Active control strategy of structures based on lattice type probabilistic neural network |
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Authors: | Dong Hyawn Kim Dookie Kim Seongkyu Chang Hie-Young Jung |
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Affiliation: | aDepartment of Ocean System Engineering, Kunsan National University, Kunsan, Jeonbuk, 573-701, Republic of Korea;bDepartment of Civil Engineering, Kunsan National University, Kunsan, Jeonbuk, 573-701, Republic of Korea;cDepartment of Civil Engineering, University of Seoul, Dongdaemun-gu, Seoul 130-743, Republic of Korea |
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Abstract: | A new neuro-control scheme for active control of structures having a basic structure similar to the Probabilistic Neural Network (PNN) is proposed. It utilizes the lattice pattern of state vector as the training data of PNN, and thus it is called the Lattice Probabilistic Neural Network (LPNN). Comparing the two schemes, PNN takes much time to obtain a control force in the application because it uses all the training patterns. This may delay the control action inevitably. However, in LPNN, the control force is calculated by using only the adjacent information of LPNN input, making the response of LPNN greatly faster than that of PNN. To investigate the general control capability of the proposed algorithm, one-story and three-story buildings under California, El Centro, and Northridge earthquakes are used as test models. Control results of the LPNN are compared with those of the conventional PNN, and these show that the structural responses have been suppressed effectively by the proposed algorithm. |
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Keywords: | Active control Probabilistic neural network Lattice Training pattern Structure Earthquake |
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