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Linear Interpolation in Python

I'm pretty new to Python and I'm trying to write a program that will do a 4-point linear interpolation reading data from a .txt file and asking for user information.

The .txt file has temperature and pressures in a table with this format:

``````T    P1  P2  P3  P4
80,100,150,200
75,  400,405,415,430
100, 450,456,467,483
150, 500,507,519,536
200, 550,558,571,589
``````

And here's the code:

``````# User input
temp = input("Enter temperature value in degrees Celcius [Range: 75-200]:")
pressure = input("Enter pressure value in bars [Range: 80-589")

temp = float(temp)
pressure = float(pressure)

# Opens file and read data

# Removes \n from each line
for i in list(range((len(filename)-1))):
filename[i] = filename[i][:-1]

# Splits string
for i in list(range(len(filename))):
filename[i] = filename[i].split(',')

# Converts string numbers into decimal numbers
for i in [2,3,4,5,6]:
filename[i][0] = float(filename[i][0])
filename[i][1] = float(filename[i][1])
``````

I'm not sure where to go from here. If the user input was say, T=100 and P=200, how would I locate the data points from the file that are directly before and after those numbers?

Obviously, I don't know much about what I'm doing, but I would appreciate any help.

ETA: Actual table values. Also, I was not clear on the actual problem statement. Given a temperature and pressure, the program should perform an linear interpolation to find U (internal energy). The T values are the first column, the P values the first row, and the rest are U values.

-
Since whitespace is significant in Python, please make sure the original indentation is preserved when you paste code. – huon May 3 '12 at 4:46

Assuming you have a sorted list of numbers, `x1, x2, x3... xn`, you could use the `bisect` module for fast location of the interval you want (`O(log n)`).

``````from bisect import bisect, bisect_right, bisect_left
#    0    1    2    3    4    5    6    7
x = [1,   2,   4,   8,  16, 100, 200, 300]

def find_interval(x,y):
# x must be a sorted list.

index = bisect_left(x,y)
# Larger than largest element in x
if index >= len(x):
l,r = -1, None
# Exactly equal to something in x
elif y == x[index]:
l,r = index, index
# Smaller than smallest element in x
elif index == 0:
l,r = None, 0
# Inbetween two elements in x
else:
l,r = index-1, index

print (x[l] if l != None else "To left of all elements")
print (x[r] if r != None else "To right of all elements")
return (l,r)

>>> x
[1, 2, 4, 8, 16, 100, 200, 300]
>>> find_interval(x,0)
To left of all elements
1
>>> find_interval(x,1000)
300
To right of all elements
>>> find_interval(x,100)
100
100
>>> find_interval(x,12)
8
16
>>>
``````
-

There are two separate questions here: how to read data into python / NumPy, and how to do 2d interpolatation.
and for interpolation, scipy BivariateSpline. (They both have more options than you need.)

``````from __future__ import division
from cStringIO import StringIO
import numpy as np
from scipy.interpolate import RectBivariateSpline

np.set_printoptions( 1, threshold=100, edgeitems=10, suppress=True )

# a file inline, for testing --
myfile = StringIO( """
# T  P1  P2  P3  P4
0,   80,100,150,200

75,  400,405,415,430
100, 450,456,467,483
150, 500,507,519,536
200, 550,558,571,589
""" )

# file -> numpy array --
# (all rows must have the same number of columns)
TPU = np.loadtxt( myfile, delimiter="," )
P = TPU[0,1:]  # top row
T = TPU[ 1:,0]  # left col
U = TPU[1:,1:]  # 4 x 4, 400 .. 589
print "T:", T
print "P:", P
print "U:", U

interpolator = RectBivariateSpline( T, P, U, kx=1, ky=1 )  # 1 bilinear, 3 spline

# try some t, p --
for t, p in (
(75, 80),
(75, 200),
(87.5, 90),
(200, 80),
(200, 90),
):
u = interpolator( t, p )
print "t %5.1f  p %5.1f -> u %5.1f" % (t, p, u)
``````

By the way, for interactive python, IPython makes it easy to try single lines, look at variables ...

-
1. Using `.readlines()` will shoot you in the foot as soon as the file gets big. Can you formulate what you need to do in terms of

``````for line in open(...):
# parse line
``````

and parse the file just once without loading it fully into memory.

• Much better still, would be to use the `with` idiom when working with files:

``````with open(...) as file:
for line in file:
# parse line
``````

This saves you a bit of headaches when there is a problem while working with the file.

2. You don't need to strip newlines if you will end up using `float()` to make a float out of a string. `float('1.2 \t\n')` is perfectly valid code.

3. `for i in list(range(len(filename))):`

This is bad style. The Python idiom for iterating through a list is

``````for element in list:
``````

If you need an index into the list, then you should use

``````for i, element in enumerate(list):
``````

Your approach is sort-of "manual" and it works, but creating a `list` out of a `list` (coming from `range(...)` in python 2.x) is completely unnecessary. A better "manual" alternative to your code would be

``````for i in xrange(len(filename)):
``````

but it is still much less readable than the idioms above.

Now that I'm done bashing on your code, the main question is: what [the hell] do you actually need done? Can you give us the exact, word-for-word, specification of the problem you are trying to solve?

• Have you looked at http://en.wikipedia.org/wiki/Linear_interpolation?
• What is the significance of the input data from the terminal in your case?
• Why and what for do you need the data from the file that is just before and after the input data from the terminal?
• Is the temperature/pressure data somehow sorted?
• What do the lines in the file represent (e.g. are they time-based or location-based or something else)?
• What do the four different pressures represent?
-
I was not clear on the actual problem statement. Given a temperature and pressure, the program should perform an linear interpolation to find U (internal energy). The T values are the first column, the P values the first row, and the rest are U values. I updated with the actual values in the table. Sorry for all the confusion and thanks for the help. – LC4Tigers May 4 '12 at 0:54
@LC4Tigers: So you need a 2D interpolation? – Li-aung Yip May 4 '12 at 10:41