PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA

The Automated Fare Collection (AFC) system is Intelligent Transportation System which is popularly applied by public transport operators. In addition to facilitating the collection of tariffs, the data collected by this system is very useful in planning and public transportation strategies. But the...

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Main Author: Muhammad Alif Dipo Astha, Andi
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/36870
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:36870
spelling id-itb.:368702019-03-15T14:35:25ZPASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA Muhammad Alif Dipo Astha, Andi Indonesia Theses Origin-Destination Matrix, Predictive model, Smart Card, Public Transportation, Decision Tree, K-Nearest Neighbor INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/36870 The Automated Fare Collection (AFC) system is Intelligent Transportation System which is popularly applied by public transport operators. In addition to facilitating the collection of tariffs, the data collected by this system is very useful in planning and public transportation strategies. But the AFC applied does not record all passenger transactions. This has made it difficult to know the needs and demands of public transportation. In this study, propose a prediction model to estimate the purpose of passenger bus rapid transit (BRT) with smart card transaction data. Prediction models are built using decision tree and K-nearest neighbor (KNN) classification algorithms. The results of passenger destination predictions can be used to complete the missing transaction data in order to build an origin-destination matrix that can present the number of BRT passenger requests. The data set used in this study is the smart card transaction data of BRT public transportation users with a span of one month. From the experiments conducted, it is known that individual travel information is the most influential thing on the predicted results of passenger destinations. The decision tree algorithm provides the results of the prediction of the destination stop better than the KNN algorithm, namely with a 52.2% f-measure value versus 49.3%. 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 The Automated Fare Collection (AFC) system is Intelligent Transportation System which is popularly applied by public transport operators. In addition to facilitating the collection of tariffs, the data collected by this system is very useful in planning and public transportation strategies. But the AFC applied does not record all passenger transactions. This has made it difficult to know the needs and demands of public transportation. In this study, propose a prediction model to estimate the purpose of passenger bus rapid transit (BRT) with smart card transaction data. Prediction models are built using decision tree and K-nearest neighbor (KNN) classification algorithms. The results of passenger destination predictions can be used to complete the missing transaction data in order to build an origin-destination matrix that can present the number of BRT passenger requests. The data set used in this study is the smart card transaction data of BRT public transportation users with a span of one month. From the experiments conducted, it is known that individual travel information is the most influential thing on the predicted results of passenger destinations. The decision tree algorithm provides the results of the prediction of the destination stop better than the KNN algorithm, namely with a 52.2% f-measure value versus 49.3%.
format Theses
author Muhammad Alif Dipo Astha, Andi
spellingShingle Muhammad Alif Dipo Astha, Andi
PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
author_facet Muhammad Alif Dipo Astha, Andi
author_sort Muhammad Alif Dipo Astha, Andi
title PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
title_short PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
title_full PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
title_fullStr PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
title_full_unstemmed PASSENGER DESTINATION ESTIMATION USING PREDICTIVE MODEL WITH SMART CARD DATA
title_sort passenger destination estimation using predictive model with smart card data
url https://digilib.itb.ac.id/gdl/view/36870
_version_ 1822268784753246208