This paper proposes new metaheuristic algorithms for an identification problem of nonlinear friction model. The proposed cooperative algorithms are formed from the bacterial foraging optimization (BFO) algorithm and the tabu search (TS). The paper reports the search comparison studies of the BFO, the TS, the genetic algorithm (GA), and the proposed metaheuristics. Search performances are assessed by using surface optimization problems. The proposed algorithms show superiority among them. A real-world identification problem of the Stribeck friction model parameters is presented. Experimental setup and results are elaborated. © 2012 Nuapett Sarasiri et al.
CITATION STYLE
Sarasiri, N., Suthamno, K., & Sujitjorn, S. (2012). Bacterial foraging-tabu search metaheuristics for identification of nonlinear friction model. Journal of Applied Mathematics, 2012. https://doi.org/10.1155/2012/238563
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