DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION

Topology optimization plays an important role in structural design process where none of the guess can be predict in the early stage of design. There are two approach methods to solve topology optimization, namely gradient-based method and non-gradient based method. Gradient-based method have the ad...

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Main Author: Nathan
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/39125
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:39125
spelling id-itb.:391252019-06-24T09:57:21ZDEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION Nathan Indonesia Final Project Topology optimization, level-set function, radial basis function, kriging interpolated level-set, genetic algorithm, covariance matrix adaptation - evolution strategy INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39125 Topology optimization plays an important role in structural design process where none of the guess can be predict in the early stage of design. There are two approach methods to solve topology optimization, namely gradient-based method and non-gradient based method. Gradient-based method have the advantage to solve a problem with thousands of number of design variables with only hundreds of finite element function evaluations. On the other hand, non-gradient based requires thousands of finite element function evaluations, but can solve highly nonlinear, multimodal, and noisy problems such as crashworthiness problem. In this paper, level-set function (LSF) is proposed for topological representation, then carrying out the classification based on the value of the function relative to a threshold. New approaches of radial basis function (RBF) and kriging interpolated level set (KILS) are used to form the LSF by interpolating at knot points to maintain a reasonable number of design variables that is independent from the mesh size. Hybrid genetic algorithm (GA), covariance matrix adaptation - evolution strategy (CMA-ES), and pattern search are then used to solve the optimization of non-gradient problems. Capabilities to approach gradient based result with non-gradient based method are further demonstrated on several test problems. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Topology optimization plays an important role in structural design process where none of the guess can be predict in the early stage of design. There are two approach methods to solve topology optimization, namely gradient-based method and non-gradient based method. Gradient-based method have the advantage to solve a problem with thousands of number of design variables with only hundreds of finite element function evaluations. On the other hand, non-gradient based requires thousands of finite element function evaluations, but can solve highly nonlinear, multimodal, and noisy problems such as crashworthiness problem. In this paper, level-set function (LSF) is proposed for topological representation, then carrying out the classification based on the value of the function relative to a threshold. New approaches of radial basis function (RBF) and kriging interpolated level set (KILS) are used to form the LSF by interpolating at knot points to maintain a reasonable number of design variables that is independent from the mesh size. Hybrid genetic algorithm (GA), covariance matrix adaptation - evolution strategy (CMA-ES), and pattern search are then used to solve the optimization of non-gradient problems. Capabilities to approach gradient based result with non-gradient based method are further demonstrated on several test problems.
format Final Project
author Nathan
spellingShingle Nathan
DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
author_facet Nathan
author_sort Nathan
title DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
title_short DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
title_full DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
title_fullStr DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
title_full_unstemmed DEVELOPMENT OF LEVEL SET APPROACH FOR GRADIENT AND NON-GRADIENT BASED STRUCTURAL TOPOLOGY OPTIMIZATION
title_sort development of level set approach for gradient and non-gradient based structural topology optimization
url https://digilib.itb.ac.id/gdl/view/39125
_version_ 1822269180439691264