eigenvector is the rotation axis and a nontrivial solution. –  sellibitze Nov 13 '09 at 17:12
MuPAD also says the solution is x=y=z=0, when I ask it to find solutions assuming x<> 0, it just give me the empty solution. –  Lasse V. Karlsen Nov 13 '09 at 17:19

You're looking for a non-trivial solution v to A*v=v with v=[x;y;z] and...

``````A =
0.70710678118655                  0   0.70710678118655
-0.50000000000000   0.70710678118655   0.50000000000000
-0.50000000000000  -0.70710678118655   0.50000000000000
``````

You can transform this into (A-I)v=0 where I is the 3x3 identity matrix. What you have to do to find a nontrivial solution is checking the null space of A-I:

``````>> null(A-eye(3))

ans =

0.67859834454585
-0.67859834454585
0.28108463771482
``````

So, you have a onedimensional nullspace. Otherwise you'd see more than one column. Every linear combination of the columns is a point in this null space that A-I maps to the null vector. So, every multiple of this vector is a solution to your problem.

Actually, your matrix A is a rotation matrix of the first kind because det(A)=1 and A'*A=identity. So it has an eigenvalue of 1 with the rotation axis as corresponding eigenvector. The vector I computed above is the normalized rotation axis.

Note: For this I replaced your 0.7071 with sqrt(0.5). If rounding errors are a concern but you know in advance that there has to be a nontrivial solution the best bet is to do a singular value decomposition of A-I and pick the right most right singular vector:

``````>> [u,s,v] = svd(A-eye(3));
>> v(:,end)

ans =

0.67859834454585
-0.67859834454585
0.28108463771482
``````

This way you can calculate a vector v that minimizes |A*v-v| under the constraint that |v|=1 where |.| is the Euclidean norm.

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Thank you very much this is what exactly i want but frankly i could not understand how did you get it.Please could you advice me with a reference which describes this idea (not a fully Linear algebra book but only this idea ex: A chapter or a section from a book). –  Hani Nov 13 '09 at 19:14
What exactly is it that you don't understand? –  sellibitze Nov 13 '09 at 19:29
The null space, eigenvalue . Why A-I gives result although it is multiplied by v (A-I)v=0. I read what null function do in matlab but i could not understand it exactly. Why did you took the v only from svd result and what u and s represents. I really appreciate your description and your time spent to explain, but the problem lies beyond the fact that i learnt linear Algebra with out going deep in these topics and i dont have time now(just now) to read a full book for linear Algebra. With my grateful. Hani Almousli.. –  Hani Nov 13 '09 at 19:52
Forget about null. The important thing you should understand is what the SVD is and what the properties of these 3 matrices are. I suggest you do a little research on this topic on your own. Wikipedia is a good start, I suppose. –  sellibitze Nov 13 '09 at 20:23
Basically you're computing the eigenvectors of the matrix A : AX=lambda*X with lambda=1. `[V D] = eig(A)` and pick the vector `V(:,3)` corresponding to the real eigenvalue 1 `D(3,3)`. This page is might have some explanations: en.wikipedia.org/wiki/Eigenvalue,_eigenvector_and_eigenspace –  Amro Nov 14 '09 at 13:18

Friends use MATLAB command rref(A) for Ax=B.... It will give a upper triangular Matrix. Then u can calculate non-trivial solutions easily... But keep in mind that if rref(A)=I (as in your case) then non-trivial solutions do not exist. BEST OF LUCK

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``````A = [ 0.7071 0 0.7071 ;
-0.5 0.7071 0.5 ;
-0.5 -0.7071 0.5 ];
B = [1 ; 1 ; 1];

AA = A-diag(B)

-0.2929            0       0.7071
-0.5      -0.2929          0.5
-0.5      -0.7071         -0.5

BB = B-B

0
0
0

AA\BB

0
0
0
``````
-

I don't think you need to use the `solve` function as your equations is a system of linear equations.

Recast as a matrix equation:

``````Ax = B
``````

``````    | -0.2929   0.0      0.7071  |  | x |     | 0 |
| -0.5     -0.2929   0.5     |  | y |  =  | 0 |
| -0.5     -0.7071  -0.5     |  | z |     | 0 |
``````

Use the built-in functionally of MATLAB to solve it. See e.g. MATLAB: Solution of Linear Systems of Equations.

The core of MATLAB is to solve this kind of equation.

Using FreeMat (an open-source MATLAB-like environment with a GPL license; direct download URL for Windows installer):

``````   A = [ -0.2929 0.0 0.7071; -0.5 -0.2929 0.5; -0.5 -0.7071 -0.5 ]

B = [0.0; 0.0; 0.0]

A\B

ans =
0
0
0
``````

So the solution is: x = 0, y = 0, z = 0

The solution can also be derived by hand. Starting from the last two equations:

``````    -0.5*x + 0.7071*y +    0.5*z = y
-0.5*x - 0.7071*y +    0.5*z = z

0.2929*y =  -0.5*x + 0.5*z
0.7071*y =  -0.5*x + 0.5*z

0.2929*y = 0.7071*y
``````

Thus y = 0.0 and:

``````    0.7071*y =  -0.5*x + 0.5*z

0 =  -0.5*x + 0.5*z

0 =  -0.5*x + 0.5*z

0.5*x = 0.5*z

x = z
``````

Inserting in the first equation:

``````    0.7071*x + 0.7071*z = x

0.7071*x + 0.7071*x = x

1.4142*x = x
``````

Thus x = 0.0. And as x = z, then z = 0.0.

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I wrote A=[0.7071 0 0.7071;-0.5 0.7071 0.5; -0.5 -0.7071 0.5]<br/> [x;y;z]=A*[x;y;z]<br/> but it gives error. Note that the right hand side are x,y,z not zeros.Please could you write it in Matlab for me. –  Hani Nov 13 '09 at 12:06
I have updated the question with code that should run in MATLAB. –  Peter Mortensen Nov 13 '09 at 12:43
Thanks for your interest but the B array should be [x;y;z] and the equation you wrote are not like the equations which i wrote in the questions. –  Hani Nov 13 '09 at 12:52
yes but send B to the other side, and you get the form above –  Amro Nov 13 '09 at 13:05
-1 You messed up somewhere. There is a nontrivial solution. In fact, there are infinitely many because the matrix T of your Tv=0 system is singular. –  sellibitze Nov 13 '09 at 17:16

x = 0, y = 0, z = 0 is the correct solution. This problem can be easily worked by hand.

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It is A solution. It is NOT the solution desired by the question. Null gives the non-trivial solution. –  user85109 Nov 14 '09 at 22:57