VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING

Technological advances have led to the emergence of various new materials. Energy efficiency requirements as well as reducing carbon emissions are driving factors for creating lightweight and efficient materials. One of them is Fiber Metal Laminates (FML). FML are hybrid composite structures consist...

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Main Author: Fikri Ramdani, Mohamad
Format: Theses
Language:Indonesia
Subjects:
Online Access:https://digilib.itb.ac.id/gdl/view/57050
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:57050
spelling id-itb.:570502021-07-26T11:01:48ZVALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING Fikri Ramdani, Mohamad Teknik (Rekayasa, enjinering dan kegiatan berkaitan) Indonesia Theses crashworthiness, hybrid composite, artificial neural network, axial crushing, thin-walled structures, multi corner INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/57050 Technological advances have led to the emergence of various new materials. Energy efficiency requirements as well as reducing carbon emissions are driving factors for creating lightweight and efficient materials. One of them is Fiber Metal Laminates (FML). FML are hybrid composite structures consisting thin sheets of metal alloys and layers of fiber-reinforced polymer materials. FML are made to combine the advantages of metals and composites. Based on several studies that have been conducted, composite metal hybrid materials have been shown to increase crashworthiness performance compared to metals and lower costs than composites. Machine Learning is rapidly developing to be used to identify complex data structures that are usually nonlinear. With the use of machine learning, an accurate prediction model can be generated. In this study, validation and optimization of the crashworthiness performance of thin-walled aluminum composite hybrid column with multicorner was carried out in the case of axial loading with an approximation function approached by artificial neural network (ANN), then the optimization process was carried out using the nondominated sorting genetic algorithm II (NSGA-II). The validation process shows a good correlation between the numerical simulation and the experiment results. For the aluminum model the average error is 4%. Meanwhile in the hybrid model, the average error for orientation [30/-30]s, [45/-45]s, and [60/-60]s were 9%, 6%, and 8%, respectively. Furthermore, the numerical simulation model can describe the physical phenomena that occur well. From the verification process that has been carried out, it is found that the optimization model made can predict well with the largest error value in the SEA parameter of 12%. Meanwhile, when compared to the Baseline Model, the optimal model can provide a significant increase in the Specific Energy Absorption (SEA), Crushing Force Efficiency (CFE), dan Mean Crushing Force (MCF) parameters by 5%, 36%, and 37%. Meanwhile, the decrease in the Peak Force parameter is only 0.4%. 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
topic Teknik (Rekayasa, enjinering dan kegiatan berkaitan)
spellingShingle Teknik (Rekayasa, enjinering dan kegiatan berkaitan)
Fikri Ramdani, Mohamad
VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
description Technological advances have led to the emergence of various new materials. Energy efficiency requirements as well as reducing carbon emissions are driving factors for creating lightweight and efficient materials. One of them is Fiber Metal Laminates (FML). FML are hybrid composite structures consisting thin sheets of metal alloys and layers of fiber-reinforced polymer materials. FML are made to combine the advantages of metals and composites. Based on several studies that have been conducted, composite metal hybrid materials have been shown to increase crashworthiness performance compared to metals and lower costs than composites. Machine Learning is rapidly developing to be used to identify complex data structures that are usually nonlinear. With the use of machine learning, an accurate prediction model can be generated. In this study, validation and optimization of the crashworthiness performance of thin-walled aluminum composite hybrid column with multicorner was carried out in the case of axial loading with an approximation function approached by artificial neural network (ANN), then the optimization process was carried out using the nondominated sorting genetic algorithm II (NSGA-II). The validation process shows a good correlation between the numerical simulation and the experiment results. For the aluminum model the average error is 4%. Meanwhile in the hybrid model, the average error for orientation [30/-30]s, [45/-45]s, and [60/-60]s were 9%, 6%, and 8%, respectively. Furthermore, the numerical simulation model can describe the physical phenomena that occur well. From the verification process that has been carried out, it is found that the optimization model made can predict well with the largest error value in the SEA parameter of 12%. Meanwhile, when compared to the Baseline Model, the optimal model can provide a significant increase in the Specific Energy Absorption (SEA), Crushing Force Efficiency (CFE), dan Mean Crushing Force (MCF) parameters by 5%, 36%, and 37%. Meanwhile, the decrease in the Peak Force parameter is only 0.4%.
format Theses
author Fikri Ramdani, Mohamad
author_facet Fikri Ramdani, Mohamad
author_sort Fikri Ramdani, Mohamad
title VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
title_short VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
title_full VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
title_fullStr VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
title_full_unstemmed VALIDASI DAN OPTIMISASI KOLOM HIBRIDA ALUMINUM-KOMPOSIT BERDINDING TIPIS DENGAN SUDUT JAMAK PADA KASUS PEMBEBANAN AKSIAL MENGGUNAKAN METODE MACHINE LEARNING
title_sort validasi dan optimisasi kolom hibrida aluminum-komposit berdinding tipis dengan sudut jamak pada kasus pembebanan aksial menggunakan metode machine learning
url https://digilib.itb.ac.id/gdl/view/57050
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