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MILP-based discrete sizing and topology optimization of truss structures: new formulation and benchmarking

Jan Brütting, Gennaro Senatore, Corentin Fivet

2022Structural and Multidisciplinary Optimization18 citationsDOIOpen Access PDF

Abstract

Abstract Discrete sizing and topology optimization of truss structures subject to stress and displacement constraints has been formulated as a Mixed-Integer Linear Programming (MILP) problem. The computation time to solve a MILP problem to global optimality via a branch-and-cut solver highly depends on the problem size, the choice of design variables, and the quality of optimization constraint formulations. This paper presents a new formulation for discrete sizing and topology optimization of truss structures, which is benchmarked against two well-known existing formulations. Benchmarking is carried out through case studies to evaluate the influence of the number of structural members, candidate cross sections, load cases, and design constraints (e.g., stress and displacement limits) on computational performance. Results show that one of the existing formulations performs significantly worse than all other formulations. In most cases, the new formulation proposed in this work performs best to obtain near-optimal solutions and verify global optimality in the shortest computation time.

Topics & Concepts

Mathematical optimizationTopology optimizationSizingTrussSolverInteger programmingComputationDiscrete optimizationComputer scienceMathematicsTopology (electrical circuits)Optimization problemAlgorithmFinite element methodEngineeringStructural engineeringArtCombinatoricsVisual artsTopology Optimization in EngineeringStructural Analysis and OptimizationAdvanced Multi-Objective Optimization Algorithms
MILP-based discrete sizing and topology optimization of truss structures: new formulation and benchmarking | Litcius