Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network

A structural analysis model to represent the dynamic behavior of building structure is required to develop a semi-active seismic response control system. Although the finite element method (FEM) is the most widely used method for seismic response analysis, when the FEM is applied to the dynamic anal...

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Published in:Applied Sciences
Main Author: Hyun-Su Kim
Format: Article
Language:English
Published: MDPI AG 2020-06-01
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Online Access:https://www.mdpi.com/2076-3417/10/11/3915
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author Hyun-Su Kim
author_facet Hyun-Su Kim
author_sort Hyun-Su Kim
collection DOAJ
container_title Applied Sciences
description A structural analysis model to represent the dynamic behavior of building structure is required to develop a semi-active seismic response control system. Although the finite element method (FEM) is the most widely used method for seismic response analysis, when the FEM is applied to the dynamic analysis of building structures with nonlinear semi-active control devices, the computational effort required for the simulation for optimal design of the semi-active control system can be considerable. To solve this problem, this paper used recurrent neural network (RNN) to make a time history response simulation model for building structures with a semi-active control system. Example structures were selected of an 11-story building structure with a semi-active tuned mass damper (TMD), and a 27-story building having a semi-active mid-story isolation system. A magnetorheological damper was used as the semi-active control device. Five historical earthquakes and five artificial ground motions were used as ground excitations to train the RNN model. Two artificial ground motions and one historical earthquake, which were not used for training, were used to verify the developed the RNN model. Compared to the FEM model, the developed RNN model could effectively provide very accurate seismic responses, with significantly reduced computational cost.
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spelling doaj-art-a0dcc10cdc964a5dbd36e4e3d3dfba6d2025-08-19T22:47:18ZengMDPI AGApplied Sciences2076-34172020-06-011011391510.3390/app10113915Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural NetworkHyun-Su Kim0Division of Architecture, Sunmoon University, Asan-si 31460, KoreaA structural analysis model to represent the dynamic behavior of building structure is required to develop a semi-active seismic response control system. Although the finite element method (FEM) is the most widely used method for seismic response analysis, when the FEM is applied to the dynamic analysis of building structures with nonlinear semi-active control devices, the computational effort required for the simulation for optimal design of the semi-active control system can be considerable. To solve this problem, this paper used recurrent neural network (RNN) to make a time history response simulation model for building structures with a semi-active control system. Example structures were selected of an 11-story building structure with a semi-active tuned mass damper (TMD), and a 27-story building having a semi-active mid-story isolation system. A magnetorheological damper was used as the semi-active control device. Five historical earthquakes and five artificial ground motions were used as ground excitations to train the RNN model. Two artificial ground motions and one historical earthquake, which were not used for training, were used to verify the developed the RNN model. Compared to the FEM model, the developed RNN model could effectively provide very accurate seismic responses, with significantly reduced computational cost.https://www.mdpi.com/2076-3417/10/11/3915recurrent neural networkseismic response simulationsemi-active control devicemagnetorheological damperdeep learning
spellingShingle Hyun-Su Kim
Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
recurrent neural network
seismic response simulation
semi-active control device
magnetorheological damper
deep learning
title Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
title_full Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
title_fullStr Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
title_full_unstemmed Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
title_short Development of Seismic Response Simulation Model for Building Structures with Semi-Active Control Devices Using Recurrent Neural Network
title_sort development of seismic response simulation model for building structures with semi active control devices using recurrent neural network
topic recurrent neural network
seismic response simulation
semi-active control device
magnetorheological damper
deep learning
url https://www.mdpi.com/2076-3417/10/11/3915
work_keys_str_mv AT hyunsukim developmentofseismicresponsesimulationmodelforbuildingstructureswithsemiactivecontroldevicesusingrecurrentneuralnetwork