DASHBOARD DEVELOPMENT OF MACHINE LEARNING BASED ANOMALY DETECTION ON NETWORK MANAGEMENT SYSTEM (NMS)
Since 2015, the Indonesian government gas focused on providing internet networks in 3T area (tertinggal, terluar, terdepan). The deployment of this internet network is a project of the Ministry of Communication and Information Technology (Kominfo) in collaboration with other ministries in Indones...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/55318 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Since 2015, the Indonesian government gas focused on providing internet networks
in 3T area (tertinggal, terluar, terdepan). The deployment of this internet network
is a project of the Ministry of Communication and Information Technology
(Kominfo) in collaboration with other ministries in Indonesia on the Universal
Service Obligation (USO) or Kontribusi Kewajiban Pelayanan Universal (KPPU)
program. In addition, Kominfo through BAKTI targeting all villages in Indonesia
can access 4G network by 2022. 4000 Base Tranceiver Station (BTS) are planned
to be built on Papua and Papua Barat. This project is BAKTI’s responsibility to
provide internet access using USO funds. To achieve this goal, collaboration
between the government and cellular operators is required. In order for the optimal
use of USO funds, the government must be able to ascertain whether the
infrastructure built by telecommunications operators can operate properly and
provide internet services at any time.
The service monitoring process can be done by looking at the sensor’s uptime.
However, there is an error where the uptime data received from a sensor does not
always increaces with the addition of time. This can be caused by the connectivity
problems or indeed the sensor is off. There have been a study that discuss these
errors and devides them into four cases, but there are still some error that cannot
be classified into these four cases, called anomalies. Therefore, we created a system
that can detect these anomalies and classify them into new cases using machine
learning and display the details in an easily accessible dashboard. From the
research that has been done, the system found three new cases (anomalies). The
dashboard will display the uptime graph, the number of anomalies detected on each
sensor, and the health of the device/sensor. In addition, this system will also send
notification to user regarding the anomalies found and the device health condition
once a month. The results of this project can help operators to know the condition
of each of their devices so that evaluation can be done easily and quickly.
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