I'm in the process of learning about simulated annealing algorithms and have a few questions on how I would modify an example algorithm to solve a 0-1 knapsack problem.

I found this great code on CP:

http://www.codeproject.com/KB/recipes/simulatedAnnealingTSP.aspx

I'm pretty sure I understand how it all works now (except the whole Bolzman condition, as far as I'm concerned is black magic, though I understand about escaping local optimums and apparently this does exactly that). I'd like to re-design this to solve a 0-1 knapsack-"ish" problem. Basically I'm putting one of 5,000 objects in 10 sacks and need to optimize for the least unused space. The actual "score" I assign to a solution is a bit more complex, but not related to the algorithm.

This seems easy enough. This means the Anneal() function would be basically the same. I'd have to implement the GetNextArrangement() function to fit my needs. In the TSM problem, he just swaps two random nodes along the path (ie, he makes a very small change each iteration).

For my problem, on the first iteration, I'd pick 10 random objects and look at the leftover space. For the next iteration, would I just pick 10 new random objects? Or am I best only swapping out a few of the objects, like half of them or only even one of them? Or maybe the number of objects I swap out should be relative to the temperature? Any of these seem doable to me, I'm just wondering if someone has some advice on the best approach (though I can mess around with improvements once I have the code working).

Thanks!

Mike