An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic

The COVID-19 pandemic is a significant public health problem globally, which causes difficulty and trouble for both people’s travel and public transport companies’ management. Improving the accuracy of bus passenger flow prediction during COVID-19 can help these companies make better decisions on op...

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Main Authors: Feng Jiao, Lei Huang, Rongjia Song, Haifeng Huang
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/17/5950
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spelling doaj-b99855beb1bf434cadb66bd7d9548db72021-09-09T13:56:57ZengMDPI AGSensors1424-82202021-09-01215950595010.3390/s21175950An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 PandemicFeng Jiao0Lei Huang1Rongjia Song2Haifeng Huang3Department of Information Management, School of Economics and Management, Beijing Jiaotong University, Beijing 100044, ChinaDepartment of Information Management, School of Economics and Management, Beijing Jiaotong University, Beijing 100044, ChinaDepartment of Information Management, School of Economics and Management, Beijing Jiaotong University, Beijing 100044, ChinaDepartment of Information Management, School of Economics and Management, Beijing Jiaotong University, Beijing 100044, ChinaThe COVID-19 pandemic is a significant public health problem globally, which causes difficulty and trouble for both people’s travel and public transport companies’ management. Improving the accuracy of bus passenger flow prediction during COVID-19 can help these companies make better decisions on operation scheduling and is of great significance to epidemic prevention and early warnings. This research proposes an improved STL-LSTM model (ISTL-LSTM), which combines seasonal-trend decomposition procedure based on locally weighted regression (STL), multiple features, and three long short-term memory (LSTM) neural networks. Specifically, the proposed ISTL-LSTM method consists of four procedures. Firstly, the original time series is decomposed into trend series, seasonality series, and residual series through implementing STL. Then, each sub-series is concatenated with new features. In addition, each fused sub-series is predicted by different LSTM models separately. Lastly, predicting values generated from LSTM models are combined in a final prediction value. In the case study, the prediction of daily bus passenger flow in Beijing during the pandemic is selected as the research object. The results show that the ISTL-LSTM model could perform well and predict at least 15% more accurately compared with single models and a hybrid model. This research fills the gap of bus passenger flow prediction under the influence of the COVID-19 pandemic and provides helpful references for studies on passenger flow prediction.https://www.mdpi.com/1424-8220/21/17/5950daily bus passenger flow predictionhybrid modeldeep learningCOVID-19
collection DOAJ
language English
format Article
sources DOAJ
author Feng Jiao
Lei Huang
Rongjia Song
Haifeng Huang
spellingShingle Feng Jiao
Lei Huang
Rongjia Song
Haifeng Huang
An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
Sensors
daily bus passenger flow prediction
hybrid model
deep learning
COVID-19
author_facet Feng Jiao
Lei Huang
Rongjia Song
Haifeng Huang
author_sort Feng Jiao
title An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
title_short An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
title_full An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
title_fullStr An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
title_full_unstemmed An Improved STL-LSTM Model for Daily Bus Passenger Flow Prediction during the COVID-19 Pandemic
title_sort improved stl-lstm model for daily bus passenger flow prediction during the covid-19 pandemic
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-09-01
description The COVID-19 pandemic is a significant public health problem globally, which causes difficulty and trouble for both people’s travel and public transport companies’ management. Improving the accuracy of bus passenger flow prediction during COVID-19 can help these companies make better decisions on operation scheduling and is of great significance to epidemic prevention and early warnings. This research proposes an improved STL-LSTM model (ISTL-LSTM), which combines seasonal-trend decomposition procedure based on locally weighted regression (STL), multiple features, and three long short-term memory (LSTM) neural networks. Specifically, the proposed ISTL-LSTM method consists of four procedures. Firstly, the original time series is decomposed into trend series, seasonality series, and residual series through implementing STL. Then, each sub-series is concatenated with new features. In addition, each fused sub-series is predicted by different LSTM models separately. Lastly, predicting values generated from LSTM models are combined in a final prediction value. In the case study, the prediction of daily bus passenger flow in Beijing during the pandemic is selected as the research object. The results show that the ISTL-LSTM model could perform well and predict at least 15% more accurately compared with single models and a hybrid model. This research fills the gap of bus passenger flow prediction under the influence of the COVID-19 pandemic and provides helpful references for studies on passenger flow prediction.
topic daily bus passenger flow prediction
hybrid model
deep learning
COVID-19
url https://www.mdpi.com/1424-8220/21/17/5950
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