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This paper discusses the use of neural networks for intelligent control of structures under earthquakes, including the training rule of the controller neural network and the application of the proposed method to a three-story structure with an active mass driver. The results from numerical examples demonstrate the effectiveness of the proposed approach.
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지진시 구조물의 지능제어 기법Intelligent Control of Structures under Earthquakes 김동현 : 한국과학기술원 토목공학과, 박사과정 이규원 : 전북대학교 토목공학과, 교수 이종헌 : 경일대학교 토목공학과, 교수 이인원 : 한국과학기술원 토목공학과, 교수
CONTENTS 1. INTRODUCTION 2. NEURAL NETWORKS FOR CONTROL 3. STRUCTURE WITH AMD 4. NUMERICAL EXAMPLES 5. CONCLUSIONS
1. INTRODUCTION Conventional Control vs. ANN Control required impossible/hard impossible/hard Model based conventional control Response based ANN control Mathematical model Parametric uncertainty Nonlinearity not required simple/easy simple/easy
Previous Works on ANN Control in CE • H. M. Chen et al. (1995), J. Ghaboussi et al. (1995) - pioneering research in civil engineering • K. Nikzad (1996) - delay compensation • K. Bani-Hani et al. (1998) - nonlinear structural control • J. T. Kim et al. (2000) - optimal control using neural network
Scope • Training rule of controller neural network • MDOF linear/nonlinear structural control • Actuator dynamics and time delay effects are trained
2. NEURAL NETWORKS FOR CONTROL • Emulator neural network - trained to imitate responses of unknown structures. - used for obtaining the sensitivity of response to control force • Controller neural network - trained to make control force. - used for controller. Two Neural Networks
Previous Studies Weights of controller neural network are updated to minimize error function(E). Emulator(ANN) Minimize error(E) E=D-X X U + Controller(ANN) Structure _ Load D (desired response) Z-1
Proposed Method Weights of controller neural network are updated to minimize cost function(J) instead of error function(E). Emulator(ANN) Minimize cost(J) U Controller(ANN) Structure X Load Z-1
Learning Rule • Cost function (1) : sampling time : response vector at t=kT : control force vector at t=kT : relative weighting matrices
Controller neural network l –th layer (l+1)-th layer Output layer Input layer … … ... ... ... ... ... ... (2) Output at (l+1)th layer (3)
Weight Learning rule (4) define (5) (6) • Bias Learning rule (7)
(8) are evaluated at t=kT is obtained from the emulator neural network
3. STRUCTURE WITH AMD Structure (9) : displacement vector: ground acceleration: control force : mass matrix: damping matrix: stiffness vector: actuator location vector
Nonlinear model(Bouce-Wen, 1981) inter-story restoring force (10) where (11) : percentage linearity: linear stiffness
AMD(Active Mass Driver) Valve : (12) Cylinder : (13) : oil flow rate: electric signal(volt): relative velocity between the added mass and the roof
Control time delay compute uk Control signal detect x ZOH uk uk-1 delayed time Time kT (k+1)T
4. NUMERICAL EXAMPLES Model(linear) • Structure mass : 200kg(story) stiffness : k0=2.25105N/m(inter-story) damping : 0.6, 0.7, 0.3% for each mode • AMD mass : 3% of total mass(18kg) stiffness :optimal stiffness for TMD ( ) damping :optimal damping for TMD ( )
Analysis integration time : 0.0005 secsampling time : 0.005 sectime delay : 0.0005 sec Neural Network
Control results(linear) • El Centro(1940)
Model(nonlinear) • Structure mass, damping : the same as linear model stiffness : =2.25105N/m(inter-story), =0.5
Control results(nonlinear) uncontrolled uncontrolled controlled controlled <El Centro earthquake> <Northridge earthquake>
4. CONCLUSIONS • Learning rule of neural network for optimal • control is proposed. • Actuator dynamics and time delay effect is • included in the learning • Nonlinear three-story structure is controlled • successfully.