MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY)
ICONNET is a Fiber to the home (FTTH) internet service provided by PLN Icon Plus, currently focusing on expanding its network distribution evenly across the West Java region. Bandung Regency, a densely populated area in this province, faces significant challenges in meeting the increasing demand...
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id-itb.:868772025-01-02T11:26:55ZMACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) Novitri Susanti S.P., Rizki Indonesia Theses FTTH, ICONNET,CRISP-DM Clustering, Machine learning. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/86877 ICONNET is a Fiber to the home (FTTH) internet service provided by PLN Icon Plus, currently focusing on expanding its network distribution evenly across the West Java region. Bandung Regency, a densely populated area in this province, faces significant challenges in meeting the increasing demand for digital infrastructure. The high population density further complicates the issue of infrastructure distribution. The transmission medium used, fiber optik, despite its high investment cost, offers significant advantages such as large bandwidth capacity and high-speed data transmission, making it a worthwhile investment. Therefore, a comprehensive area recommendation analysis is required to support infrastructure development investments and ensure profitability for the company. This study utilizes datasets from various sources, including the Central Bureau of Statistics (BPS), PT PLN (Persero), and PLN Icon Plus. This study employs the Cross-Industry Standard Process for Data Mining (CRISP-DM) framework and utilizes datasets from various sources, such as the Central Bureau of Statistics (BPS), PT PLN (Persero), and PLN Icon Plus. The diversity of datasets with varying features and dimensions poses a significant challenge, which is addressed by using dimensionality reduction techniques such as Variational Autoencoder (VAE) and Principal Component Analysis (PCA). The analysis incorporates clustering algorithms like K-Means and DBSCAN for regional segmentation, as well as K-Nearest Neighbor (KNN) for predicting bandwidth requirements. text |
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ICONNET is a Fiber to the home (FTTH) internet service provided by PLN Icon
Plus, currently focusing on expanding its network distribution evenly across the
West Java region. Bandung Regency, a densely populated area in this province,
faces significant challenges in meeting the increasing demand for digital
infrastructure. The high population density further complicates the issue of
infrastructure distribution. The transmission medium used, fiber optik, despite its
high investment cost, offers significant advantages such as large bandwidth
capacity and high-speed data transmission, making it a worthwhile investment.
Therefore, a comprehensive area recommendation analysis is required to support
infrastructure development investments and ensure profitability for the company.
This study utilizes datasets from various sources, including the Central Bureau of
Statistics (BPS), PT PLN (Persero), and PLN Icon Plus. This study employs the
Cross-Industry Standard Process for Data Mining (CRISP-DM) framework and
utilizes datasets from various sources, such as the Central Bureau of Statistics
(BPS), PT PLN (Persero), and PLN Icon Plus. The diversity of datasets with
varying features and dimensions poses a significant challenge, which is addressed
by using dimensionality reduction techniques such as Variational Autoencoder
(VAE) and Principal Component Analysis (PCA). The analysis incorporates
clustering algorithms like K-Means and DBSCAN for regional segmentation, as
well as K-Nearest Neighbor (KNN) for predicting bandwidth requirements.
|
format |
Theses |
author |
Novitri Susanti S.P., Rizki |
spellingShingle |
Novitri Susanti S.P., Rizki MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
author_facet |
Novitri Susanti S.P., Rizki |
author_sort |
Novitri Susanti S.P., Rizki |
title |
MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
title_short |
MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
title_full |
MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
title_fullStr |
MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
title_full_unstemmed |
MACHINE LEARNING-BASED ANALYSIS AND RECOMMENDATIONS FOR ICONNET INFRASTRUCTURE DEVELOPMENT AREAS (CASE STUDY : BANDUNG REGENCY) |
title_sort |
machine learning-based analysis and recommendations for iconnet infrastructure development areas (case study : bandung regency) |
url |
https://digilib.itb.ac.id/gdl/view/86877 |
_version_ |
1822011190350446592 |