# Find the right/best track combination for a given distance, using a genetic algorithm

I have a list of tracks (model railroad tracks) with different length, example: TrackA on 3.0cm, TrackB on 5.0cm, TrackC on 6.5cm, TrackD on 10.5cm

Then I want to find out of what kind of track I should put together to get from point A to point B with a given distance and a margin. And I should also be able to a prioritizes the use of track type.

Example; Distance from point A to B is 1.7m, and I have lot of TrackC and few of TrackB. And I will allow a margin on +/- 0.5cm to the distance.

What kind of tracks should I use, and how many of each track, and how many combination do I have, sorted after the track where I have most of.

I have Google after some C# help using genetic algorithm, but I am lost in, how I can implement this in a good methode.

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Try asking this on cstheory.stackexchange.com. –  Björn Pollex Nov 5 '10 at 12:13

This is how you do it. Ill assume you are familiar with the basic G.A. concepts:

Each individual in the population much consist of various 'lengths of track'.

The primitive set would therefore be a set of constants corresponding to the lengths you have available fore example { 3, 4, 5}

The fitness of each individual is therefore said to be the sum of total error. Or more simply: say your track is supposed to be 1 metre long. If an individual is 1 metre long exactly, there is no error and the fitness is 0. If another individual has a length of 0.5m, its fitness is 0.5. So the lower the better.