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Seismic response of high-rise buildings using long short-term memory intelligent decentralized control system

Journal

JOURNAL OF VIBRATION AND CONTROL
Volume 29, Issue 9-10, Pages 1981-1995

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/10775463221074478

Keywords

decentralized control; neural network; long short-term memory network; intelligent control; fault tolerance

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This paper proposes an intelligent decentralized control method based on long short-term memory neural network for seismic response control of high-rise buildings. By utilizing decentralized control theory and Lyapunov stability theory, a long short-term memory network deep-learning framework is successfully established to construct different types of decentralized controllers. Simulation results on a 20-story benchmark building model show that the proposed method has good fault tolerance and can avoid the overall failure of the control system.
Due to the difficulty in adopting the conventional centralized control method for seismic response control of high-rise buildings with complex structures and large sizes, the decentralized control method is applied. The challenge is that the control model of the high-rise structure divided into multiple subsystems changes as large nonlinear deformation under strong earthquakes. Therefore, with an application of the long short-term memory neural network, the long short-term memory intelligent decentralized control method is proposed for seismic response control of high-rise buildings. On the basis of the decentralized control theory for high-rise buildings, a long short-term memory network deep-learning framework is established to construct different types of decentralized controllers, and to determine the sufficient conditions for the stability of the decentralized controllers using the Lyapunov stability theory. The long short-term memory intelligent decentralized control system of a 20-story benchmark building mode is simulated, and its fault tolerance is studied. The simulation results show that the decentralized control method can reduce the complexity of the structure model by dividing the high-rise building structure into multiple subsystems. Compared with the centralized control method, the long short-term memory intelligent decentralized control method can effectively avoid the overall failure of the control system. The long short-term memory intelligent decentralized control method can still have a satisfactory performance under sensor noise and control devices failures. This verifies that the long short-term memory intelligent decentralized control system has a better fault tolerance and can provide an innovative solution for the decentralized control of high-rise buildings.

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