Non‐linear system identification of the versatile‐typed structures by a novel signal processing technique |
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Authors: | Jian Zhang Tadanobu Sato Susumu Iai |
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Affiliation: | 1. Department of Civil and Earth Resources Engineering, Kyoto University, Kyoto 611‐0011, Japan;2. Seismic Disaster Institute, Kobe Gakuin University, Kobe 651‐2180, Japan |
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Abstract: | Non‐linear structural identification problems have raised considerable research efforts since decades, in which the Bouc–Wen model is generally utilized to simulate non‐linear structural constitutive characteristic. Support vector regression (SVR), a promising data processing method, is studied for versatile‐typed structural identification. First, a model selection strategy is utilized to determine the unknown power parameter of the Bouc–Wen model. Meanwhile, optimum SVR parameters are selected automatically, instead of tuning manually. Consequently, the non‐linear structural equation is rewritten in linear form, and is solved by the SVR technique. A five‐floor versatile‐type structure is studied to show the effectiveness of the proposed method, in which both power parameter known and unknown cases are investigated. Copyright © 2007 John Wiley & Sons, Ltd. |
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Keywords: | support vector regression model selection non‐linear structural identification |
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