# Construct a function

starting from this code:

``````    clc, clear all, close all
tic

k1 = 0.01:0.1:100;
k2 = 0.01:0.1:100;
k3 = 0.01:0.1:100;

k = sqrt(k1.^2 + k2.^2 + k3.^2);

c = 1.476;
gamma = 3.9;

colors = {'cyan'};
Ek = (1.453*k.^4)./((1 + k.^2).^(17/6));
E = @(k) (1.453*k.^4)./((1 + k.^2).^(17/6));
E_int = zeros(1,numel(k1));
E_int(1) = 1.5;

for i = 2:numel(k)
E_int(i) = E_int(i-1) - integral(E,k(i-1),k(i));
end

beta = c*gamma./(k.*sqrt(E_int));

F_11 = zeros(1,numel(k1));
F_22 = zeros(1,numel(k1));
F_33 = zeros(1,numel(k1));

count = 0;
for i = 1:numel(k1)
count = count + 1;
phi_11 = @(k2,k3) phi_11_new(k1,k2,k3,beta,i);
phi_22 = @(k2,k3) phi_22_new(k1,k2,k3,beta,i);
phi_33 = @(k2,k3) phi_33_new(k1,k2,k3,beta,i);
F_11(count) = integral2(phi_11,-100,100,-100,100);
F_22(count) = integral2(phi_22,-100,100,-100,100);
F_33(count) = integral2(phi_33,-100,100,-100,100);
end

figure
hold on
plot(k1,F_11,'b')
plot(k1,F_22,'cyan')
plot(k1,F_33,'magenta')
hold off
``````

where

``````function phi_11 = phi_11_new(k1,k2,k3,beta,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
k30 = k3 + beta(i).*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta(i).*k1(i).^2).*(k1(i).^2 + k2.^2 - k3.*k30)./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta(i).*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta(i)));
xhsi1 = C1 - k2./k1(i).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1(i).^2 - 2.*k1(i).*k30.*xhsi1 + (k1(i).^2 + k2.^2).*xhsi1_q);
end

function phi_22 = phi_22_new(k1,k2,k3,beta,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
k30 = k3 + beta(i).*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta(i).*k1(i).^2).*(k1(i).^2 + k2.^2 - k3.*k30)./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta(i).*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta(i)));
xhsi2 = k2./k1(i).*C1 + C2;
xhsi2_q = xhsi2.^2;
phi_22 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k2.^2 - 2.*k2.*k30.*xhsi2 + (k1(i).^2 + k2.^2).*xhsi2_q);
end

function phi_33 = phi_33_new(k1,k2,k3,beta,i)
k = sqrt(k1(i).^2+k2.^2+k3.^2);
k30 = k3 + beta(i).*k1(i);
k0 = sqrt(k1(i).^2+k2.^2+k30.^2);
E_k0 = (1.453.*k0.^4./((1+k0.^2).^(17/6)));
phi_33 = (E_k0./(4*pi.*(k.^4))).*(k1(i).^2+k2.^2);
end
``````

This procedure is leading me to results not matching some others coming from a study. The results I should match are posted below:

whereas mine look like these

It's quite easy to esteem how only the comp w match the theoretical results; therefore, I believe that the flaw may reside in the definition of beta outside the function phi_11_new (and phi_22_new).

May any of you suggest how to calculate beta within phi_11_new(and phi_22_new) instead than the way I currently do?

I thank you all in advance for supporting.

Best Regards, fpe

-
Can you provide some sort of verification method for the results? –  Eitan T Jan 15 at 12:00
@EitanT I edited my question –  fpe Jan 15 at 12:31
You mention that comp w matches the theoretical results, but in fact it does not. In the upper graph the value at point 1 is just over 0.1 and in the lower graph it is just under 0.1. –  Dennis Jaheruddin Jan 15 at 12:41
at least they are closer: that's what I meant, sorry. Hence, I do strongly believe that the mistake is in defining beta outside the phi_ii functions. –  fpe Jan 15 at 12:44
no ideas? I've still not been able to solve it –  fpe Jan 15 at 15:07

I have improved the interpolation so that it no longer breaks down for small values. It also returns more correct values since it now interpolates the logarithms of the values.

Here is the code, as it is now.

``````function test15()

[k1,k2,k3] = deal(0.01:0.1:400);

k = sqrt(k1.^2 + k2.^2 + k3.^2);

c = 1.476;
gamma = 3.9;

Ek = (1.453*k.^4)./((1 + k.^2).^(17/6));
E_int = 1.5-cumtrapz(k,Ek);
beta = c*gamma./(k.*sqrt(E_int));

[F_11,F_22,F_33] = deal(zeros(1,numel(k1)));

k_vec = k;
beta_vec = beta;

kLim = 100;

for ii = 1:numel(k1)
phi_11 = @(k2,k3) phi_11_new(k1(ii),k2,k3,k_vec,beta_vec);
phi_22 = @(k2,k3) phi_22_new(k1(ii),k2,k3,k_vec,beta_vec);
phi_33 = @(k2,k3) phi_33_new(k1(ii),k2,k3,k_vec,beta_vec);
end

figure
loglog(k1,F_11,'b')
hold on
loglog(k1,F_22,'cyan')
loglog(k1,F_33,'magenta')
hold off
grid on

end

function phi_11 = phi_11_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2 + k2.^2 + k3.^2);

log_beta_vec = interp1(log(k_vec),log(beta_vec),log(k(:)),'linear','extrap');
log_beta = reshape(log_beta_vec,size(k));
beta = exp(log_beta);

k30 = k3 + beta*k1;
k0 = sqrt(k1^2 + k2.^2 + k30.^2);
E_k0 = 1.453*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta*k1^2).*(k1^2 + k2.^2 - k3.*k30)./(k.^2.*(k1^2 + k2.^2));
C2 = k2.*k0.^2./((k1^2 + k2.^2).^(3/2)).*atan2((beta*k1.*sqrt(k1^2 + k2.^2)),(k0.^2 - k30*k1.*beta));
xhsi1 = C1 - (k2/k1).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1^2 - 2*k1*k30.*xhsi1 + (k1^2 + k2.^2).*xhsi1_q);
end

function phi_22 = phi_22_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2 + k2.^2 + k3.^2);

log_beta_vec = interp1(log(k_vec),log(beta_vec),log(k(:)),'linear','extrap');
log_beta = reshape(log_beta_vec,size(k));
beta = exp(log_beta);

k30 = k3 + beta*k1;
k0 = sqrt(k1^2 + k2.^2 + k30.^2);
E_k0 = 1.453*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta*k1^2).*(k1^2 + k2.^2 - k3.*k30)./(k.^2.*(k1^2 + k2.^2));
C2 = k2.*k0.^2./((k1^2 + k2.^2).^(3/2)).*atan2((beta*k1.*sqrt(k1^2 + k2.^2)),(k0.^2 - k30.*k1.*beta));
xhsi2 = (k2/k1).*C1 + C2;
xhsi2_q = xhsi2.^2;
phi_22 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k2.^2 - 2.*k2.*k30.*xhsi2 + (k1^2 + k2.^2).*xhsi2_q);
end

function phi_33 = phi_33_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2+k2.^2+k3.^2);

log_beta_vec = interp1(log(k_vec),log(beta_vec),log(k(:)),'linear','extrap');
log_beta = reshape(log_beta_vec,size(k));
beta = exp(log_beta);

k30 = k3 + beta*k1;
k0 = sqrt(k1^2+k2.^2+k30.^2);
E_k0 = (1.453*k0.^4./((1+k0.^2).^(17/6)));
phi_33 = (E_k0./(4*pi*(k.^4))).*(k1^2+k2.^2);
end
``````

The figure seems to agree with the original result quite well. Even if there still are some differences.

Side note: Since a k-value of 100 is set as an upper limit in the simulation the values greater than this in the figure are incorrect. They are calculated without using all values in the full (k2,k3)-"circle". We can also see a deviation for these values.

-
btw, just for sake of correctness, if gamma is reduced to zero, the logarithm within interp1 fails since beta is zero-valued. Luckily I don't operate with zero valued gamma, but I was only trying to extensively test the code. –  fpe Jan 18 at 8:15

Ok, this is what I have got at the moment. I would like to hear what you think about it - it is not perfect yet. I have not access to the functions `integral` or `integral2` so if you can reinsert them (instead of my `quad2d` for example) and test the code you might get better results than I have now.

My first thought was to calculate `beta` in a for-loop for every triplet of `[k1,k2,k3]` in the `phi`-functions. This turned out to be extremely slow so I have instead used a vector of `k`-values and calculated the corresponding vector `beta` just as you did before. These two vectors are then passed to `phi` where the values are used in an interpolation function (`interp1`) to find the `beta`-values of specific `k`-values.

``````function myFunction()

[k1,k2,k3] = deal(0.01:0.1:400);

k = sqrt(k1.^2 + k2.^2 + k3.^2);

c = 1.476;
gamma = 3.9;

Ek = (1.453*k.^4)./((1 + k.^2).^(17/6));
E_int = 1.5-cumtrapz(k,Ek);
beta = c*gamma./(k.*sqrt(E_int));

[F_11,F_22,F_33] = deal(zeros(1,numel(k1)));

k_vec = k;
beta_vec = beta;

for ii = 1:numel(k1)
phi_11 = @(k2,k3) phi_11_new(k1(ii),k2,k3,k_vec,beta_vec);
phi_22 = @(k2,k3) phi_22_new(k1(ii),k2,k3,k_vec,beta_vec);
phi_33 = @(k2,k3) phi_33_new(k1(ii),k2,k3,k_vec,beta_vec);
end

figure
loglog(k1,F_11,'b')
hold on
loglog(k1,F_22,'cyan')
loglog(k1,F_33,'magenta')
hold off
grid on

end

function phi_11 = phi_11_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2 + k2.^2 + k3.^2);

beta = reshape(interp1(k_vec,beta_vec,k(:)),size(k));

k30 = k3 + beta*k1;
k0 = sqrt(k1^2 + k2.^2 + k30.^2);
E_k0 = 1.453*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta*k1^2).*(k1^2 + k2.^2 - k3.*k30)./(k.^2.*(k1^2 + k2.^2));
C2 = k2.*k0.^2./((k1^2 + k2.^2).^(3/2)).*atan2((beta*k1.*sqrt(k1^2 + k2.^2)),(k0.^2 - k30*k1.*beta));
xhsi1 = C1 - (k2/k1).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1^2 - 2*k1*k30.*xhsi1 + (k1^2 + k2.^2).*xhsi1_q);
end

function phi_22 = phi_22_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2 + k2.^2 + k3.^2);

beta = reshape(interp1(k_vec,beta_vec,k(:)),size(k));

k30 = k3 + beta*k1;
k0 = sqrt(k1^2 + k2.^2 + k30.^2);
E_k0 = 1.453*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta*k1^2).*(k1^2 + k2.^2 - k3.*k30)./(k.^2.*(k1^2 + k2.^2));
C2 = k2.*k0.^2./((k1^2 + k2.^2).^(3/2)).*atan2((beta*k1.*sqrt(k1^2 + k2.^2)),(k0.^2 - k30.*k1.*beta));
xhsi2 = (k2/k1).*C1 + C2;
xhsi2_q = xhsi2.^2;
phi_22 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k2.^2 - 2.*k2.*k30.*xhsi2 + (k1^2 + k2.^2).*xhsi2_q);
end

function phi_33 = phi_33_new(k1,k2,k3,k_vec,beta_vec)
k = sqrt(k1^2+k2.^2+k3.^2);

beta = reshape(interp1(k_vec,beta_vec,k(:)),size(k));

k30 = k3 + beta*k1;
k0 = sqrt(k1^2+k2.^2+k30.^2);
E_k0 = (1.453*k0.^4./((1+k0.^2).^(17/6)));
phi_33 = (E_k0./(4*pi*(k.^4))).*(k1^2+k2.^2);
end
``````

This produces the following figure. Note that the integration does not succeed for the smallest values of `k1`.

Edit - A comment on calculating beta within the phi-functions

Since you essentially tried the same thing that I did initially, I have added an example of how I calculated the `beta` matrix within the `phi`-functions. Note that this code is so slow that I have never actually run it to completion.

``````function phi_11 = phi_11_new(k1,k2,k3)
k = sqrt(k1^2 + k2.^2 + k3.^2);

c = 1.476;
gamma = 3.9;
beta = zeros(size(k));
E = @(x) (1.453*x.^4)./((1 + x.^2).^(17/6));
for ii = 1:size(k,1)
for jj = 1:size(k,2)
beta(ii,jj) = c*gamma/(k(ii,jj)*sqrt(E_int));
end
end

k30 = k3 + beta*k1;
k0 = sqrt(k1^2 + k2.^2 + k30.^2);
E_k0 = 1.453*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta*k1^2).*(k1^2 + k2.^2 - k3.*k30)./(k.^2.*(k1^2 + k2.^2));
C2 = k2.*k0.^2./((k1^2 + k2.^2).^(3/2)).*atan2((beta*k1.*sqrt(k1^2 + k2.^2)),(k0.^2 - k30*k1.*beta));
xhsi1 = C1 - (k2/k1).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1^2 - 2*k1*k30.*xhsi1 + (k1^2 + k2.^2).*xhsi1_q);
end
``````
-
I will check it as soon as I can. btw I coded another possible solution. I will post it, and I'd like knowing your opinion –  fpe Jan 16 at 14:46

currently I'm running a different version of the above code.

It follows as

``````clc, clear all, close all
tic

k1 = (0.01:0.1:100);

c = 1.476;
gamma = 3.9;

F_11 = zeros(1,numel(k1));
F_22 = zeros(1,numel(k1));
F_33 = zeros(1,numel(k1));

count = 0;
for i = 1:numel(k1)
count = count + 1;
phi_11 = @(k2,k3) phi_11_new(k1,k2,k3,gamma,i);
phi_22 = @(k2,k3) phi_22_new(k1,k2,k3,gamma,i);
phi_33 = @(k2,k3) phi_33_new(k1,k2,k3,gamma,i);
F_11(count) = integral2(phi_11,-100,100,-100,100);
F_22(count) = integral2(phi_22,-100,100,-100,100);
F_33(count) = integral2(phi_33,-100,100,-100,100);
end
``````

This time phi_11, phi_22 and phi_33 are given as

``````function phi_11 = phi_11_new(k1,k2,k3,gamma,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
beta = gamma./((k.^(2/3)).*sqrt(hypergeom([1/3,17/6],4/3,-k.^(-2))));
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta(i).*k1(i).^2).*(k0.^2 - 2.*k30.^2 + beta.*k30.*k1(i))./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta.*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta));
xhsi1 = C1 - k2./k1(i).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1(i).^2 - 2.*k1(i).*k30.*xhsi1 + (k1(i).^2 + k2.^2).*xhsi1_q);
end

function phi_22 = phi_22_new(k1,k2,k3,gamma,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
beta = gamma./((k.^(2/3)).*sqrt(hypergeom([1/3,17/6],4/3,-k.^(-2))));
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta.*k1(i).^2).*(k0.^2 - 2.*k30.^2 + beta.*k1(i).*k30)./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta.*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta));
xhsi2 = (k2./k1(i)).*C1 + C2;
xhsi2_q = xhsi2.^2;
phi_22 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k2.^2 - 2.*k2.*k30.*xhsi2 + (k1(i).^2 + k2.^2).*xhsi2_q);
end

function phi_33 = phi_33_new(k1,k2,k3,gamma,i)
k = sqrt(k1(i).^2+k2.^2+k3.^2);
beta = gamma./((k.^(2/3)).*sqrt(hypergeom([1/3,17/6],4/3,-k.^(-2))));
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2+k2.^2+k30.^2);
E_k0 = (1.453.*k0.^4./((1+k0.^2).^(17/6)));
phi_33 = (E_k0./(4*pi.*(k.^4))).*(k1(i).^2+k2.^2);
end
``````

Please notice that now beta is calculated within the phi functions. Furthermore, I'm using an equivalent expression of beta. For more details, check the picture below out

Hence, in the updated model, I'm calling hypergeom which is rather slow performing. That's the main reason why I'd like to calculate beta as in the first code, by means of the energy spectrum integral.

Btw, at the moment I have no idea how to perfrom this successfully.

Best regards, fpe

-
Yes, there seems to be a problem in your current calculation of the energy spectrum. I will look into it some more. But it seems like it should be possible to calculate outside your function for `phi`. –  user1884905 Jan 16 at 10:34
I just have the feeling that the energy spectrum calculated from the outside is jeopardizing the procedure yielding to F_11, F_22 and F_33. Cause when I call integral2 k2 and k3 are not those as given at the beginning. I thank you a lot for your support. –  fpe Jan 16 at 10:41

Now I'm using this approach:

``````function int()
tic
k1 = (.01:.1:100);
c = 1.476;
gamma = 3.9;

F_11 = zeros(1,numel(k1));
F_22 = zeros(1,numel(k1));
F_33 = zeros(1,numel(k1));

count = 0;
for i = 1:numel(k1)
count = count + 1;
phi_11 = @(k2,k3) phi_11_kai(k1,k2,k3,c,gamma,i);
phi_22 = @(k2,k3) phi_22_kai(k1,k2,k3,c,gamma,i);
phi_33 = @(k2,k3) phi_33_kai(k1,k2,k3,c,gamma,i);
end
end

function phi_11 = phi_11_kai(k1,k2,k3,c,gamma,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
beta = BETA(k,c,gamma);
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta.*k1(i).^2).*(k0.^2 - 2.*k30.^2 + beta.*k30.*k1(i))./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta.*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta));
xhsi1 = C1 - k2./k1(i).*C2;
xhsi1_q = xhsi1.^2;
phi_11 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k1(i).^2 - 2.*k1(i).*k30.*xhsi1 + (k1(i).^2 + k2.^2).*xhsi1_q);
end

function phi_22 = phi_22_kai(k1,k2,k3,c,gamma,i)
k = sqrt(k1(i).^2 + k2.^2 + k3.^2);
beta = BETA(k,c,gamma);
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2 + k2.^2 + k30.^2);
E_k0 = 1.453.*k0.^4./((1 + k0.^2).^(17/6));
C1 = (beta.*k1(i).^2).*(k0.^2 - 2.*k30.^2 + beta.*k1(i).*k30)./(k.^2.*(k1(i).^2 + k2.^2));
C2 = k2.*k0.^2./((k1(i).^2 + k2.^2).^(3/2)).*atan2((beta.*k1(i).*sqrt(k1(i).^2 + k2.^2)),(k0.^2 - k30.*k1(i).*beta));
xhsi2 = (k2./k1(i)).*C1 + C2;
xhsi2_q = xhsi2.^2;
phi_22 = E_k0./(4.*pi.*k0.^4).*(k0.^2 - k2.^2 - 2.*k2.*k30.*xhsi2 + (k1(i).^2 + k2.^2).*xhsi2_q);
end

function phi_33 = phi_33_kai(k1,k2,k3,c,gamma,i)
k = sqrt(k1(i).^2+k2.^2+k3.^2);
beta = BETA(k,c,gamma);
k30 = k3 + beta.*k1(i);
k0 = sqrt(k1(i).^2+k2.^2+k30.^2);
E_k0 = (1.453.*k0.^4./((1+k0.^2).^(17/6)));
phi_33 = (E_k0./(4*pi.*(k.^4))).*(k1(i).^2+k2.^2);
end

function beta = BETA(K,c,gamma)
Ek = @(k) 1.453.*k.^4./((1 + k.^2).^(17/6));
E_int = integral(Ek,K,100000);
beta = c*gamma./(K.*sqrt(E_int));
end
``````

unfortunately leading me to the error msg below:

``````Error using integral (line 86)
A and B must be floating point scalars.

Error in int>BETA (line 63)
E_int = integral(Ek,K,100000);

Error in int>phi_11_kai (line 26)
beta = BETA(k,c,gamma);

Error in int>@(k2,k3)phi_11_kai(k1,k2,k3,c,gamma,i) (line 15)
phi_11 = @(k2,k3) phi_11_kai(k1,k2,k3,c,gamma,i);

Z = FUN(X,Y);  NFE = NFE + 1;

[Qsub,esub] = tensor(thetaL,thetaR,phiB,phiT);

Error in int (line 18)
Well, this is sort of the same solution-strategy as the one I started out with. But I believe that your calculation `beta_cal()` does not return the correct value. Note that `k` is a matrix where each element `k(i,j)` is calculated using a triplet `[k1,k2(i,j),k3(i,j)]` where `k1` is a scalar and `k2` and `k3` are matrices passed to the function by `integrate()`. This means that `beta` will have to be calculated element-wise so that for each element of `beta` there is a corresponding element in `k` that is used in the calculation. –  user1884905 Jan 16 at 15:08
Please, see the edit to my answer. For comparison I have added my initial code that calculates `beta` within the functions, just as you do here. –  user1884905 Jan 16 at 16:04