Great Deluge algorithm
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The Great Deluge algorithm (GD) is a generic algorithm applied to optimization problems. It is similar in many ways to the hill-climbing and simulated annealing algorithms.
The algorithm is clearly inspired by the simulated annealing idea in other optimization algorithms. The name comes from the analogy that in a great deluge a person climbing a hill will try to move up the hill in any direction that does not get his/her feet wet as the water level rises.
In a typical implementation of the GD, the algorithm usually start with a poor approximation, S, of the optimum solution. A numerical value called the badness that measures how undesirable the initial approximation is calculated. The higher the value of badness, the more undesirable is the approximate solution. Another numerical value called the tolerance is calculated based on a number of factors, often including the initial badness.
A new approximate solution S' , called a neighbour of S, is calculated based on S. The badness of S' , b' , is computed and compared with the tolerance. If b' is better than tolerance, then the algorithm is recursively restarted with S : = S' , and tolerance := decay(tolerance) where decay is a function that lowers the tolerance (representing a rise in water levels). If b' is worse than tolerance, a different neighbour S* of S is chosen and the process repeated. If all the neighbours of S produce worse approximate solutions, then the algorithm is terminated and S is put forward as the best approximate solution obtained.
[edit] References
- Gunter Dueck: "New Optimization Heuristics: The Great Deluge Algorithm and the Record-to-Record Travel", Technical report, IBM Germany, Heidelberg Scientific Center, 1990.
- Gunter Dueck: "New Optimization Heuristics The Great Deluge Algorithm and the Record-to-Record Travel", Journal of Computational Physics, Volume 104, Issue 1, p. 86-92, 1993