i have some experimental data and a theoretical model which i would like to try and fit. i have made a function file with the model - the code is shown below

```
function [ Q,P ] = RodFit(k,C )
% Function file for the theoretical scattering from a Rod
% R = radius, L = length
R = 10; % radius in Å
L = 1000; % length in Å
Q = 0.001:0.0001:0.5;
fun = @(x) ( (2.*besselj(1,Q.*R.*sin(x)))./...
(Q.*R.*sin(x)).*...
(sin(Q.*L.*cos(x)./2))./...
(Q.*L.*cos(x)./2)...
).^2.*sin(x);
P = (integral(fun,0,pi/2,'ArrayValued',true))*k+C;
end
```

with Q being the x-values and P being the y-values. I can call the function fine from the matlab command line and it works fine e.g. [Q,P] = RodFit(1,0.001) gives me a result i can plot using `plot(Q,P)`

But i cannot figure how to best find the fit to some experimental data. Ideally, i would like to use the optimization toolbox and lsqcurvefit since i would then also be able to optimize the R and L parameters. but i do not know how to pass (x,y) data to lsqcurvefit. i have attempted it with the code below but it does not work

```
File = 30; % the specific observation you want to fit the model to
ydata = DataFiles{1,File}.data(:,2)';
% RAdius = linspace(10,1000,length(ydata));
% LEngth = linspace(100,10000,length(ydata));
Multiplier = linspace(1e-3,1e3,length(ydata));
Constant = linspace(0,1,length(ydata));
xdata = [Multiplier; Constant]; % RAdius; LEngth;
L = lsqcurvefit(@RodFit,[1;0],xdata,ydata);
```

it gives me the error message:

```
Error using *
Inner matrix dimensions must agree.
Error in RodFit (line 15)
P = (integral(fun,0,pi/2,'ArrayValued',true))*k+C;
Error in lsqcurvefit (line 199)
initVals.F = feval(funfcn_x_xdata{3},xCurrent,XDATA,varargin{:});
Caused by:
Failure in initial user-supplied objective function evaluation. LSQCURVEFIT cannot continue.
```

i have tried i) making all vectors/matrices the same length and ii) tried using `.*`

instead. nothing works and i am giving the same error message

Any kind of help would be greatly appreciated, whether it is suggestion regading what method is should use, suggestions to my code or something third.

**EDIT TO ANSWER Osmoses:**
A really good point but i do not think that is the problem. just checked the size of the all the vectors/matrices and they should be alright

```
>> size(Q)
ans =
1 1780
>> size(P)
ans =
1 1780
>> size(xdata)
ans =
2 1780
>> size([1;0.001]) - the initial guess/start point for xdata (x0)
ans =
2 1
>> size(ydata)
ans =
1 1780
```

**UPDATE**

I think i have identified the problem. the function RodFit works fine when i specify the input directly e.g. `[Q,P] = RodFit(1,0.001);`

.

however, if i define x0 as `x0 = [1,0.001]`

i cannot pass x0 to the function

```
>> x0 = [1;0.001]
x0 =
1.0000
0.0010
>> RodFit(x0);
Error using *
Inner matrix dimensions must agree.
Error in RodFit (line 15)
P = (integral(fun,0,pi/2,'ArrayValued',true))*k+C;
```

The same happens if i use `x0 = [1,0.001]`

clearly, matlab is interpreting x0 as input for `k`

only and attempts to multiplay a vector of length(ydata) and a vector of length(x0) which obviously fails.

So my problem is that i need to code so that *lsqcurvefit* understands that the first column of xdata and x0 is the `k`

variable and the second column of xdata and x0 is the `C`

variable. According to the documentation - Passing Matrix Arguments - i should be able to pass x0 as a matrix to the solver. The solver should then also pass the xdata in the same format as x0.