Abstract

The development of the Internet of Things (IoT) has produced new innovative solutions, such as smart cities, which enable humans to have a more efficient, convenient and smarter way of life. The Intelligent Transportation System (ITS) is part of several smart city applications where it enhances the processes of transportation and commutation. ITS aims to solve traffic problems, mainly traffic congestion. In recent years, new models and frameworks for predicting traffic flow have been rapidly developed to enhance the performance of traffic flow prediction, alongside the implementation of Artificial Intelligence (AI) methods such as machine learning (ML). To better understand how ML implementations can enhance traffic flow prediction, it is important to inclusively know the current research that has been conducted. The objective of this paper is to present a comprehensive and systematic review of the literature involving 39 articles published from 2016 onwards and extracted from four main databases: Scopus, ScienceDirect, SpringerLink and Taylor & Francis. The extracted information includes the gaps, approaches, evaluation methods, variables, datasets and results of each reviewed study based on the methodology and algorithms used for the purpose of predicting traffic flow. Based on our findings, the common and frequent machine learning techniques that have been applied for traffic flow prediction are Convolutional Neural Network and Long-Short Term Memory. The performance of their proposed techniques was compared with existing baseline models to determine their effectiveness. This paper is limited to certain literature pertaining to common databases. Through this limitation, the discussion is more focused on (and limited to) the techniques found on the list of reviewed articles. The aim of this paper is to provide a comprehensive understanding of the application of ML and DL techniques for improving traffic flow prediction, contributing to the betterment of ITS in smart cities. For future endeavours, experimental studies that apply the most used techniques in the articles reviewed in this study (such as CNN, LSTM or a combination of both techniques) can be accomplished to enhance traffic flow prediction. The results can be compared with baseline studies to determine the accuracy of these techniques.

Highlights

  • With the growth of Internet of Things (IoT) technology in recent years, innovations are more focused on making the world ‘smarter’ through the implementation of smart technology, such as smart cities, smart industries and smart transportation

  • RQ1 In studies on traffic flow prediction that implemented machine learning algorithms and techniques, what are the gaps found in each study which can be further improved in terms of methods, challenges, evaluation approach and results?

  • Based on the findings from the literature review, various machine learning (ML) techniques and algorithms have been employed for traffic flow prediction, such as SVM, classification based on deep residual networks (CNN), LSTM, XGBoost, etc

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Summary

Introduction

With the growth of IoT technology in recent years, innovations are more focused on making the world ‘smarter’ through the implementation of smart technology, such as smart cities, smart industries and smart transportation. Since CV is part of IoT, the implementation of Artificial Intelligence (AI), such as machine learning (ML), is an innovative method that can provide a more reliable approach for producing and generating traffic flow predictions [13]. This systematic review focuses on the traffic flow prediction model using machine learning techniques in connected vehicles. RQ1 In studies on traffic flow prediction that implemented machine learning algorithms and techniques, what are the gaps found in each study which can be further improved in terms of methods, challenges, evaluation approach and results?. This study presents the different purposes, methodologies and outcomes from the list of available literature It further highlights the frequently used ML techniques for traffic flow prediction as well as the variables and parameters involved.

Conclusion
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