Search results for "Evolutionary algorithm"

showing 10 items of 119 documents

Local search based evolutionary multi-objective optimization algorithm for constrained and unconstrained problems

2009

Evolutionary multi-objective optimization algorithms are commonly used to obtain a set of non-dominated solutions for over a decade. Recently, a lot of emphasis have been laid on hybridizing evolutionary algorithms with MCDM and mathematical programming algorithms to yield a computationally efficient and convergent procedure. In this paper, we test an augmented local search based EMO procedure rigorously on a test suite of constrained and unconstrained multi-objective optimization problems. The success of our approach on most of the test problems not only provides confidence but also stresses the importance of hybrid evolutionary algorithms in solving multi-objective optimization problems.

Mathematical optimizationOptimization problembusiness.industryTest functions for optimizationEvolutionary algorithmLocal search (optimization)businessMetaheuristicMulti-objective optimizationEvolutionary programmingEvolutionary computationMathematics2009 IEEE Congress on Evolutionary Computation
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Towards Better Integration of Surrogate Models and Optimizers

2019

Surrogate-Assisted Evolutionary Algorithms (SAEAs) have been proven to be very effective in solving (synthetic and real-world) computationally expensive optimization problems with a limited number of function evaluations. The two main components of SAEAs are: the surrogate model and the evolutionary optimizer, both of which use parameters to control their respective behavior. These parameters are likely to interact closely, and hence the exploitation of any such relationships may lead to the design of an enhanced SAEA. In this chapter, as a first step, we focus on Kriging and the Efficient Global Optimization (EGO) framework. We discuss potentially profitable ways of a better integration of…

Mathematical optimizationOptimization problemoptimisationComputer sciencemedia_common.quotation_subjectTestbedEvolutionary algorithmevoluutiolaskenta02 engineering and technologyBenchmarkingmatemaattinen optimointimathematical optimisationSurrogate modeloptimointievolutionary computationKriging0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingFunction (engineering)Global optimizationmedia_common
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A New Distributed Optimization Approach for Solving CFD Design Problems Using Nash Game Coalition and Evolutionary Algorithms

2013

For decades, domain decomposition methods (DDM) have provided a way of solving large-scale problems by distributing the calculation over a number of processing units. In the case of shape optimization, this has been done for each new design introduced by the optimization algorithm. This sequential process introduces a bottleneck.

Mathematical optimizationProcess (engineering)Computer sciencebusiness.industryEvolutionary algorithmDomain decomposition methodsComputational fluid dynamicsBottlenecksymbols.namesakeNash equilibriumDifferential evolutionsymbolsShape optimizationbusiness
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Reference point based multi-objective evolutionary algorithms for group decisions

2008

While in the past decades research on multi-objective evolutionary algorithms (MOEA) has aimed at finding the whole set of Pareto optimal solutions, current approaches focus on only those parts of the Pareto front which satisfy the preferences of the decision maker (DM). Therefore, they integrate the DM early on in the optimization process instead of leaving him/her alone with the final choice of one solution among the whole Pareto optimal set. In this paper, we address an aspect which has been neglected so far in the research on integrating preferences: in most real-world problems, there is not only one DM, but a group of DMs trying to find one consensus decision all participants are wille…

Mathematical optimizationProcess (engineering)Evolutionary algorithmA priori and a posterioriBayesian efficiencyFlow shop schedulingFocus (optics)Set (psychology)Multi-objective optimizationMathematics
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Estimation of the elastic parameters of human liver biomechanical models by means of medical images and evolutionary computation.

2013

This paper presents a method to computationally estimate the elastic parameters of two biomechanical models proposed for the human liver. The method is aimed at avoiding the invasive measurement of its mechanical response. The chosen models are a second order Mooney–Rivlin model and an Ogden model. A novel error function, the geometric similarity function (GSF), is formulated using similarity coefficients widely applied in the field of medical imaging (Jaccard coefficient and Hausdorff coefficient). This function is used to compare two 3D images. One of them corresponds to a reference deformation carried out over a finite element (FE) mesh of a human liver from a computer tomography image, …

Mathematical optimizationSimilarity (geometry)Jaccard indexPhysics::Medical PhysicsEvolutionary algorithmHealth InformaticsModels BiologicalEvolutionary computationImaging Three-DimensionalJaccardScatter searchImage Interpretation Computer-AssistedGenetic algorithmHumansBiomechanical modeling Genetic algorithm Hausdorff Jaccard Liver Scatter searchMathematicsFunction (mathematics)Biological EvolutionFinite element methodBiomechanical PhenomenaComputer Science ApplicationsError functionGenetic algorithmLiverHausdorffBiomechanical modelingLENGUAJES Y SISTEMAS INFORMATICOSAlgorithmSoftware
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Edge Orientation and the Design of Problem-Specific Crossover Operators for the OCST Problem

2012

In the Euclidean optimal communication spanning tree problem, the edges in optimal trees not only have small weights but also point with high probability toward the center of the graph. These characteristics of optimal solutions can be used for the design of problem-specific evolutionary algorithms (EAs). Recombination operators of direct encodings like edge-set and NetDir can be extended such that they prefer not only edges with small distance weights but also edges that point toward the center of the graph. Experimental results show higher performance and robustness in comparison to EAs using existing crossover strategies.

Mathematical optimizationSpanning treeCrossoverEvolutionary algorithmApproximation algorithmEvolutionary computationTheoretical Computer ScienceMathematical OperatorsComputational Theory and MathematicsRobustness (computer science)Multiple edgesAlgorithmSoftwareMathematicsofComputing_DISCRETEMATHEMATICSMathematicsIEEE Transactions on Evolutionary Computation
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On the Bias and Performance of the Edge-Set Encoding

2009

The edge-set encoding of trees directly represents trees as sets of their edges. Nonheuristic operators for edge-sets manipulate trees' edges without regard for their weights, while heuristic operators consider edges' weights when including or excluding them. In the latter case, the operators generally favor edges with lower weights, and they tend to generate trees that resemble minimum spanning trees. This bias is strong, which suggests that evolutionary algorithms (EAs) that employ heuristic operators will succeed when optimum solutions resemble minimum spanning trees (MSTs) but fail otherwise. The one-max tree problem is a scalable test problem for trees where the optimum solution can be…

Mathematical optimizationSpanning treeStochastic processEvolutionary algorithmMinimum spanning treeTree (graph theory)Evolutionary computationTheoretical Computer ScienceCombinatoricsTree structureComputational Theory and MathematicsRandom treeSoftwareMathematicsIEEE Transactions on Evolutionary Computation
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Fast Nash Hybridized Evolutionary Algorithms for Single and Multi-objective Design Optimization in Engineering

2014

Evolutionary Algorithms (EAs) are one of advanced intelligent systems and they occupied an important position in the class of optimizers for solving single-objective/reverse/inverse design and multi-objective/multi physics design problems in engineering. The chapter hybridizes the Genetic Algorithms (GAs) based computational intelligent system (CIS) with the concept of Nash-Equilibrium as an optimization pre-conditioner to accelerate the optimization procedure. Hybridized GAs and simple GAs are validated through solving five complex single-objective and multi-objective mathematical design problems. For real-world design problems, the hybridized GAs (Hybrid Intelligent System) and the origin…

Mathematical optimizationbusiness.industryEvolutionary algorithmIntelligent decision support systemInverseCADcomputer.software_genreFinite element methodHybrid intelligent systemSoftwareComputer Aided DesignArtificial intelligencebusinesscomputer
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A Preference-Based Evolutionary Algorithm for Multi-Objective Optimization

2009

In this paper, we discuss the idea of incorporating preference information into evolutionary multi-objective optimization and propose a preference-based evolutionary approach that can be used as an integral part of an interactive algorithm. One algorithm is proposed in the paper. At each iteration, the decision maker is asked to give preference information in terms of his or her reference point consisting of desirable aspiration levels for objective functions. The information is used in an evolutionary algorithm to generate a new population by combining the fitness function and an achievement scalarizing function. In multi-objective optimization, achievement scalarizing functions are widel…

Mathematical optimizationeducation.field_of_studyFitness functionDecision MakingPopulationEvolutionary algorithmInteractive evolutionary computationFunction (mathematics)Multi-objective optimizationPreferenceSet (abstract data type)Computational MathematicsData Interpretation StatisticalHumanseducationAlgorithmsMathematicsEvolutionary Computation
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A Study of Nash-Evolutionary Algorithms for Reconstruction Inverse Problems in Structural Engineering

2014

In this paper we deal with solving inverse problems in structural engineering (both the reconstruction inverse problem and the fully stressed design problem are considered). We apply a game-theory based Nash-evolutionary algorithm and compare it with the standard panmictic evolutionary algorithm. The procedure performance is analyzed on a ten bar sized test case of discrete real cross-section types structural frame, where a significant increase of performance is achieved using the Nash approach, even achieving super-linear speed-up.

Mathematical optimizationsymbols.namesakeBar (music)business.industryComputer scienceNash equilibriumStructural systemEvolutionary algorithmsymbolsStructural engineeringInverse problembusiness
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