Summarization: The objective of this paper is to investigate the efficiency of optimization algorithms, based on evolution strategies, for the solution of large-scale structural optimization problems. Furthermore, the structural analysis phase is replaced by a neural network prediction for the computation of the necessary data for the evolution strategies (ES) optimization procedure. The use of neural networks (NN) was motivated by the time-consuming repeated analyses required by ES during the optimization process. A back propagation algorithm is implemented for training the NN using data derived from selected analyses. The trained NN is then used to predict, within an acceptable accuracy, the values of the objective and constraint function...
In this study the computational performance of adaptive evolution strategies (ESs) in large-scale st...
Abstract. An ecient methodology is proposed to optimize space trusses considering geometric nonlinea...
The prevalent strategy in the topology optimization phase is to select a subset of members existing ...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
This thesis explores novel parameterization concepts for large scale topology optimization that enab...
[[abstract]]To solve structural optimization problems, it is necessary to integrate a structural ana...
This paper introduces the design optimization strategies, especially for structures which have dynam...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
Abstract—The development of Neural-network (NN) technology stemmed from the desire to create an arti...
Summarization: The objective of this paper is to investigate the efficiency of various optimization ...
Abstract--A nonlinear neural dynamics model is presented as a new structural optimization technique ...
One of many optimization techniques is the evolutionary structural optimization (ESO), based on the ...
Evolutionary algorithms (EAs) are population based heuristic optimization methods used to solve sin...
In this study the computational performance of adaptive evolution strategies (ESs) in large-scale st...
Abstract. An ecient methodology is proposed to optimize space trusses considering geometric nonlinea...
The prevalent strategy in the topology optimization phase is to select a subset of members existing ...
Summarization: The objective of this paper is to investigate the efficiency of combinatorial optimiz...
This thesis explores novel parameterization concepts for large scale topology optimization that enab...
[[abstract]]To solve structural optimization problems, it is necessary to integrate a structural ana...
This paper introduces the design optimization strategies, especially for structures which have dynam...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
The development of Neural-network (NN) technology stemmed from the desire to create an artificial sy...
Abstract—The development of Neural-network (NN) technology stemmed from the desire to create an arti...
Summarization: The objective of this paper is to investigate the efficiency of various optimization ...
Abstract--A nonlinear neural dynamics model is presented as a new structural optimization technique ...
One of many optimization techniques is the evolutionary structural optimization (ESO), based on the ...
Evolutionary algorithms (EAs) are population based heuristic optimization methods used to solve sin...
In this study the computational performance of adaptive evolution strategies (ESs) in large-scale st...
Abstract. An ecient methodology is proposed to optimize space trusses considering geometric nonlinea...
The prevalent strategy in the topology optimization phase is to select a subset of members existing ...