Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks

In order to increase the public transportation usage and the reasonability of the bus schedule by the management department, a novel prediction model of bus arrival time is proposed. This predicting model based on gated recurrent unit(GRU) neural network, analyzed the big data of historical GPS data...

Full description

Saved in:
Bibliographic Details
Main Author: LU Juntian;SUN Ling;SHI Quan
Format: Article
Language:English
Published: Editorial Department of Journal of Nantong University (Natural Science Edition) 2020-06-01
Series:Nantong Daxue xuebao. Ziran kexue ban
Subjects:
Online Access:https://ngzk.cbpt.cnki.net/portal/journal/portal/client/paper/NGZK_de8bdb14-c070-4c37-9e9f-51e0c49f7c8e
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849712856987074560
author LU Juntian;SUN Ling;SHI Quan
author_facet LU Juntian;SUN Ling;SHI Quan
author_sort LU Juntian;SUN Ling;SHI Quan
collection DOAJ
description In order to increase the public transportation usage and the reasonability of the bus schedule by the management department, a novel prediction model of bus arrival time is proposed. This predicting model based on gated recurrent unit(GRU) neural network, analyzed the big data of historical GPS data about floating vehicle and considers the influence of different routes, bus station location, different drivers, weather conditions, time distribution and other factors. Furthermore, combining more than 50 million pieces of raw data, the model uses Spark elastic distributed data set in distributed Hadoop cluster to clean data and site matching algorithm to match source data, Lasso algorithm to optimize feature options and remove interference. The simulation results reveal that the R-square fitting degree of the improved GRU model is 94.547% and the prediction efficiency is nearly 14% higher than that of traditional long short-term(LSTM) model. It provides a reference for further improving the accuracy and efficiency of bus arrival time prediction.
format Article
id doaj-art-30894fffee564120b96b4549da8d9f80
institution DOAJ
issn 1673-2340
language English
publishDate 2020-06-01
publisher Editorial Department of Journal of Nantong University (Natural Science Edition)
record_format Article
series Nantong Daxue xuebao. Ziran kexue ban
spelling doaj-art-30894fffee564120b96b4549da8d9f802025-08-20T03:14:08ZengEditorial Department of Journal of Nantong University (Natural Science Edition)Nantong Daxue xuebao. Ziran kexue ban1673-23402020-06-011902434910.12194/j.ntu.20190328001Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural NetworksLU Juntian;SUN Ling;SHI QuanIn order to increase the public transportation usage and the reasonability of the bus schedule by the management department, a novel prediction model of bus arrival time is proposed. This predicting model based on gated recurrent unit(GRU) neural network, analyzed the big data of historical GPS data about floating vehicle and considers the influence of different routes, bus station location, different drivers, weather conditions, time distribution and other factors. Furthermore, combining more than 50 million pieces of raw data, the model uses Spark elastic distributed data set in distributed Hadoop cluster to clean data and site matching algorithm to match source data, Lasso algorithm to optimize feature options and remove interference. The simulation results reveal that the R-square fitting degree of the improved GRU model is 94.547% and the prediction efficiency is nearly 14% higher than that of traditional long short-term(LSTM) model. It provides a reference for further improving the accuracy and efficiency of bus arrival time prediction.https://ngzk.cbpt.cnki.net/portal/journal/portal/client/paper/NGZK_de8bdb14-c070-4c37-9e9f-51e0c49f7c8eprediction of bus arrival timedeep learninggated recurrent unit neural networks
spellingShingle LU Juntian;SUN Ling;SHI Quan
Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
Nantong Daxue xuebao. Ziran kexue ban
prediction of bus arrival time
deep learning
gated recurrent unit neural networks
title Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
title_full Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
title_fullStr Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
title_full_unstemmed Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
title_short Prediction of Bus Arrival Time Based on Gated Recurrent Unit Neural Networks
title_sort prediction of bus arrival time based on gated recurrent unit neural networks
topic prediction of bus arrival time
deep learning
gated recurrent unit neural networks
url https://ngzk.cbpt.cnki.net/portal/journal/portal/client/paper/NGZK_de8bdb14-c070-4c37-9e9f-51e0c49f7c8e
work_keys_str_mv AT lujuntiansunlingshiquan predictionofbusarrivaltimebasedongatedrecurrentunitneuralnetworks