BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN)
The Kepler Space Telescope was launched in 2009 to detect Earth-sized planets using the photometric transit method, surveying the region of the Milky Way Galaxy. Kepler has observed about 200,000 stars and has found more than 2,000 confirmed exoplanets. The mission was also aimed at characterizin...
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id-itb.:690932022-09-20T10:49:48ZBUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) Naufal, Muhammad Indonesia Final Project deep learning, light curve, exoplanet. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/69093 The Kepler Space Telescope was launched in 2009 to detect Earth-sized planets using the photometric transit method, surveying the region of the Milky Way Galaxy. Kepler has observed about 200,000 stars and has found more than 2,000 confirmed exoplanets. The mission was also aimed at characterizing planets the size of Earth or smaller in/near the habitable zone. However, these planets are at the tip of the mission’s detection sensitivity, making them a little difficult to identify. Exoplanetary population studies require automation and accuracy in assessing the likelihood that a candidate planet is indeed a planet, even at low signal-to-noise. Astronet is a deep learning model for identifying exoplanets on the star’s light curve. Astronet uses the convolutional neural network model which is already widely used in various subjects. This final project re-examines the model to get results that are in accordance with the initial research. This model can predict whether the signal on the light curve is a planet or a false positive coming from an instrument error or other phenomena. With an accuracy of 0.96 and an AUC score of 0.98, the model is very effective in ranking individual candidates based on the probability that they really are a planet. The model is applied to the identified candidate signal set from the known Kepler planetary system. text |
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The Kepler Space Telescope was launched in 2009 to detect Earth-sized planets
using the photometric transit method, surveying the region of the Milky Way
Galaxy. Kepler has observed about 200,000 stars and has found more than
2,000 confirmed exoplanets. The mission was also aimed at characterizing
planets the size of Earth or smaller in/near the habitable zone. However,
these planets are at the tip of the mission’s detection sensitivity, making them a
little difficult to identify. Exoplanetary population studies require automation
and accuracy in assessing the likelihood that a candidate planet is indeed
a planet, even at low signal-to-noise. Astronet is a deep learning model for
identifying exoplanets on the star’s light curve. Astronet uses the convolutional
neural network model which is already widely used in various subjects. This
final project re-examines the model to get results that are in accordance with
the initial research. This model can predict whether the signal on the light
curve is a planet or a false positive coming from an instrument error or other
phenomena. With an accuracy of 0.96 and an AUC score of 0.98, the model is
very effective in ranking individual candidates based on the probability that
they really are a planet. The model is applied to the identified candidate signal
set from the known Kepler planetary system.
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format |
Final Project |
author |
Naufal, Muhammad |
spellingShingle |
Naufal, Muhammad BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
author_facet |
Naufal, Muhammad |
author_sort |
Naufal, Muhammad |
title |
BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
title_short |
BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
title_full |
BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
title_fullStr |
BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
title_full_unstemmed |
BUKU TUGAS AKHIR: IDENTIFIKASI EKSOPLANET PADA KURVA CAHAYA KEPLER MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN) |
title_sort |
buku tugas akhir: identifikasi eksoplanet pada kurva cahaya kepler menggunakan convolutional neural network (cnn) |
url |
https://digilib.itb.ac.id/gdl/view/69093 |
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