Abstract
Overhead cranes are typical dynamic systems which can be modeled as a combination of a nominal linear part and a highly nonlinear part. For such kind of systems, we propose a control scheme that deals with each part separately, yet ensures global Lyapunov stability. The former part is readily controllable by the H ∞ PDC techniques, and the latter part is compensated by fuzzy mixture of affine constants, leaving the remaining unmodeled dynamics or modeling error under robust learning control using the Nelder-Mead simplex algorithm. Comparison with the adaptive fuzzy control method is given via simulation studies, and the validity of the proposed control scheme is demonstrated by experiments on a prototype crane system. © 2013 Kao-Ting Hung et al.
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CITATION STYLE
Hung, K. T., Tsai, Z. R., & Chang, Y. Z. (2013). Switched two-level H ∞ and robust fuzzy learning control of an overhead crane. Mathematical Problems in Engineering, 2013. https://doi.org/10.1155/2013/712615
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