Backbone model for reinforced concrete block shear wall components and systems using controlled multigene genetic programming
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- @Article{ELGAMEL:2023:engstruct,
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author = "Hana Elgamel and Mohamed K. Ismail and
Ahmed Ashour and Wael El-Dakhakhni",
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title = "Backbone model for reinforced concrete block shear
wall components and systems using controlled multigene
genetic programming",
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journal = "Engineering Structures",
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volume = "274",
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pages = "115173",
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year = "2023",
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ISSN = "0141-0296",
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DOI = "doi:10.1016/j.engstruct.2022.115173",
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URL = "https://www.sciencedirect.com/science/article/pii/S0141029622012494",
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keywords = "genetic algorithms, genetic programming, Backbone
model, Fully grouted, Reinforced concrete block shear
walls, Multigene genetic programming, Seismic
performance, Variables selection",
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abstract = "Reinforced concrete block shear walls (RCBSWs)have
been used as an effective seismic force resisting
system in low- and medium-rise buildings for many
decades. However, attributed to their complex nonlinear
behavior and the composite nature of their constituent
materials, accurate prediction of their seismic
performance, relying solely on mechanics, has been
challenging. This study adopts multi-gene genetic
programming (MGGP)- a class of bio-inspired artificial
intelligence, to uncover the complexity of RCBSW
behaviors and develop simplified procedures for
predicting the full backbone curve of flexure-dominated
RCBSWs under cyclic loading. A piecewise linear
backbone curve was developed using five secant
stiffness expressions associated with: cracking;
yielding; 80percent ultimate; ultimate; and 20percent
strength degradation (i.e., post-peak stage) derived
through mechanics-controlled MGGP. Based on the
experimental results of large-scale cyclically loaded
fully-grouted RCBSWs, compiled from previously reported
studies, a variable selection procedure was performed
to identify the most influential variable subset
governing wall behaviors. Subsequently, the MGGP
stiffness expressions were trained and tested, and
their accuracy was compared to that of existing models
employing various statistical measures. In addition,
the predictability of the developed backbone model was
assessed at the system-level against experimental
results of two two-story buildings available in the
literature. This study demonstrates the power of the
MGGP approach in addressing the complexity of the
cyclic behavior of RCBSWs at both component- and
system-level-offering an efficient prediction tool that
can be adopted by relevant seismic design standards
pertaining to RCBSW buildings",
- }
Genetic Programming entries for
Hana Elgamel
Mohamed K Ismail
Ahmed Ashour
Wael El-Dakhakhni
Citations