Litcius/Paper detail

Physics-Informed Neural Networks for System Identification of Structural Systems with a Multiphysics Damping Model

Tong Liu, Hadi Meidani

2023Journal of Engineering Mechanics46 citationsDOI

Abstract

Structural system identification is critical in resilience assessments and structural health monitoring, especially following natural hazards. Among the nonlinear structural behaviors, structural damping is a complex behavior that can be modeled as a multiphysics system wherein the structure interacts with an external thermal bath and undergoes thermalization. In this paper, we propose a novel physics-informed neural network approach for nonlinear structural system identification and demonstrate its application in multiphysics cases where the damping term is governed by a separated dynamics equation. The proposed approach, called PIDynNet, improves the estimation of the parameters of nonlinear structural systems by integrating auxiliary physics-based loss terms, one for the structural dynamics and one for the thermal transfer. These physics-based loss terms form the overall loss function in addition to a supervised data-based loss term. To ensure effective learning during the identification process, subsampling and early stopping strategies are developed. The proposed framework also has the generalization capability to predict nonlinear responses for unseen ground excitations. Two numerical experiments of nonlinear systems are conducted to demonstrate the comparative performance of PIDynNet.

Topics & Concepts

MultiphysicsNonlinear systemNonlinear system identificationSystem identificationIdentification (biology)Artificial neural networkPhysicsStructural systemTerm (time)Complex systemStatistical physicsControl engineeringComputer scienceArtificial intelligenceEngineeringFinite element methodData modelingStructural engineeringDatabaseThermodynamicsBiologyQuantum mechanicsBotanyStructural Health Monitoring TechniquesModel Reduction and Neural NetworksFluid Dynamics and Vibration Analysis