1 / 27

MR 댐퍼를 이용한 지진하중을 받는 지진격리 벤치마크 구조물의 신경망제어

2006 춘계 지진공학회 학술발표회 17~18, Mar, 2006. MR 댐퍼를 이용한 지진하중을 받는 지진격리 벤치마크 구조물의 신경망제어. Heon-Jae Lee *: Ph.D. Candidate , KAIST, Korea Sang-Won Cho: Post Doctoral Fellow, UWO, Canada Ju-Won Oh: Professor, Hannam University, Korea In-Won Lee: Professor, KAIST, Korea. OUTLINE. Introduction

tawny
Download Presentation

MR 댐퍼를 이용한 지진하중을 받는 지진격리 벤치마크 구조물의 신경망제어

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. 2006 춘계 지진공학회 학술발표회 17~18, Mar, 2006 MR 댐퍼를 이용한 지진하중을 받는 지진격리 벤치마크 구조물의 신경망제어 Heon-Jae Lee*: Ph.D. Candidate, KAIST, Korea Sang-Won Cho: Post Doctoral Fellow, UWO, Canada Ju-Won Oh: Professor, Hannam University, Korea In-Won Lee: Professor, KAIST, Korea

  2. OUTLINE • Introduction • Benchmark Problem • Proposed Method • Training Neuro-Control System • Performance Evaluation • Conclusion Structural Dynamics & Vibration Control Lab., KAIST, Korea

  3. Kodiak, Alaska San Francisco Introduction • Base Isolation • One of the most widely implemented seismic protection system • Mitigates the effects of an earthquake by isolating the structure from ground motion Structural Dynamics & Vibration Control Lab., KAIST, Korea

  4. Lead Rubber Bearing Friction Pendulum Bearing Introduction • Nonlinear Devices for Base Isolation • Benefit • Restoring force and adequate damping capacity can be obtained in one device • Drawbacks • Strongly nonlinear • Poor adaptability for a wide range of ground motion • Especially strong impulsive ground motions generated at near-source location Structural Dynamics & Vibration Control Lab., KAIST, Korea

  5. Introduction • Hybrid Control Strategies • Consisting of a base isolation system combined with actively controlled actuators • Advantages • High performance in reducing vibration • High adaptability for different ground excitation • Ability to control of multiple vibration modes • Drawbacks • Requirement of a large external power supply • Active systems may have the risk of instability Structural Dynamics & Vibration Control Lab., KAIST, Korea

  6. Introduction • Semi-Active Base Isolation System • Consisting of a base isolation system that employs semi-active control devices (e.g. MR dampers, controllable friction dampers) • Similar high adaptability to the active system • No requirement of large power supplies Structural Dynamics & Vibration Control Lab., KAIST, Korea

  7. Introduction • Semi-Active Neuro-Controller • Improved neuro-controller (Kim et al., 2000, 2001) • New training algorithm based on cost function • Sensitivity evaluation algorithm to replace an emulator neural network • Clipped algorithm • Clips the control force that cannot be achieved by MR damper Structural Dynamics & Vibration Control Lab., KAIST, Korea

  8. Benchmark Problem • Purpose • To provide systematic and standardized means • By making direct comparisons between competing control strategies, including devices, algorithms, sensors, etc. • To allow researchers in structural control to test their algorithms and devices • This benchmark problem is about a smart base isolation system. Structural Dynamics & Vibration Control Lab., KAIST, Korea

  9. Benchmark Problem • Benchmark Structure • A base-isolated eight-story, steel-braced framed building • Similar to existing building in Los Angeles, California • In this investigation, only the linear elastomeric isolation system which consists of 92 bearings is considered. • Modeled using three master degrees of freedom per floor • 16 MR dampers (8 along the x-axis and 8 along the y-axis) are also installed Structural Dynamics & Vibration Control Lab., KAIST, Korea

  10. Benchmark Problem • Sample Earthquakes • Both the fault-normal (FN) and fault-parallel (FP) components of Newhall, Sylmar, El Centro, Rinaldi, Kobe, Ji-ji, Erzinkan • Control Cases • Case I : x-direction (FP), y-direction (FN) • Case II: x-direction (FN), y-direction (FP) Structural Dynamics & Vibration Control Lab., KAIST, Korea

  11. STRUCTURE Clipped Algorithm MR Damper Proposed Method Neural Network Clipped Neuro-Controller Block diagram of the proposed method Structural Dynamics & Vibration Control Lab., KAIST, Korea

  12. Proposed Method • Structure of the neural network Output layer Input layer Hidden layer Structural Dynamics & Vibration Control Lab., KAIST, Korea

  13. Proposed Method • Improved Neuro-Controller • New training algorithm • The neuro-controller is trained by minimizing a cost function where, is specific state, is control signal and are weighting matrices Structural Dynamics & Vibration Control Lab., KAIST, Korea

  14. Proposed Method • Improved Neuro-Controller • The update of weights and biases between the output layer and hidden layer can be simply expressed as where, :learning rate :sensitivity :unit vector :activation function of the output layer Structural Dynamics & Vibration Control Lab., KAIST, Korea

  15. Proposed Method • Improved Neuro-Controller • In the same manner, update of those between the hidden layer and input layer can be obtained as where, Structural Dynamics & Vibration Control Lab., KAIST, Korea

  16. Proposed Method • Clipped Algorithm • Desired force (by neural network): • Generated force (by MR damper): Structural Dynamics & Vibration Control Lab., KAIST, Korea

  17. where, Training Neuro-Controller • Training Data • Filtered artificial earthquake record • Magnitude: scaled to match the maximum acceleration of the given earthquakes • Shaping filter Ground acceleration (m/sec2) Time (sec) Structural Dynamics & Vibration Control Lab., KAIST, Korea

  18. Training Neuro-Controller • Structure of Neuro-Controller • Two neuro-controllers are employed for x and y-directions, respectively. Structure of each direction’s neuro-controller Structural Dynamics & Vibration Control Lab., KAIST, Korea

  19. Training Neuro-Controller • Cost Function • In cost function, are included. • Optimal weighting matrices Structural Dynamics & Vibration Control Lab., KAIST, Korea

  20. Training Neuro-Controller • Cost function vs. epoch • The cost function converges in both x and y-directions, which means the training is successful. x-direction Cost function y-direction epoch Structural Dynamics & Vibration Control Lab., KAIST, Korea

  21. Performance Evaluation • Evaluation Criteria • Based on both maximum and RMS responses of the building J1 - Peak base shear J2 - Peak structure shear J3 - Peak base displacement J4 - Peak inter-story drift J5 - Peak absolute floor acceleration J6 - Peak generated force J7 - RMS base displacement J8 - RMS absolute floor acceleration J9 - Total energy absorbed Structural Dynamics & Vibration Control Lab., KAIST, Korea

  22. Performance Evaluation • Performance Comparison (Case I) Sylmar El Centro Newhall Rinaldi Kobe Jiji Erzinkan Passive (Vmax) Clipped optimal Proposed Structural Dynamics & Vibration Control Lab., KAIST, Korea

  23. Performance Evaluation • Performance Comparison (Case II) Sylmar El Centro Newhall Rinaldi Kobe Jiji Erzinkan Passive (Vmax) Clipped optimal Proposed Structural Dynamics & Vibration Control Lab., KAIST, Korea

  24. Performance Evaluation • Corner drift (normalized by uncontrolled values) Structural Dynamics & Vibration Control Lab., KAIST, Korea

  25. Conclusion • A new semi-active control strategy for seismic response reduction using neuro-controller and MR dampers is proposed. • The proposed strategy was applied to a benchmark building installed with linear elastomeric isolation system. • In numerical simulation results, the proposed strategy can significantly reduce the floor acceleration, base shear and building corner drift with only a slight increase of the base displacement. Structural Dynamics & Vibration Control Lab., KAIST, Korea

  26. Thank you for your attention!!! Structural Dynamics & Vibration Control Lab., KAIST, Korea

  27. Sensitivity evaluation algorithm (Kim et al., 2001) State space equation of structure (9) In the discrete-time domain, (10) where represents the sensitivity, . Structural Dynamics & Vibration Control Lab., KAIST, Korea

More Related