This thesis explores novel parameterization concepts for large scale topology optimization that enables the use of evolutionary algorithms in large-scale structural design. Specifically, two novel parameterization concepts based on generative algorithms and Boolean random networks are proposed that facilitate systematic exploration of the design space while limiting the number of design variables. The presented methodology is demonstrated on classical planar and space truss optimization problems. A nested optimization methodology using genetic algorithms and sequential linear programming is also proposed to solve truss optimization problems. Further, a number of heuristics are also presented to perform the parameterization efficiently. The ...
Abstract There are typically three broad categories of structural optimization namely size, shape an...
In this paper, a technology enabling to optimize the topology of truss or frame structures with gene...
A high-performance genetic algorithm for the optimal synthesis of trusses in discrete search spaces ...
A novel parameterization concept for the optimization of truss structures by means of evolutionary a...
This thesis explores novel parameterization concepts for large scale topology optimization that enab...
In this paper, topology and shape optimization of truss or frame structures is discussed. The optimi...
Truss size and topology optimization problems have recently been solved mainly by many different met...
This paper focuses on the application of genetic algorithms (GAs) to structural optimisation problem...
In this paper, a technology enabling the optimization of the topology of truss or frame structures w...
This paper presents an Improved Genetic Algorithm with Two-Level Approximation (IGATA) to minimize t...
The genetic algorithm (GA), an optimization technique based on the theory of natural selection, is a...
Topology optimization of truss or frame systems is relevant and together complex technical problem, ...
International audienceStructural topology optimization is addressed through Genetic Algorithms: A se...
The genetic algorithm (GA), an optimization technique based on the theory of natural selection, is a...
International audienceStructural topology optimization is addressed through Genetic Algorithms: A se...
Abstract There are typically three broad categories of structural optimization namely size, shape an...
In this paper, a technology enabling to optimize the topology of truss or frame structures with gene...
A high-performance genetic algorithm for the optimal synthesis of trusses in discrete search spaces ...
A novel parameterization concept for the optimization of truss structures by means of evolutionary a...
This thesis explores novel parameterization concepts for large scale topology optimization that enab...
In this paper, topology and shape optimization of truss or frame structures is discussed. The optimi...
Truss size and topology optimization problems have recently been solved mainly by many different met...
This paper focuses on the application of genetic algorithms (GAs) to structural optimisation problem...
In this paper, a technology enabling the optimization of the topology of truss or frame structures w...
This paper presents an Improved Genetic Algorithm with Two-Level Approximation (IGATA) to minimize t...
The genetic algorithm (GA), an optimization technique based on the theory of natural selection, is a...
Topology optimization of truss or frame systems is relevant and together complex technical problem, ...
International audienceStructural topology optimization is addressed through Genetic Algorithms: A se...
The genetic algorithm (GA), an optimization technique based on the theory of natural selection, is a...
International audienceStructural topology optimization is addressed through Genetic Algorithms: A se...
Abstract There are typically three broad categories of structural optimization namely size, shape an...
In this paper, a technology enabling to optimize the topology of truss or frame structures with gene...
A high-performance genetic algorithm for the optimal synthesis of trusses in discrete search spaces ...