An Analysis of the Effects of SVM Parameters on the Dead-Time System Modeling

Modeling a dead-time system is a common issue in engineering applications. To address this issue, existing research has employed neural networks and fuzzy logic-based intelligent systems. Herein, a dead-time system modeled with the aid of support vector machine regression, which has a good generalization feature, was investigated. The performance of the method proposed herein was examined with different parameters in linear and nonlinear dead-time systems.

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http://www.sciencedirect.com/science/article/pii/ S1226086X13003742 - !A. M. Ghaedi, M. Hossainpour, A. Ansari, M.H. Habibi, A.R. Asghari “Least square-support vector (LS-SVM) method for modeling of methylene blue dye adsorption using copper oxide loaded on activated carbon”Journal of Industrial and Engineering Chemistry, Volume 20, Issue 4, 25 July 2014, pp. 1641-1649.