# Optimise 3D placement of rooms?

Given a graph where the nodes represent 3x3x1 rooms and the vertices represent a need for closeness. How should they be placed in 3D space to optimise overall closeness?

Example (randomish) datastructure:

``````{
room1: [room2, room3],
room2: [room1, room4],
room3: [room5],
room4: [room2, room5, room1],
room5: []
}
``````

(I'm not exactly sure where I should be asking this question as it's different from most I see on stackoverflow. I am interested in programming solutions/heuristic algorithms.)

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How do you compute the closeness of two rooms? Is it the minimal distance between two blocks? What norm are you using? – Simon Jul 13 '11 at 9:19
Practically, I'm planning on applying this to design a Dwarf Fortress layout. Currently I want to know how it's done in general before I start thinking of stairways and rooms of different dimensions. The closeness is best characterised by distance between room centres. – Annan Jul 13 '11 at 16:59
(Hmm, *Chebyshev distance between room centres) – Annan Jul 13 '11 at 17:09
Upvote: best application of algorithms I've seen this year. – bdares Jul 14 '11 at 8:51

## 2 Answers

I assume you want adjacency.

In a backtracking search, maintain a queue of rooms ordered by how many other rooms they are connected to in the graph (the most constrained variable heuristic). Then, for each room in the queue:

• determine the possible grid positions it can take and pick one of them;
• in a loop, determine whether any other rooms exist which now can only be in one spot, put them there and remove them from the queue (forward checking);
• if any of the previous steps failed, backtrack to the last choice point (undo the changes to the grid).
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Thanks for the answer, I'm going to read up about this. If adjacency isn't possible, i.e. there is a central room that needs to be close to too many other rooms. Would a backtracking search be able to find the layout the overall closest rooms? – Annan Jul 13 '11 at 17:05
Not the algorithm that I sketched; adding such "preference constraints" can mean you have to radically change the problem representation before applying backtracking search. Check out Russell & Norvig, chapter 6 in the 3rd edition. – Fred Foo Jul 13 '11 at 18:06

Smells like a far cousin of a 3D bin packing problem, which is NP-complete. Try construction heuristics (first fit, best fit decreasing, ...) followed by metaheuristics (Tabu search, simulated annealing, genetic algorithms, ...). There is open source software out there for that, such as Drools Planner, openTS, jgap, ...

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