MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD

A binary cluster system refers to a stellar cluster system composed of two closely spaced star clusters that interact and are gravitationally bound to each other. Each pair of binary clusters has its own unique characteristics in terms of formation and evolutionary processes. The understanding g...

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Main Author: Christopher Anandito, Michael
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/86257
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:86257
spelling id-itb.:862572024-09-17T11:01:08ZMULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD Christopher Anandito, Michael Indonesia Final Project INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/86257 A binary cluster system refers to a stellar cluster system composed of two closely spaced star clusters that interact and are gravitationally bound to each other. Each pair of binary clusters has its own unique characteristics in terms of formation and evolutionary processes. The understanding gained from studying binary clusters is relevant as it provides crucial information about the formation and evolution mechanisms of star clusters. This Final Project aims to determine the cluster membership within binary open clusters using the machine learning clustering method Density-Based Spatial Clustering of Applications with Noise (DBSCAN). DBSCAN is an unsupervised machine learning model that, based on density, is capable of finding patterns or clusters within data. The Gaia Data Release 3 dataset is used in this Final Project, with a cluster magnitude parameter of less than 18 magnitudes. The focus of this thesis is on three pairs of binary clusters reviewed from the Angelo et al., 2021 and Subramaniam et al., 1995 catalogs, with differences in their interactions: King 16-Berkeley 4, NGC 5617-Trumpler 22. The membership results obtained from this method are compared with the membership results of the Dias et al., 2021 and Cantat-Gaudin & Anders, 2020 catalogs. 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 A binary cluster system refers to a stellar cluster system composed of two closely spaced star clusters that interact and are gravitationally bound to each other. Each pair of binary clusters has its own unique characteristics in terms of formation and evolutionary processes. The understanding gained from studying binary clusters is relevant as it provides crucial information about the formation and evolution mechanisms of star clusters. This Final Project aims to determine the cluster membership within binary open clusters using the machine learning clustering method Density-Based Spatial Clustering of Applications with Noise (DBSCAN). DBSCAN is an unsupervised machine learning model that, based on density, is capable of finding patterns or clusters within data. The Gaia Data Release 3 dataset is used in this Final Project, with a cluster magnitude parameter of less than 18 magnitudes. The focus of this thesis is on three pairs of binary clusters reviewed from the Angelo et al., 2021 and Subramaniam et al., 1995 catalogs, with differences in their interactions: King 16-Berkeley 4, NGC 5617-Trumpler 22. The membership results obtained from this method are compared with the membership results of the Dias et al., 2021 and Cantat-Gaudin & Anders, 2020 catalogs.
format Final Project
author Christopher Anandito, Michael
spellingShingle Christopher Anandito, Michael
MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
author_facet Christopher Anandito, Michael
author_sort Christopher Anandito, Michael
title MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
title_short MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
title_full MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
title_fullStr MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
title_full_unstemmed MULTIPLE OPEN CLUSTER MEMBERSHIP USING DBSCAN MACHINE LEARNING METHOD
title_sort multiple open cluster membership using dbscan machine learning method
url https://digilib.itb.ac.id/gdl/view/86257
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