Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/38954
Title: Comparação entre a meta-heurística Simulated Annealing e a programação linear inteira no agendamento da colheita florestal com restrições de adjacência
Other Titles: Comparison the metaheuristic Simulated Annealing and integer linear programming for solving the forest harvest scheduling with adjacency constraints
Keywords: Inteligência artificial
Programação linear inteira
Colheita florestal
Artificial intelligence
Integer linear programming
Forest harvest
Issue Date: 2013
Publisher: Universidade Federal de Santa Maria
Citation: GOMIDE, L. R.; ARCE, J. E.; SILVA, A. C. L. da. Comparação entre a meta-heurística Simulated Annealing e a programação linear inteira no agendamento da colheita florestal com restrições de adjacência. Ciência Florestal, Santa Maria, v. 23, n. 2, p. 449-460, abr./jun. 2013.
Abstract: The impacts on the landscape after forest harvesting in reforestation are visible, but the cutting is a necessary process to ensure a sustained yield and introduce new technologies. An alternative of control is to use the adjacency constraints in the mathematical models. Thus, the aim of the study was to assess the ability of the metaheuristic SA to solve mathematical models with adjacency constraints type URM, and to check its action with the increasing of the problem complexity. The study was conducted in a forest project containing 52 stands, and created 8 scenarios, where the Johnson and Scheurmann (1977) model I was used as reference. The adjacency constraint type URM was used to control the cutting of adjacent stands. The models were solved by the ILP and metaheuristic SA, which was sued 100 times per scenario. The results showed that the scenario 8 has consumed 137,530 seconds via PLI, which represented 2,023.09 times more than the average time processing of the SA metaheuristic (67.98 seconds). The best solutions were 4.71 % (scenario 1) to 11.40 % (scenario 8) far from the optimal (ILP). The metaheuristic SA is capable to solve the forest problem, meeting the targets in the most cases. The increasing of complexity produced a higher deviation from the optimal. Concludes that the metaheuristic SA should not be processed a single time, because there are hazards in obtain inferior solutions, but doing it is recommended to increase the stop criterion.
URI: http://repositorio.ufla.br/jspui/handle/1/38954
Appears in Collections:DCF - Artigos publicados em periódicos



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