Improving damage detection in masonry bridges: A combination of finite–discrete element method and genetic algorithms
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
Masonry structures Discrete elements Genetic algorithm
Fecha
2025-11Referencia bibliográfica
Bravo, R., & Pérez-Aparicio, J. L. (2025). Improving damage detection in masonry bridges: A combination of finite–discrete element method and genetic algorithms. Structures, 81(110279), 110279. https://doi.org/10.1016/j.istruc.2025.110279
Patrocinador
MCIN/AEI/10.13039/501100011033 - ERDF (RTI2018-093621-B-I00)Resumen
Thousands of masonry structures are part of the international railway and road networks, with some remaining
in use for up to two centuries. Given increasing operational demands in both traffic weight and speeds, developing effective damage detection techniques becomes essential for their proper maintenance. Currently, damage
assessment is performed primarily in situ, involving a high costs. Therefore, a numerical tool based on an inverse
problem for damage detection from a series of indirect and/or permanent measurements is necessary. As a first
step, this paper presents a numerical approach that combines finite and discrete element methods with genetic
algorithms to identify the position of one or two missing blocks in a one–span masonry bridge. Field measurements are replaced with a displacement set from a two–dimensional FemDem mesh considering missing blocks.
These numerical distributions are sampled at a limited number of control nodes and are perturbed with statistical
noise to simulate the variations in the actual measurements. The results are compared with a small population of
new numerical cases generated by the genetic algorithm. With appropriate noise levels, it is demonstrated that
the method can find the missing locations automatically and accurately identify the missing locations.





