Steel and Composite Structures
Volume 47, Number 2, 2023, pages 167-184
DOI: 10.12989/scs.2023.47.2.167
Seismic retrofit of steel structures with re-centering friction devices using genetic algorithm and artificial neural network
Mohamed Noureldin, Masoum M. Gharagoz and Jinkoo Kim
Abstract
In this study, a new recentering friction device (RFD) to retrofit steel moment frame structures is introduced. The
device provides both self-centering and energy dissipation capabilities for the retrofitted structure. A hybrid performance-based
seismic design procedure considering multiple limit states is proposed for designing the device and the retrofitted structure. The
design of the RFD is achieved by modifying the conventional performance-based seismic design (PBSD) procedure using
computational intelligence techniques, namely, genetic algorithm (GA) and artificial neural network (ANN). Numerous nonlinear time-history response analyses (NLTHAs) are conducted on multi-degree of freedom (MDOF) and single-degree of
freedom (SDOF) systems to train and validate the ANN to achieve high prediction accuracy. The proposed procedure and the
new RFD are assessed using 2D and 3D models globally and locally. Globally, the effectiveness of the proposed device is
assessed by conducting NLTHAs to check the maximum inter-story drift ratio (MIDR). Seismic fragilities of the retrofitted
models are investigated by constructing fragility curves of the models for different limit states. After that, seismic life cycle cost
(LCC) is estimated for the models with and without the retrofit. Locally, the stress concentration at the contact point of the RFD
and the existing steel frame is checked being within acceptable limits using finite element modeling (FEM). The RFD showed
its effectiveness in minimizing MIDR and eliminating residual drift for low to mid-rise steel frames models tested. GA and
ANN proved to be crucial integrated parts in the modified PBSD to achieve the required seismic performance at different limit
states with reasonable computational cost. ANN showed a very high prediction accuracy for transformation between MDOF and
SDOF systems. Also, the proposed retrofit showed its efficiency in enhancing the seismic fragility and reducing the LCC
significantly compared to the un-retrofitted models.
Key Words
artificial neural network; disc-springs; FEM; fragility analysis; genetic algorithm; incremental dynamic analysis; life-cycle cost; PBSD; seismic retrofit; self-centering
Address
Mohamed Noureldin, Masoum M. Gharagoz and Jinkoo Kim:Department of Global Smart City, Sungkyunkwan University, Suwon Korea