Evaluation of machine learning models for bus travel time prediction

dc.contributor.authorMedawatte, MPVP
dc.contributor.authorPerera, HLK
dc.contributor.authorJayasinghe, AB
dc.contributor.authorSumathipala, KASN
dc.date.accessioned2024-12-19T06:34:55Z
dc.date.available2024-12-19T06:34:55Z
dc.date.issued2024
dc.description.abstractAccurate real-time bus arrival information is essential for an efficient public transport network, as it significantly impacts passenger experience, system reliability, reduced waiting times, dwell times, and operational efficiency. In Sri Lanka's public transport system, current bus arrival time computations primarily rely on static data, neglecting real-time information and critical factors influencing travel times. This highlights the need to identify the unique variables affecting bus arrival times within the Sri Lankan context and to develop robust prediction models that account for these influences. While traditional methods such as Historical Average Models, Regression, Time Series Analysis, and Kalman Filtering have been used in previous research for short-term travel time predictions, Machine Learning (ML) approaches have proven to deliver superior accuracy. ML models are regarded as the most effective for heterogeneous, lane-less traffic conditions with varying traffic volumes, such as those found in Sri Lanka. ML techniques excel in processing large, high-quality datasets and provide accurate predictions by accounting for all relevant variables influencing travel times. Although research has been conducted on developing various basic ML models for travel time prediction, there is a noticeable gap in studies comparing these models to determine the most suitable one for the Sri Lankan context. A Long- Short Term Memory (LSTM) neural network is a deep learning model that is capable of handling long-term dependencies. In the context of bus travel time prediction, LSTMs can leverage historical traffic and travel data to capture temporal patterns and fluctuations that influence travel times. By evaluating LSTMs against basic machine learning models, this study seeks to explore the advantages of applying deep learning techniques to transportation forecasting, ultimately contributing to more accurate and efficient predictive systems in transit planning. The ML models selected in this study include two basic traditional models K- Nearest Neighbours (KNN) and Support Vector Regression (SVR) and four advanced models that utilize ensemble techniques and advanced optimization as Random Forest Regression (RFR), Ada Boost, XG Boost and Gradient Boosting Machine (GBM). The performance of these models was compared with the LSTM model to identify the gap in their accuracies.en_US
dc.identifier.conferenceTransport Research Forum 2024en_US
dc.identifier.departmentDepartment of Civil Engineeringen_US
dc.identifier.doihttps://doi.org/10.31705/TRF.2024.2en_US
dc.identifier.emailvidunipramodya@gmail.comen_US
dc.identifier.emailloshakap@uom.lken_US
dc.identifier.emailamilabj@uom.lken_US
dc.identifier.emailsagaras@uom.lken_US
dc.identifier.facultyEngineeringen_US
dc.identifier.pgnospp. 6-10en_US
dc.identifier.placeMoratuwa, Sri Lankaen_US
dc.identifier.proceedingProceedings from the 17th Transport Research Forum 2024en_US
dc.identifier.urihttp://dl.lib.uom.lk/handle/123/23047
dc.identifier.year2024en_US
dc.language.isoenen_US
dc.publisherTransportation Engineering Group, Department of Civil Engineering, University of Moratuwaen_US
dc.subjectMachine Learningen_US
dc.subjectBus travel time Long- Short-term Memory Modelen_US
dc.titleEvaluation of machine learning models for bus travel time predictionen_US
dc.typeConference-Abstracten_US

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