Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/130647
Title: Enhancing seismic design of non-structural components implementing artificial intelligence approach: Predicting component dynamic amplification factors
Authors: Bhavani, B. D.
Challagulla, S. P.
Noroozinejad, Farsangi, E.
Hossain, I.
Manne, M.
Issue Date: 2023
Publisher: Materials and Energy Research Center
Citation: Bhavani, BD, Challagulla, S, Noroozinejad Farsangi, E, Hossain, I & Manne, M 2023, 'Enhancing Seismic Design of Non-structural Components Implementing Artificial Intelligence Approach: Predicting Component Dynamic Amplification Factors', International Journal of Engineering: Transactions A: Basics, Том. 36, № 7, стр. 1211-1218. https://doi.org/10.5829/IJE.2023.36.07A.02
Bhavani, B. D., Challagulla, S., Noroozinejad Farsangi, E., Hossain, I., & Manne, M. (2023). Enhancing Seismic Design of Non-structural Components Implementing Artificial Intelligence Approach: Predicting Component Dynamic Amplification Factors. International Journal of Engineering: Transactions A: Basics, 36(7), 1211-1218. https://doi.org/10.5829/IJE.2023.36.07A.02
Abstract: The seismic performance of non-structural components (NSCs) has been the focus of intensive study during the last few decades. Modern building codes define design forces on components using too simple relationships. The component accelerates faster than the floor acceleration to which it is connected. Therefore, component dynamic amplification factors (CDAFs) are calculated in this work to quantify the amplification in the acceleration of NSCs for the various damping ratios and tuning ratios of the NSC, and the primary structural periods. From the analysis results, it was observed that CDAF peaks are either underestimated or overestimated by the code-based formulae. A prediction model to ascertain the CDAFs was also developed using artificial neural networks (ANNs). Following that, the suggested model is contrasted with the established relationships from the past research. The ANN model's coefficient of correlation (R) was 0.97. Hence, using an ANN algorithm reduces the necessity of laborious and complex analysis. ©2023 The author(s).
Keywords: DYNAMIC INTERACTION
INDIA
PRIMARY STRUCTURE
SECONDARY STRUCTURE
TELANGANA
TUNING RATIO
ACCELERATION
NEURAL NETWORKS
SEISMOLOGY
COMPONENT DYNAMICS
DYNAMIC AMPLIFICATION FACTORS
DYNAMIC INTERACTION
INDIA
NON-STRUCTURAL COMPONENTS
PRIMARY STRUCTURES
SECONDARY STRUCTURES
SEISMIC PERFORMANCE
TELANGANUM
TUNING RATIO
SEISMIC DESIGN
URI: http://elar.urfu.ru/handle/10995/130647
Access: info:eu-repo/semantics/openAccess
cc-by
License text: https://creativecommons.org/licenses/by/4.0/
SCOPUS ID: 85165056482
WOS ID: 001030701300002
PURE ID: 43314082
ISSN: 1728-144X
DOI: 10.5829/ije.2023.36.07a.02
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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