Litcius/Paper detail

Genetic Algorithm Supported by Influence Lines and a Neural Network for Bridge Health Monitoring

Giulia Marasco, Gianfranco Piana, Bernardino Chiaia, Giulio Ventura

2022Journal of Structural Engineering22 citationsDOI

Abstract

This paper proposes a hybrid technique to solve the inverse problem of damage localization and severity estimation in beam structures. The first phase of the method involves the use of influence lines (ILs) to extract information about the damage location. Then, a genetic algorithm (GA), representing the core of the whole procedure, uses static parameters as displacements and rotations at a few points to evaluate the bending stiffness along the structure by updating a finite-element model. The information obtained in the first phase is used in the second phase for (1) reducing the number of design variables of the GA and the consequent computational time; and (2) improving the accuracy of GA solutions because it allows a suitably trained neural network to select proper values for the coefficients of the proposed cost function in the genetic algorithm. The procedure is applied to a test problem, a simply supported, prestressed concrete railway bridge located in northern Italy. Numerical experiments are also conducted to test the procedure when the beam length and geometric properties vary.

Topics & Concepts

Genetic algorithmBridge (graph theory)Artificial neural networkAlgorithmComputer scienceFinite element methodBeam (structure)StiffnessBendingStructural health monitoringInverse problemPhase (matter)Structural engineeringInverseFunction (biology)EngineeringMathematicsArtificial intelligenceMachine learningGeometryEvolutionary biologyOrganic chemistryMedicineInternal medicineMathematical analysisBiologyChemistryStructural Health Monitoring TechniquesUltrasonics and Acoustic Wave PropagationConcrete Corrosion and Durability