MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION
Traffic regulation is often done to overcome congestion caused by overcrowding and roads that have excess capacity. However, this arrangement still utilizes information obtained from various entities on the road, namely the police and transportation service officers. Observation of the conditions...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/64379 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
id |
id-itb.:64379 |
---|---|
spelling |
id-itb.:643792022-05-19T08:50:22ZMACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION Rahmi Maulida, Nabila Indonesia Theses machine learning, traffic, ARIMA, Artificial Neural Network, LSTM, traffic density prediction INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/64379 Traffic regulation is often done to overcome congestion caused by overcrowding and roads that have excess capacity. However, this arrangement still utilizes information obtained from various entities on the road, namely the police and transportation service officers. Observation of the conditions and situations on the road is still subjective so that traffic management becomes subjective Smart city is a new breakthrough to help city problems, especially overcrowding. With these problems and opportunities, the density prediction system becomes a means of controlling density and becomes part of the Intelligent Transportation System (ITS). In this thesis research, a traffic density prediction model was built by combining the Autoregressive Integrated Moving Average (ARIMA) and Long Short Term Memory (LSTM) models. ARIMA was used in the first modeling to assist prediction in linear form. LSTM is used to complete the nonlinear prediction form according to the density characteristics of the road. This study uses the CRISP-DM methodology which is divided into five stages, namely understanding business needs, understanding data, cleaning and preparing data, optimizing parameters and modeling, and evaluating. In the data processing stage, the data is balanced by undersampling. In parameter optimization and modeling, a grid search with k-fold cross validation is used. In the evaluation stage, 2 metrics are used, namely RMSE and MAPE. This study was conducted with California traffic data. The results of this study indicate that the algorithm provides more optimal results with an RMSE value of 954 and a MAPE value of 101,013. 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 |
Traffic regulation is often done to overcome congestion caused by overcrowding and
roads that have excess capacity. However, this arrangement still utilizes information
obtained from various entities on the road, namely the police and transportation service
officers. Observation of the conditions and situations on the road is still subjective so
that traffic management becomes subjective Smart city is a new breakthrough to help
city problems, especially overcrowding. With these problems and opportunities, the
density prediction system becomes a means of controlling density and becomes part of
the Intelligent Transportation System (ITS). In this thesis research, a traffic density
prediction model was built by combining the Autoregressive Integrated Moving
Average (ARIMA) and Long Short Term Memory (LSTM) models. ARIMA was used in
the first modeling to assist prediction in linear form. LSTM is used to complete the nonlinear
prediction form according to the density characteristics of the road. This study
uses the CRISP-DM methodology which is divided into five stages, namely
understanding business needs, understanding data, cleaning and preparing data,
optimizing parameters and modeling, and evaluating. In the data processing stage, the
data is balanced by undersampling. In parameter optimization and modeling, a grid
search with k-fold cross validation is used. In the evaluation stage, 2 metrics are used,
namely RMSE and MAPE. This study was conducted with California traffic data. The
results of this study indicate that the algorithm provides more optimal results with an
RMSE value of 954 and a MAPE value of 101,013. |
format |
Theses |
author |
Rahmi Maulida, Nabila |
spellingShingle |
Rahmi Maulida, Nabila MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
author_facet |
Rahmi Maulida, Nabila |
author_sort |
Rahmi Maulida, Nabila |
title |
MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
title_short |
MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
title_full |
MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
title_fullStr |
MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
title_full_unstemmed |
MACHINE LEARNING USING A COMBINED ARIMA MODEL AND LSTM FOR TRAFFIC DENSITY PREDICTION |
title_sort |
machine learning using a combined arima model and lstm for traffic density prediction |
url |
https://digilib.itb.ac.id/gdl/view/64379 |
_version_ |
1822932422544588800 |