Earthquakes and Structures
Volume 23, Number 3, 2022, pages 315-328
DOI: 10.12989/eas.2022.23.3.315
Machine learning tool to assess the earthquake structural safety of systems designed for wind: In application of noise barriers
Tabish Ali, Jehyeong Lee and Robin Eunju Kim
Abstract
Structures designed for wind have an opposite design approach to those designed for earthquakes. These structures
are usually reliable if they are constructed in an area where there is almost no or less severe earthquake. However, as seismic
activity is unpredictable and it can occur anytime and anywhere, the seismic safety of structures designed for wind must be
assessed. Moreover, the design approaches of wind and earthquake systems are opposite where wind design considers higher
stiffness but earthquake designs demand a more flexible structure. For this reason, a novel Machine learning framework is
proposed that is used to assess and classify the seismic safety of the structures designed for wind load. Moreover, suitable criteria
is defined for the design of wind resistance structures considering seismic behavior. Furthermore, the structural behavior as a
result of dynamic interaction between superstructure and substructure during seismic events is also studied. The proposed
framework achieved an accuracy of more than 90% for classification and prediction as well, when applied to new structures and
unknown ground motions.
Key Words
AI, coupled analysis, ground motions, noise barriers, seismic safety, sensitivity
Address
Tabish Ali, Jehyeong Lee and Robin Eunju Kim:Department of Civil & Environmental Engineering, Hanyang University,
222, Wangsimni-ro, Seongdong-gu, Seoul 04763, Republic of Korea