diff -r 60a4616dbf55 -r b9ae88095ade lstsq.rst --- /dev/null Thu Jan 01 00:00:00 1970 +0000 +++ b/lstsq.rst Thu Sep 16 19:40:33 2010 +0530 @@ -0,0 +1,128 @@ +Hello friends and welcome to the tutorial on Least Square Fit + +{{{ Show the slide containing title }}} + +{{{ Show the slide containing the outline slide }}} + +In this tutorial, we shall look at generating the least square fit line for a +given set of points. + +First let us have a look at the problem. + +{{{ Show the slide containing problem statement. }}} + +We have an input file generated from a simple pendulum experiment. + +It contains two columns of data. The first column is the length of the +pendulum and the second is the corresponding time period of the pendulum. + +As we know, the square of time period of a pendulum is directly proportional to +its length, we shall plot l vs t^2 and verify if the proportionality is linear. + +If it is not linear, we shall generate a least square fit line. + +{{{ show the slide containing explanation on least square fit }}} + +As shown in the slide, we are first going to generate the two matrices tsq and +A. Then we are going to use the =lstsq= function to find the values of m and c. + +To read the input file and parse the data, we are going to loadtxt function. +Type +:: + + data = loadtxt("/home/fossee/pendulum.txt") + data + +As you can see, data is a sequence containing 90 records. Each record contains +two values. The first is length and second is time period. But what we need is +two sequences. One sequence containing all the length values and one containing +all the time values. + +Hence we have to use the unpack option with loadtxt. It unpacks the data into + sequences depending on the structure of data. + +Type +:: + + l, t = loadtxt("/home/fossee/pendulum.txt", unpack=True) + l + t + +We can see that l and t are two sequences containing length and time values +correspondingly. + +Let us first plot l vs t^2. Type +:: + + tsq = t * t + plot(l, tsq, 'bo') + + +{{{ switch to the plot window }}} + +We can see that there is a visible linear trend. + +let us now generate the A matrix with l values. +We shall first generate a 2 x 90 matrix with the first row as l values and the +second row as ones. Then take the transpose of it. Type +:: + + inter_mat = array((l, ones_like(l))) + inter_mat + +We see that we have intermediate matrix. Now we need the transpose.Type +:: + + A = inter_mat.T + A + +Now we have both the matrices A and tsq. We only need to use the =lstsq= +Type +:: + + result = lstsq(A, tsq) + +The result is a sequence of values. The first item is the matrix p or in simple +words, the values of m and c. Hence, +:: + + m, c = result[0] + m + c + +Now that we have m and c, we need to generate the fitted values of t^2. Type +:: + + tsq_fit = m * l + c + plot(l, tsq, 'bo') + plot(l, tsq_fit, 'r') + +We get the least square fit of l vs t^2 + +{{{ Pause here and try out the following exercises }}} + +%% 2 %% change the label on y-axis to "y" and save the lines of code + accordingly + +{{{ continue from paused state }}} + +{{{ Show summary slide }}} + +This brings us to the end of the tutorial. +we have learnt + + * how to use loadtxt to read files + * how to generate a least square fit + +{{{ Show the "sponsored by FOSSEE" slide }}} + +#[Nishanth]: Will add this line after all of us fix on one. +This tutorial was created as a part of FOSSEE project, NME ICT, MHRD India + +Hope you have enjoyed and found it useful. +Thankyou + +.. Author : Nishanth + Internal Reviewer 1 : + Internal Reviewer 2 : + External Reviewer :