How do I fit a non linear curve?












1












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In an experiment that I did, i collected data points $ (ω,υ(ω))$ that are modeled by the equation:



$$ υ(ω)=frac{ωC}{sqrt{(ω^2-ω_0^2)^2+γ^2ω^2}}$$



How can do I fit a curve here ? and how can I extract $γ$ through this process ?










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$endgroup$








  • 2




    $begingroup$
    Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
    $endgroup$
    – Jake Rose
    2 hours ago












  • $begingroup$
    At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
    $endgroup$
    – KF Gauss
    2 hours ago












  • $begingroup$
    Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
    $endgroup$
    – Andreas Mastronikolis
    2 hours ago












  • $begingroup$
    As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
    $endgroup$
    – lemon
    2 hours ago
















1












$begingroup$


In an experiment that I did, i collected data points $ (ω,υ(ω))$ that are modeled by the equation:



$$ υ(ω)=frac{ωC}{sqrt{(ω^2-ω_0^2)^2+γ^2ω^2}}$$



How can do I fit a curve here ? and how can I extract $γ$ through this process ?










share|cite|improve this question









$endgroup$








  • 2




    $begingroup$
    Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
    $endgroup$
    – Jake Rose
    2 hours ago












  • $begingroup$
    At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
    $endgroup$
    – KF Gauss
    2 hours ago












  • $begingroup$
    Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
    $endgroup$
    – Andreas Mastronikolis
    2 hours ago












  • $begingroup$
    As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
    $endgroup$
    – lemon
    2 hours ago














1












1








1





$begingroup$


In an experiment that I did, i collected data points $ (ω,υ(ω))$ that are modeled by the equation:



$$ υ(ω)=frac{ωC}{sqrt{(ω^2-ω_0^2)^2+γ^2ω^2}}$$



How can do I fit a curve here ? and how can I extract $γ$ through this process ?










share|cite|improve this question









$endgroup$




In an experiment that I did, i collected data points $ (ω,υ(ω))$ that are modeled by the equation:



$$ υ(ω)=frac{ωC}{sqrt{(ω^2-ω_0^2)^2+γ^2ω^2}}$$



How can do I fit a curve here ? and how can I extract $γ$ through this process ?







experimental-physics experimental-technique






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share|cite|improve this question










asked 2 hours ago









Andreas MastronikolisAndreas Mastronikolis

545




545








  • 2




    $begingroup$
    Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
    $endgroup$
    – Jake Rose
    2 hours ago












  • $begingroup$
    At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
    $endgroup$
    – KF Gauss
    2 hours ago












  • $begingroup$
    Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
    $endgroup$
    – Andreas Mastronikolis
    2 hours ago












  • $begingroup$
    As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
    $endgroup$
    – lemon
    2 hours ago














  • 2




    $begingroup$
    Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
    $endgroup$
    – Jake Rose
    2 hours ago












  • $begingroup$
    At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
    $endgroup$
    – KF Gauss
    2 hours ago












  • $begingroup$
    Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
    $endgroup$
    – Andreas Mastronikolis
    2 hours ago












  • $begingroup$
    As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
    $endgroup$
    – lemon
    2 hours ago








2




2




$begingroup$
Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
$endgroup$
– Jake Rose
2 hours ago






$begingroup$
Rearrange it into equations that can be plotted easily and that have coefficients which can be extracted easily(such as straight lines, log-log etc). Make the plots work for you not the other way around d.
$endgroup$
– Jake Rose
2 hours ago














$begingroup$
At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
$endgroup$
– KF Gauss
2 hours ago






$begingroup$
At the most basic level you simply put different values of $C, omega_0, gamma$ until you get a curve that looks like your data. Practically this is done with software, for example R, matlab, and mathematica.
$endgroup$
– KF Gauss
2 hours ago














$begingroup$
Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
$endgroup$
– Andreas Mastronikolis
2 hours ago






$begingroup$
Is there a mathematical way (just as we derive the linear regression formula) to derive a curve for this case ?
$endgroup$
– Andreas Mastronikolis
2 hours ago














$begingroup$
As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
$endgroup$
– lemon
2 hours ago




$begingroup$
As KG Gauss says, the equation you've given is the equation that should be fitted to the data points. This will need to be done numerically.
$endgroup$
– lemon
2 hours ago










3 Answers
3






active

oldest

votes


















2












$begingroup$

What you want to find is the parameters $theta=(C, omega_0, gamma)$ that minimizes the difference between $nu(omega|theta)$ (the curve given the parameters) and the measured $nu_i$ values.



The most popular method is least mean square fitting, which minimizes the sum of the squares of the differences. One can also do it by formulating the normal equations and solve it as a (potentially big) linear equation system. Another approach is the Gauss-Newton algorithm, a simple iterative method to do it. It is a good exercise to implement the solution oneself, but once you have done it once or twice it is best to rely on some software package.



Note that this kind of fitting works well when you know the functional form (your equation for $nu(omega)$), since you can ensure only that the parameters that matter are included. If you try to fit some general polynomial or function you can get overfitting (some complex curve that fits all the data but has nothing to do with your problem) besides the problem of identifying the parameters you care about.






share|cite|improve this answer









$endgroup$





















    1












    $begingroup$

    Don't try using any general-purpose curve fitting algorithm for this.



    The form of your function looks like a frequency response function, with the two unknown parameters $omega_0$ and $gamma$ - i.e. the resonant frequency, and the damping parameter. The function you specified omits an important feature if this is measured data, namely the relative phase between the "force" driving the oscillation and the response.



    If you didn't measure the phase at each frequency, repeat the experiment, because that is critical information.



    When you have the amplitude and phase data, there are curve fitting techniques devised specifically for this problem of "system identification" in experimental modal analysis. A simple one is the so-called "circle fitting" method. If you make a Nyquist plot of your measured data (i.e. plot imaginary part of the response against the real part), the section of the curve near the resonance is a circle, and you can fit a circle to the measured data and find the parameters from it.



    In practice, a simplistic approach assuming the system only has one resonance often doesn't work well, because the response of a real system near resonance also includes the off-resonance response to all the other vibration modes. If the resonant frequencies are well separated and lightly damped, it is possible to correct for this while fitting "one mode at a time". If this is not the case, you need methods that can identify several resonances simultaneously from one response function.



    Rather than re-invent the wheel, use existing code. The signal processing toolbox in MATLAB would be a good starting point - for example https://uk.mathworks.com/help/signal/ref/modalfit.html






    share|cite|improve this answer











    $endgroup$





















      0












      $begingroup$

      Are you looking for something like polynomial regression? The general idea is, if you have measured pairs of (x, y(x)) and you are looking for find a fit of the form:



      $$y = alpha_0 + alpha_1 x + alpha_2 x^2 ...$$



      You can write this in matrix form as:



      $$begin{bmatrix} y_1 \ y_2 \ y_3 \ vdots \ y_n end{bmatrix} = begin{bmatrix} 1 & x_1 & x_1^2 & cdots \ 1 & x_2 & x_2^2 & cdots \ 1 & x_3 & x_3^2 & cdots \ vdots & vdots & vdots & vdots \ 1 & x_n &x_n^2 & cdots end{bmatrix} begin{bmatrix} beta_0 \ beta_1 \ beta_2 \ vdots \ beta_m end{bmatrix}$$



      This can now be solved for your coefficients, $beta_i$. That being said, and as was hinted at in your comments, I've never actually done this, and have instead used non-linear fitting functions provided by libraries.



      More information on polynomial regression on the wikipedia page.






      share|cite|improve this answer








      New contributor




      Anon1759 is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
      Check out our Code of Conduct.






      $endgroup$













      • $begingroup$
        The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
        $endgroup$
        – Andreas Mastronikolis
        1 hour ago










      • $begingroup$
        Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
        $endgroup$
        – Anon1759
        1 hour ago












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      3 Answers
      3






      active

      oldest

      votes








      3 Answers
      3






      active

      oldest

      votes









      active

      oldest

      votes






      active

      oldest

      votes









      2












      $begingroup$

      What you want to find is the parameters $theta=(C, omega_0, gamma)$ that minimizes the difference between $nu(omega|theta)$ (the curve given the parameters) and the measured $nu_i$ values.



      The most popular method is least mean square fitting, which minimizes the sum of the squares of the differences. One can also do it by formulating the normal equations and solve it as a (potentially big) linear equation system. Another approach is the Gauss-Newton algorithm, a simple iterative method to do it. It is a good exercise to implement the solution oneself, but once you have done it once or twice it is best to rely on some software package.



      Note that this kind of fitting works well when you know the functional form (your equation for $nu(omega)$), since you can ensure only that the parameters that matter are included. If you try to fit some general polynomial or function you can get overfitting (some complex curve that fits all the data but has nothing to do with your problem) besides the problem of identifying the parameters you care about.






      share|cite|improve this answer









      $endgroup$


















        2












        $begingroup$

        What you want to find is the parameters $theta=(C, omega_0, gamma)$ that minimizes the difference between $nu(omega|theta)$ (the curve given the parameters) and the measured $nu_i$ values.



        The most popular method is least mean square fitting, which minimizes the sum of the squares of the differences. One can also do it by formulating the normal equations and solve it as a (potentially big) linear equation system. Another approach is the Gauss-Newton algorithm, a simple iterative method to do it. It is a good exercise to implement the solution oneself, but once you have done it once or twice it is best to rely on some software package.



        Note that this kind of fitting works well when you know the functional form (your equation for $nu(omega)$), since you can ensure only that the parameters that matter are included. If you try to fit some general polynomial or function you can get overfitting (some complex curve that fits all the data but has nothing to do with your problem) besides the problem of identifying the parameters you care about.






        share|cite|improve this answer









        $endgroup$
















          2












          2








          2





          $begingroup$

          What you want to find is the parameters $theta=(C, omega_0, gamma)$ that minimizes the difference between $nu(omega|theta)$ (the curve given the parameters) and the measured $nu_i$ values.



          The most popular method is least mean square fitting, which minimizes the sum of the squares of the differences. One can also do it by formulating the normal equations and solve it as a (potentially big) linear equation system. Another approach is the Gauss-Newton algorithm, a simple iterative method to do it. It is a good exercise to implement the solution oneself, but once you have done it once or twice it is best to rely on some software package.



          Note that this kind of fitting works well when you know the functional form (your equation for $nu(omega)$), since you can ensure only that the parameters that matter are included. If you try to fit some general polynomial or function you can get overfitting (some complex curve that fits all the data but has nothing to do with your problem) besides the problem of identifying the parameters you care about.






          share|cite|improve this answer









          $endgroup$



          What you want to find is the parameters $theta=(C, omega_0, gamma)$ that minimizes the difference between $nu(omega|theta)$ (the curve given the parameters) and the measured $nu_i$ values.



          The most popular method is least mean square fitting, which minimizes the sum of the squares of the differences. One can also do it by formulating the normal equations and solve it as a (potentially big) linear equation system. Another approach is the Gauss-Newton algorithm, a simple iterative method to do it. It is a good exercise to implement the solution oneself, but once you have done it once or twice it is best to rely on some software package.



          Note that this kind of fitting works well when you know the functional form (your equation for $nu(omega)$), since you can ensure only that the parameters that matter are included. If you try to fit some general polynomial or function you can get overfitting (some complex curve that fits all the data but has nothing to do with your problem) besides the problem of identifying the parameters you care about.







          share|cite|improve this answer












          share|cite|improve this answer



          share|cite|improve this answer










          answered 1 hour ago









          Anders SandbergAnders Sandberg

          9,88521429




          9,88521429























              1












              $begingroup$

              Don't try using any general-purpose curve fitting algorithm for this.



              The form of your function looks like a frequency response function, with the two unknown parameters $omega_0$ and $gamma$ - i.e. the resonant frequency, and the damping parameter. The function you specified omits an important feature if this is measured data, namely the relative phase between the "force" driving the oscillation and the response.



              If you didn't measure the phase at each frequency, repeat the experiment, because that is critical information.



              When you have the amplitude and phase data, there are curve fitting techniques devised specifically for this problem of "system identification" in experimental modal analysis. A simple one is the so-called "circle fitting" method. If you make a Nyquist plot of your measured data (i.e. plot imaginary part of the response against the real part), the section of the curve near the resonance is a circle, and you can fit a circle to the measured data and find the parameters from it.



              In practice, a simplistic approach assuming the system only has one resonance often doesn't work well, because the response of a real system near resonance also includes the off-resonance response to all the other vibration modes. If the resonant frequencies are well separated and lightly damped, it is possible to correct for this while fitting "one mode at a time". If this is not the case, you need methods that can identify several resonances simultaneously from one response function.



              Rather than re-invent the wheel, use existing code. The signal processing toolbox in MATLAB would be a good starting point - for example https://uk.mathworks.com/help/signal/ref/modalfit.html






              share|cite|improve this answer











              $endgroup$


















                1












                $begingroup$

                Don't try using any general-purpose curve fitting algorithm for this.



                The form of your function looks like a frequency response function, with the two unknown parameters $omega_0$ and $gamma$ - i.e. the resonant frequency, and the damping parameter. The function you specified omits an important feature if this is measured data, namely the relative phase between the "force" driving the oscillation and the response.



                If you didn't measure the phase at each frequency, repeat the experiment, because that is critical information.



                When you have the amplitude and phase data, there are curve fitting techniques devised specifically for this problem of "system identification" in experimental modal analysis. A simple one is the so-called "circle fitting" method. If you make a Nyquist plot of your measured data (i.e. plot imaginary part of the response against the real part), the section of the curve near the resonance is a circle, and you can fit a circle to the measured data and find the parameters from it.



                In practice, a simplistic approach assuming the system only has one resonance often doesn't work well, because the response of a real system near resonance also includes the off-resonance response to all the other vibration modes. If the resonant frequencies are well separated and lightly damped, it is possible to correct for this while fitting "one mode at a time". If this is not the case, you need methods that can identify several resonances simultaneously from one response function.



                Rather than re-invent the wheel, use existing code. The signal processing toolbox in MATLAB would be a good starting point - for example https://uk.mathworks.com/help/signal/ref/modalfit.html






                share|cite|improve this answer











                $endgroup$
















                  1












                  1








                  1





                  $begingroup$

                  Don't try using any general-purpose curve fitting algorithm for this.



                  The form of your function looks like a frequency response function, with the two unknown parameters $omega_0$ and $gamma$ - i.e. the resonant frequency, and the damping parameter. The function you specified omits an important feature if this is measured data, namely the relative phase between the "force" driving the oscillation and the response.



                  If you didn't measure the phase at each frequency, repeat the experiment, because that is critical information.



                  When you have the amplitude and phase data, there are curve fitting techniques devised specifically for this problem of "system identification" in experimental modal analysis. A simple one is the so-called "circle fitting" method. If you make a Nyquist plot of your measured data (i.e. plot imaginary part of the response against the real part), the section of the curve near the resonance is a circle, and you can fit a circle to the measured data and find the parameters from it.



                  In practice, a simplistic approach assuming the system only has one resonance often doesn't work well, because the response of a real system near resonance also includes the off-resonance response to all the other vibration modes. If the resonant frequencies are well separated and lightly damped, it is possible to correct for this while fitting "one mode at a time". If this is not the case, you need methods that can identify several resonances simultaneously from one response function.



                  Rather than re-invent the wheel, use existing code. The signal processing toolbox in MATLAB would be a good starting point - for example https://uk.mathworks.com/help/signal/ref/modalfit.html






                  share|cite|improve this answer











                  $endgroup$



                  Don't try using any general-purpose curve fitting algorithm for this.



                  The form of your function looks like a frequency response function, with the two unknown parameters $omega_0$ and $gamma$ - i.e. the resonant frequency, and the damping parameter. The function you specified omits an important feature if this is measured data, namely the relative phase between the "force" driving the oscillation and the response.



                  If you didn't measure the phase at each frequency, repeat the experiment, because that is critical information.



                  When you have the amplitude and phase data, there are curve fitting techniques devised specifically for this problem of "system identification" in experimental modal analysis. A simple one is the so-called "circle fitting" method. If you make a Nyquist plot of your measured data (i.e. plot imaginary part of the response against the real part), the section of the curve near the resonance is a circle, and you can fit a circle to the measured data and find the parameters from it.



                  In practice, a simplistic approach assuming the system only has one resonance often doesn't work well, because the response of a real system near resonance also includes the off-resonance response to all the other vibration modes. If the resonant frequencies are well separated and lightly damped, it is possible to correct for this while fitting "one mode at a time". If this is not the case, you need methods that can identify several resonances simultaneously from one response function.



                  Rather than re-invent the wheel, use existing code. The signal processing toolbox in MATLAB would be a good starting point - for example https://uk.mathworks.com/help/signal/ref/modalfit.html







                  share|cite|improve this answer














                  share|cite|improve this answer



                  share|cite|improve this answer








                  edited 59 mins ago

























                  answered 1 hour ago









                  alephzeroalephzero

                  5,58621120




                  5,58621120























                      0












                      $begingroup$

                      Are you looking for something like polynomial regression? The general idea is, if you have measured pairs of (x, y(x)) and you are looking for find a fit of the form:



                      $$y = alpha_0 + alpha_1 x + alpha_2 x^2 ...$$



                      You can write this in matrix form as:



                      $$begin{bmatrix} y_1 \ y_2 \ y_3 \ vdots \ y_n end{bmatrix} = begin{bmatrix} 1 & x_1 & x_1^2 & cdots \ 1 & x_2 & x_2^2 & cdots \ 1 & x_3 & x_3^2 & cdots \ vdots & vdots & vdots & vdots \ 1 & x_n &x_n^2 & cdots end{bmatrix} begin{bmatrix} beta_0 \ beta_1 \ beta_2 \ vdots \ beta_m end{bmatrix}$$



                      This can now be solved for your coefficients, $beta_i$. That being said, and as was hinted at in your comments, I've never actually done this, and have instead used non-linear fitting functions provided by libraries.



                      More information on polynomial regression on the wikipedia page.






                      share|cite|improve this answer








                      New contributor




                      Anon1759 is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                      Check out our Code of Conduct.






                      $endgroup$













                      • $begingroup$
                        The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                        $endgroup$
                        – Andreas Mastronikolis
                        1 hour ago










                      • $begingroup$
                        Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                        $endgroup$
                        – Anon1759
                        1 hour ago
















                      0












                      $begingroup$

                      Are you looking for something like polynomial regression? The general idea is, if you have measured pairs of (x, y(x)) and you are looking for find a fit of the form:



                      $$y = alpha_0 + alpha_1 x + alpha_2 x^2 ...$$



                      You can write this in matrix form as:



                      $$begin{bmatrix} y_1 \ y_2 \ y_3 \ vdots \ y_n end{bmatrix} = begin{bmatrix} 1 & x_1 & x_1^2 & cdots \ 1 & x_2 & x_2^2 & cdots \ 1 & x_3 & x_3^2 & cdots \ vdots & vdots & vdots & vdots \ 1 & x_n &x_n^2 & cdots end{bmatrix} begin{bmatrix} beta_0 \ beta_1 \ beta_2 \ vdots \ beta_m end{bmatrix}$$



                      This can now be solved for your coefficients, $beta_i$. That being said, and as was hinted at in your comments, I've never actually done this, and have instead used non-linear fitting functions provided by libraries.



                      More information on polynomial regression on the wikipedia page.






                      share|cite|improve this answer








                      New contributor




                      Anon1759 is a new contributor to this site. Take care in asking for clarification, commenting, and answering.
                      Check out our Code of Conduct.






                      $endgroup$













                      • $begingroup$
                        The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                        $endgroup$
                        – Andreas Mastronikolis
                        1 hour ago










                      • $begingroup$
                        Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                        $endgroup$
                        – Anon1759
                        1 hour ago














                      0












                      0








                      0





                      $begingroup$

                      Are you looking for something like polynomial regression? The general idea is, if you have measured pairs of (x, y(x)) and you are looking for find a fit of the form:



                      $$y = alpha_0 + alpha_1 x + alpha_2 x^2 ...$$



                      You can write this in matrix form as:



                      $$begin{bmatrix} y_1 \ y_2 \ y_3 \ vdots \ y_n end{bmatrix} = begin{bmatrix} 1 & x_1 & x_1^2 & cdots \ 1 & x_2 & x_2^2 & cdots \ 1 & x_3 & x_3^2 & cdots \ vdots & vdots & vdots & vdots \ 1 & x_n &x_n^2 & cdots end{bmatrix} begin{bmatrix} beta_0 \ beta_1 \ beta_2 \ vdots \ beta_m end{bmatrix}$$



                      This can now be solved for your coefficients, $beta_i$. That being said, and as was hinted at in your comments, I've never actually done this, and have instead used non-linear fitting functions provided by libraries.



                      More information on polynomial regression on the wikipedia page.






                      share|cite|improve this answer








                      New contributor




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                      $endgroup$



                      Are you looking for something like polynomial regression? The general idea is, if you have measured pairs of (x, y(x)) and you are looking for find a fit of the form:



                      $$y = alpha_0 + alpha_1 x + alpha_2 x^2 ...$$



                      You can write this in matrix form as:



                      $$begin{bmatrix} y_1 \ y_2 \ y_3 \ vdots \ y_n end{bmatrix} = begin{bmatrix} 1 & x_1 & x_1^2 & cdots \ 1 & x_2 & x_2^2 & cdots \ 1 & x_3 & x_3^2 & cdots \ vdots & vdots & vdots & vdots \ 1 & x_n &x_n^2 & cdots end{bmatrix} begin{bmatrix} beta_0 \ beta_1 \ beta_2 \ vdots \ beta_m end{bmatrix}$$



                      This can now be solved for your coefficients, $beta_i$. That being said, and as was hinted at in your comments, I've never actually done this, and have instead used non-linear fitting functions provided by libraries.



                      More information on polynomial regression on the wikipedia page.







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                      answered 1 hour ago









                      Anon1759Anon1759

                      412




                      412




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                      • $begingroup$
                        The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                        $endgroup$
                        – Andreas Mastronikolis
                        1 hour ago










                      • $begingroup$
                        Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                        $endgroup$
                        – Anon1759
                        1 hour ago


















                      • $begingroup$
                        The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                        $endgroup$
                        – Andreas Mastronikolis
                        1 hour ago










                      • $begingroup$
                        Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                        $endgroup$
                        – Anon1759
                        1 hour ago
















                      $begingroup$
                      The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                      $endgroup$
                      – Andreas Mastronikolis
                      1 hour ago




                      $begingroup$
                      The answer is yes if the equation can be reduced to a polynomial one. I don't think it can be though.
                      $endgroup$
                      – Andreas Mastronikolis
                      1 hour ago












                      $begingroup$
                      Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                      $endgroup$
                      – Anon1759
                      1 hour ago




                      $begingroup$
                      Then I think your only choice is to follow the advice as given in Anders Sandberg's answer and use one of the fitting techniques suggested there.
                      $endgroup$
                      – Anon1759
                      1 hour ago


















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