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Innovative approach to estimate structural damage using linear regression and K-nearest neighbors machine learning algorithms

Vasile Calofir, Ruben-Iacob Munteanu, Mircea Ştefan Simoiu, Karol-Cristian Lemnaru

2024Results in Engineering22 citationsDOIOpen Access PDF

Abstract

Conventional structural design methodologies often utilize elastic analysis techniques, such as the equivalent static force method and the response spectrum method. While these methods are known for their simplicity and computational efficiency, they prove inadequate in capturing the extent of structural damage caused by seismic forces. Additionally, employing nonlinear dynamic analysis to estimate structural damage represents a challenging and intricate task, posing difficulties for many structural designers. Consequently, the objective of this paper is to present an innovative methodology for evaluating seismic structural damage of moment-resisting frame structures. This involves the utilization of machine learning algorithms, which have been trained and tested on a large data set generated using a newly developed and numerically efficient simulation procedure. The machine learning algorithms employ both linear regression and K-nearest neighbors approaches to accurately replicate the Park-Ang structural damage index.

Topics & Concepts

Computer scienceAlgorithmReplicateMoment (physics)Set (abstract data type)SimplicityFrame (networking)Nonlinear systemMachine learningRegressionArtificial intelligenceMathematicsProgramming languagePhilosophyTelecommunicationsQuantum mechanicsPhysicsStatisticsClassical mechanicsEpistemologyStructural Health Monitoring TechniquesSeismic Performance and AnalysisProbabilistic and Robust Engineering Design
Innovative approach to estimate structural damage using linear regression and K-nearest neighbors machine learning algorithms | Litcius