# Optimization of a distance calculation function

In my code I have to do a lot of distance calculation between pairs of lat/long values.

the code looks like this:

``````double result = Math.Acos(Math.Sin(lat2rad) * Math.Sin(lat1rad)
``````

I have identified this function as the performance bottleneck of my application. Is there any way to improve this?

(I cannot use look-up tables since the coordinates are varying). I have also looked at this question where a lookup scheme like a grid is suggested, which might be a possibility.

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You should be aware that this algorithm is only correct if you assume that the Earth is a perfect sphere and the differences between the approximation and the real answer can be quite significant (at least in my world). en.wikipedia.org/wiki/WGS84 –  Bob Cross Mar 5 '09 at 16:38
That's true. You may really need to calculate great circle routes. –  Brian Knoblauch Mar 5 '09 at 20:00
Yes I know, but the approximation is OK for my case. As far as I know the deviation is greatest around the equator due to earth rotation. –  puls200 Mar 6 '09 at 6:59
If (as you said in the comments of my answer) that line is taking minutes to run - Something else is up! –  Gavin Miller Mar 6 '09 at 15:22

If your goal is to rank (compare) distances, then approximations (`sin` and `cos` table lookups) could drastically reduce your amount of computations required (implement quick reject.)

Your goal is to only proceed with the actual trigonometric computation if the difference between the approximated distances (to be ranked or compared) falls below a certain threshold.

E.g. using lookup tables with 1000 samples (i.e. `sin` and `cos` sampled every `2*pi/1000`), the lookup uncertainty is at most 0.006284. Using uncertainty calculation for the parameter to `ACos`, the cumulated uncertainty, also be the threshold uncertainty, will be at most 0.018731.

So, if evaluating ```Math.Sin(lat2rad) * Math.Sin(lat1rad) + Math.Cos(lat2rad) * Math.Cos(lat1rad) * Math.Cos(lon2rad - lon1rad)``` using `sin` and `cos` lookup tables for two coordinate-set pairs (distances) yields a certain ranking (one distance appears greater than the other based on the approximation), and the difference's modulus is greater than the threshold above, then the approximation is valid. Otherwise proceed with the actual trigonometric calculation.

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Thanks, your answer put me on the right track. I am sure some of the other answers are valid too. Using a lookup table with 50.000 entries precision is still good enough. Speedup is about 3 times previous performance. –  puls200 Mar 9 '09 at 16:03

Would the CORDIC algorithm work for you (in regards to speed/accuracy)?

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Thank you for the idea, I will try different approaches to see what works best. –  puls200 Mar 6 '09 at 7:04

Using inspiration from @Brann I think you can reduce the calculation a bit (Warning its a long time since I did any of this and it will need to be verified). Some sort of lookup of precalculated values probably the fastest though

You have :

1: ACOS( SIN A SIN B + COS A COS B COS(A-B) )

but 2: COS(A-B) = SIN A SIN B + COS A COS B

which is rewritten as 3: SIN A SIN B = COS(A-B) - COS A COS B

replace SIN A SIN B in 1. you have :

4: ACOS( COS(A-B) - COS A COS B + COS A COS B COS(A-B) )

You pre-calculate X = COS(A-B) and Y = COS A COS B and you put the values into 4

to give:

ACOS( X - Y + XY )

4 trig calculations instead of 6 !

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Change the way you store long/lat:

``````struct LongLat
{
float
long,
lat,
x,y,z;
}
``````

When creating a long/lat, also compute the (x,y,z) 3D point that represents the equivalent position on a unit sphere centred at the origin.

Now, to determine if point B is nearer to point A than point C, do the following:

``````// is B nearer to A than C?
bool IsNearer (LongLat A, LongLat B, LongLat C)
{
return (A.x * B.x + A.y * B.y + A.z * B.z) < (A.x * C.x + A.y * C.y + A.z * C.z);
}
``````

and to get the distance between two points:

``````float Distance (LongLat A, LongLat B)
{
return radius * acos (A.x * B.x + A.y * B.y + A.z * B.z);
}
``````

You could remove the 'radius' term, effectively normalising the distances.

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Switching to lookup tables for sin/cos/acos. Will be faster, there are alot of c/c++ fixed point libraries that also include those.

Here is code from someone else on Memoization. Which might work if the actual values used are more clustered.

Here is an SO question on Fixed Point.

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What is the bottle neck? Is the the sine/cosine function calls or the arcsine call?

If your sine/cosine calls are slow, you could use the following theorem to prevent so many calls:

``````1 = sin(x)^2 + cos(x)^2
cos(x) = sqrt(1 - sin(x)^2)
``````

But I like the mapping idea so that you don't have to recompute values you've already computed. Although be careful as the map could get very large very quickly.

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How exact do you need the values to be?

If you round your values a bit then you could store the result of all lookups and check if thay have been used befor each calculation?

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Well, since lat and lon are garenteed to be within a certain range, you could try using some form of a lookup table for you Math.* method calls. Say, a `Dictionary<double,double>`

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I would argue that you may want to re-examine how you found that function to be the bottleneck. (IE did you profile the application?)

The equation to me seems very light weight and shouldn't cause any trouble. Granted, I don't know your application and you say you do a lot of these calculations.

Nevertheless it is something to consider.

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I used VS 2008 Profiler to examine my application. The calculation runs for quite some time (several minutes) so I am pretty sure the sampling output is correct. –  puls200 Mar 6 '09 at 7:07
If that line is taking minutes there's something fishy going on. –  Gavin Miller Mar 6 '09 at 15:20

As someone else pointed out, are you sure this is your bottleneck?

I've done some performance testing of a similar application I'm building where I call a simple method to return a distance between two points using standard trig. 20,000 calls to it shoves it right at the top of the profiling output, yet there's no way I can make it faster... It's just the shear # of calls.

In this case, I need to reduce the # calls to it... Not that this is the bottleneck.

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Yes, you can make it faster, by eliminating the trigonometry. Method calls are really, really cheap. –  mquander Mar 5 '09 at 16:24

I use a different algorithm for calculating distance between 2 lati/longi positions, it could be lighter than yours since it only does 1 Cos call and 1 Sqrt call.

``````public static double GetDistanceBetweenTwoPos(double lat1, double long1, double lat2, double long2)
{
double distance = 0;
double x = 0;
double y = 0;

x = 69.1 * (lat1 - lat2);
y = 69.1 * (long1 - long2) * System.Math.Cos(lat2 / 57.3);

//calculation base : Miles
distance = System.Math.Sqrt(x * x + y * y);

//Distance calculated in Kilometres
return distance * 1.609;
}
``````
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Would be great if you can travel through the earth :) –  leppie Mar 5 '09 at 17:22

someone has already mentioned memoisation and this is a bit similar. if you comparing the same point to many other points then it is better to precalculate parts of that equation.

``` double result = Math.Acos(Math.Sin(lat2rad) * Math.Sin(lat1rad) + Math.Cos(lat2rad) * Math.Cos(lat1rad) * Math.Cos(lon2rad - lon1rad)); ```
``` double result = Math.Acos(lat2rad.sin * lat1rad.sin + lat2rad.cos * lat1rad.cos * (lon2rad.cos * lon1rad.cos + lon1rad.sin * lon2rad.sin)); ```