POINT OF INTEREST AND STOP TYPE PREDICTION FOR PARATRANSIT TRANSPORTATION DATAIN STUDY CASE : BANDUNG CITY ALGORITHM : ANN, K-MEANS
Paratransit vehicles often do not have a static stop point. Sometimes it causes a traffic jam, especially in Southeast Asia. In Indonesia, Angkot is a well-known paratransit vehicle. Angkot often causes congestion because it can stop anywhere and anytime. It is quite difficult to predict when and...
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Main Author: | |
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Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/55574 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Paratransit vehicles often do not have a static stop point. Sometimes it causes a traffic jam,
especially in Southeast Asia. In Indonesia, Angkot is a well-known paratransit vehicle. Angkot
often causes congestion because it can stop anywhere and anytime. It is quite difficult to predict
when and where the Angkot stops. This research proposes a machine learning model design that
can predict the types of Angkot stops, as well as its Point of Interest. This research using Angkot
trips history data in 2018. Data processing is carried out in several stages, consisting of manual
labeling with google maps and google road maps as a reference, grouping data, increasing the
correlation matrix to the output data, normalizing GPS data, finally entering the data into the
Multi-Layer Perceptron model for training. A model that has been trained can labelling raw
datawhich has the same route as the data being trained. The model also shows 95% accuracy
with GPS data that has been normalized and clustered first. |
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