# How do I calculate a linear equation for my table?

I am writing a program that does some unit conversions from a Brix scale to some other units.

The program works by displaying a scale to the user, and allows the user to click on the scale to select a Brix measurement. The range I am using is between 1 & 30.

The problem is, the scale is not linear. As the Brix number gets higher, more space is between each increment, so I need to figure out the linear equation that would allow me to translate the y position of the user input to the number on the scale.

I made the following chart to show the correlation between the brix value and the y-position of the user click (in pixels):

``````Brix | PosY
=====|=====
0  |   0
1  |  10
5  |  50
10  | 100
12  | 123
15  | 155
16  | 167
19  | 201
21  | 225
24  | 262
26  | 287
28  | 314
30  | 340
``````

Basically, I need to be able to figure out Brix, given PosY. How do I determine the equation to use?

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so how are you able to calculate the PosY and PosX in the first place? – ThomasRS Mar 31 '11 at 18:02
from the user input, posY is where the cursor is clicked, so to get these values, I clicked on 0,1,5,10,12, etc. – Laravelian Mar 31 '11 at 18:06
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## 2 Answers

For interpolation in non-linear situations where one doesn't know the exact equation, people generally uses a cubic spline fit and interpolation. Depending on the accuracy that you need, you could possible just get by with a piece-wise linear fit; that is, do independent linear interpolations between successive pairs of points.

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Well, your data is "almost" linear:

``````  Brix(PosY) := 0.092 * PosY
``````

If you really want a better approximation (I think that is improbable), you may try:

``````  Brix(PosY) := 0.10370203*Posy + 0.051016908*Cos[(227.63841*Posy)] -
0.056852482*Cos[(0.10305045*Posy)] - 4.6300302*10^-5*Posy^2
``````

Which gives:

I got the last one using least squares via Eureqa

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