Finite Element Model Updating Using Fish School Search Optimization Method
I. Boulkabeit, L. Mthembu, T. Marwala, F. De Lima Neto
2013-08-10Nature-Inspired Optimization Algorithm
Abstract
A recent nature inspired optimization algorithm, Fish School Search (FSS) is applied to the finite element model (FEM) updating problem. This method is tested on a GARTEUR SM-AG19 aeroplane structure. The results of this algorithm are compared with two other metaheuristic algorithms; Genetic Algorithm (GA) and Particle Swarm Optimization (PSO). It is observed that on average, the FSS and PSO algorithms give more accurate results than the GA. A minor modification to the FSS is proposed. This modification improves the performance of FSS on the FEM updating problem which has a constrained search space.
Related Papers
FlexChunk: Enabling 100M×100M Out-of-Core SpMV (~1.8 min, ~1.7 GB RAM) with Near-Linear Scaling2025-04-05Amélioration de la qualité d'images avec un algorithme d'optimisation inspirée par la nature2023-03-13Position-wise optimizer: A nature-inspired optimization algorithm2022-04-11Why the Firefly Algorithm Works?2018-04-22