PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR

Zinc coating on steel products is widely used in the automotive industry. Zinc was chosen for its corrosion resistance and sacrifical protection. In these applications zinc is a metal that is directly exposed to the atmospheric environment. Measurement of the atmospheric corrosion rate is carried ou...

Full description

Saved in:
Bibliographic Details
Main Author: Nur Azizah, Jasmita
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/56482
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:56482
spelling id-itb.:564822021-06-22T14:31:43ZPREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR Nur Azizah, Jasmita Indonesia Final Project atmospheric corrosion, zinc, machine learning, corrosion prediction INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/56482 Zinc coating on steel products is widely used in the automotive industry. Zinc was chosen for its corrosion resistance and sacrifical protection. In these applications zinc is a metal that is directly exposed to the atmospheric environment. Measurement of the atmospheric corrosion rate is carried out to determine the level of corrosion in zinc products exposed to the existing environment (brownfield) so that mitigation can be carried out to avoid initial failure of the product and in a new environment (greenfield) predictions can be made as an early stage or design stage in material selection. Exposure testing is a common test to study the behavior and value of the atmospheric corrosion rate for a long period of time and requires a long time. Therefore, the data based on the test is used as a sustainability analysis so that the analysis of corrosion data requires more advanced data mining methods. Machine learning was chosen as the problem method. In this study, the algorithm model used is Bagging Regressor, XGBoost Regressor, and Gradient Boosting. Hyperparameter tuning can optimize the algorithm model. The results obtained indicate that the XGBoost Regressor algorithm is the most optimal model based on the accuracy value and prediction validation results. This study also obtained predictions of atmospheric corrosion rates in Jakarta, Bandung, Valparaiso, Barcelona, and Japan successively the values are 10,619 g/m2; 9.589 g/m2; 7.813 g/m2; 2,943 g/m2; 11.132 g/m2. 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 Zinc coating on steel products is widely used in the automotive industry. Zinc was chosen for its corrosion resistance and sacrifical protection. In these applications zinc is a metal that is directly exposed to the atmospheric environment. Measurement of the atmospheric corrosion rate is carried out to determine the level of corrosion in zinc products exposed to the existing environment (brownfield) so that mitigation can be carried out to avoid initial failure of the product and in a new environment (greenfield) predictions can be made as an early stage or design stage in material selection. Exposure testing is a common test to study the behavior and value of the atmospheric corrosion rate for a long period of time and requires a long time. Therefore, the data based on the test is used as a sustainability analysis so that the analysis of corrosion data requires more advanced data mining methods. Machine learning was chosen as the problem method. In this study, the algorithm model used is Bagging Regressor, XGBoost Regressor, and Gradient Boosting. Hyperparameter tuning can optimize the algorithm model. The results obtained indicate that the XGBoost Regressor algorithm is the most optimal model based on the accuracy value and prediction validation results. This study also obtained predictions of atmospheric corrosion rates in Jakarta, Bandung, Valparaiso, Barcelona, and Japan successively the values are 10,619 g/m2; 9.589 g/m2; 7.813 g/m2; 2,943 g/m2; 11.132 g/m2.
format Final Project
author Nur Azizah, Jasmita
spellingShingle Nur Azizah, Jasmita
PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
author_facet Nur Azizah, Jasmita
author_sort Nur Azizah, Jasmita
title PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
title_short PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
title_full PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
title_fullStr PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
title_full_unstemmed PREDIKSI LAJU KOROSI ATMOSFERIK SENG DENGAN PEMBELAJARAN MESIN MENGGUNAKAN MODEL XGBOOST REGRESSOR
title_sort prediksi laju korosi atmosferik seng dengan pembelajaran mesin menggunakan model xgboost regressor
url https://digilib.itb.ac.id/gdl/view/56482
_version_ 1822274599167983616