Wind and Structures
Volume 36, Number 5, 2023, pages 321-331
DOI: 10.12989/was.2023.36.5.321
Active flutter control of long-span bridges via deep reinforcement learning: A proof of concept
Teng Wu, Jiachen He and Shaopeng Li
Abstract
Aeroelastic instability (i.e., flutter) is a critical issue that threatens the safety of flexible bridges with increasing span
length. As a promising technique for flutter prevention, active aerodynamic control using auxiliary surfaces attached to the
bridge deck (e.g., winglets and flaps) can be utilized to extract the stabilizing forces from the surrounding wind flow.
Conventional controllers for the active aerodynamic control are usually designed using linear model-based schemes [e.g., linear
quadratic regulator (LQR) and H-infinity control]. In addition to suffering from model inaccuracies, the obtained linear
controller may not work well considering the high complexity of the inherently nonlinear wind-bridge-control system. To this
end, this study proposes a nonlinear model-free controller based on deep reinforcement learning for active flutter control of longspan bridges. Specifically, a deep neural network (DNN), with the powerful ability to approximate nonlinear functions, is
introduced to map from the system state (e.g., the motion of bridge deck) to the control command (e.g., reference position of the
actively controlled surface). The DNN weights are obtained by interacting with the wind-bridge-control environment in a trialand-error fashion (hence the explicit model of system dynamics is not required) using reinforcement learning algorithms of deep
deterministic policy gradient (DDPG) due to its ability to tackle continuous actions with high training efficiency. As a proof of
concept, numerical examples on active flutter control of a flat plate and a bridge deck are conducted to demonstrate the good
performance of the proposed scheme.
Key Words
active control; deep neural networks; flutter; long-span bridges; reinforcement learning
Address
Teng Wu:University at Buffalo, Buffalo, NY 14260, USA
Jiachen He:China Railway Siyuan Survey and Design Group Co., Ltd., Wuhan, Hubei 430063, China
Shaopeng Li:University of Florida, Gainesville, FL 32611, USA