Real-time traffic congestion prediction using big data and machine learning techniques

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
Priyanka Chawla, Rutuja Hasurkar, Chaithanya Reddy Bogadi, Naga Sindhu Korlapati, Rajasree Rajendran, Sindu Ravichandran, Sai Chaitanya Tolem, J. Gao
{"title":"Real-time traffic congestion prediction using big data and machine learning techniques","authors":"Priyanka Chawla, Rutuja Hasurkar, Chaithanya Reddy Bogadi, Naga Sindhu Korlapati, Rajasree Rajendran, Sindu Ravichandran, Sai Chaitanya Tolem, J. Gao","doi":"10.1108/wje-07-2021-0428","DOIUrl":null,"url":null,"abstract":"\nPurpose\nThe study aims to propose an intelligent real-time traffic model to address the traffic congestion problem. The proposed model assists the urban population in their everyday lives by assessing the probability of road accidents and accurate traffic information prediction. It also helps in reducing overall carbon dioxide emissions in the environment and assists the urban population in their everyday lives by increasing overall transportation quality.\n\n\nDesign/methodology/approach\nThis study offered a real-time traffic model based on the analysis of numerous sensor data. Real-time traffic prediction systems can identify and visualize current traffic conditions on a particular lane. The proposed model incorporated data from road sensors as well as a variety of other sources. It is difficult to capture and process large amounts of sensor data in real time. Sensor data is consumed by streaming analytics platforms that use big data technologies, which is then processed using a range of deep learning and machine learning techniques.\n\n\nFindings\nThe study provided in this paper would fill a gap in the data analytics sector by delivering a more accurate and trustworthy model that uses internet of things sensor data and other data sources. This method can also assist organizations such as transit agencies and public safety departments in making strategic decisions by incorporating it into their platforms.\n\n\nResearch limitations/implications\nThe model has a big flaw in that it makes predictions for the period following January 2020 that are not particularly accurate. This, however, is not a flaw in the model; rather, it is a flaw in Covid-19, the global epidemic. The global pandemic has impacted the traffic scenario, resulting in erratic data for the period after February 2020. However, once the circumstance returns to normal, the authors are confident in their model’s ability to produce accurate forecasts.\n\n\nPractical implications\nTo help users choose when to go, this study intended to pinpoint the causes of traffic congestion on the highways in the Bay Area as well as forecast real-time traffic speeds. To determine the best attributes that influence traffic speed in this study, the authors obtained data from the Caltrans performance measurement system (PeMS), reviewed it and used multiple models. The authors developed a model that can forecast traffic speed while accounting for outside variables like weather and incident data, with decent accuracy and generalizability. To assist users in determining traffic congestion at a certain location on a specific day, the forecast method uses a graphical user interface. This user interface has been designed to be readily expanded in the future as the project’s scope and usefulness increase. The authors’ Web-based traffic speed prediction platform is useful for both municipal planners and individual travellers. The authors were able to get excellent results by using five years of data (2015–2019) to train the models and forecast outcomes for 2020 data. The authors’ algorithm produced highly accurate predictions when tested using data from January 2020. The benefits of this model include accurate traffic speed forecasts for California’s four main freeways (Freeway 101, I-680, 880 and 280) for a specific place on a certain date. The scalable model performs better than the vast majority of earlier models created by other scholars in the field. The government would benefit from better planning and execution of new transportation projects if this programme were to be extended across the entire state of California. This initiative could be expanded to include the full state of California, assisting the government in better planning and implementing new transportation projects.\n\n\nSocial implications\nTo estimate traffic congestion, the proposed model takes into account a variety of data sources, including weather and incident data. According to traffic congestion statistics, “bottlenecks” account for 40% of traffic congestion, “traffic incidents” account for 25% and “work zones” account for 10% (Traffic Congestion Statistics). As a result, incident data must be considered for analysis. The study uses traffic, weather and event data from the previous five years to estimate traffic congestion in any given area. As a result, the results predicted by the proposed model would be more accurate, and commuters who need to schedule ahead of time for work would benefit greatly.\n\n\nOriginality/value\nThe proposed work allows the user to choose the optimum time and mode of transportation for them. The underlying idea behind this model is that if a car spends more time on the road, it will cause traffic congestion. The proposed system encourages users to arrive at their location in a short period of time. Congestion is an indicator that public transportation needs to be expanded. The optimum route is compared to other kinds of public transit using this methodology (Greenfield, 2014). If the commute time is comparable to that of private car transportation during peak hours, consumers should take public transportation.\n","PeriodicalId":23852,"journal":{"name":"World Journal of Engineering","volume":" ","pages":""},"PeriodicalIF":1.4000,"publicationDate":"2022-10-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"World Journal of Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1108/wje-07-2021-0428","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q2","JCRName":"ENGINEERING, MULTIDISCIPLINARY","Score":null,"Total":0}
引用次数: 0

Abstract

Purpose The study aims to propose an intelligent real-time traffic model to address the traffic congestion problem. The proposed model assists the urban population in their everyday lives by assessing the probability of road accidents and accurate traffic information prediction. It also helps in reducing overall carbon dioxide emissions in the environment and assists the urban population in their everyday lives by increasing overall transportation quality. Design/methodology/approach This study offered a real-time traffic model based on the analysis of numerous sensor data. Real-time traffic prediction systems can identify and visualize current traffic conditions on a particular lane. The proposed model incorporated data from road sensors as well as a variety of other sources. It is difficult to capture and process large amounts of sensor data in real time. Sensor data is consumed by streaming analytics platforms that use big data technologies, which is then processed using a range of deep learning and machine learning techniques. Findings The study provided in this paper would fill a gap in the data analytics sector by delivering a more accurate and trustworthy model that uses internet of things sensor data and other data sources. This method can also assist organizations such as transit agencies and public safety departments in making strategic decisions by incorporating it into their platforms. Research limitations/implications The model has a big flaw in that it makes predictions for the period following January 2020 that are not particularly accurate. This, however, is not a flaw in the model; rather, it is a flaw in Covid-19, the global epidemic. The global pandemic has impacted the traffic scenario, resulting in erratic data for the period after February 2020. However, once the circumstance returns to normal, the authors are confident in their model’s ability to produce accurate forecasts. Practical implications To help users choose when to go, this study intended to pinpoint the causes of traffic congestion on the highways in the Bay Area as well as forecast real-time traffic speeds. To determine the best attributes that influence traffic speed in this study, the authors obtained data from the Caltrans performance measurement system (PeMS), reviewed it and used multiple models. The authors developed a model that can forecast traffic speed while accounting for outside variables like weather and incident data, with decent accuracy and generalizability. To assist users in determining traffic congestion at a certain location on a specific day, the forecast method uses a graphical user interface. This user interface has been designed to be readily expanded in the future as the project’s scope and usefulness increase. The authors’ Web-based traffic speed prediction platform is useful for both municipal planners and individual travellers. The authors were able to get excellent results by using five years of data (2015–2019) to train the models and forecast outcomes for 2020 data. The authors’ algorithm produced highly accurate predictions when tested using data from January 2020. The benefits of this model include accurate traffic speed forecasts for California’s four main freeways (Freeway 101, I-680, 880 and 280) for a specific place on a certain date. The scalable model performs better than the vast majority of earlier models created by other scholars in the field. The government would benefit from better planning and execution of new transportation projects if this programme were to be extended across the entire state of California. This initiative could be expanded to include the full state of California, assisting the government in better planning and implementing new transportation projects. Social implications To estimate traffic congestion, the proposed model takes into account a variety of data sources, including weather and incident data. According to traffic congestion statistics, “bottlenecks” account for 40% of traffic congestion, “traffic incidents” account for 25% and “work zones” account for 10% (Traffic Congestion Statistics). As a result, incident data must be considered for analysis. The study uses traffic, weather and event data from the previous five years to estimate traffic congestion in any given area. As a result, the results predicted by the proposed model would be more accurate, and commuters who need to schedule ahead of time for work would benefit greatly. Originality/value The proposed work allows the user to choose the optimum time and mode of transportation for them. The underlying idea behind this model is that if a car spends more time on the road, it will cause traffic congestion. The proposed system encourages users to arrive at their location in a short period of time. Congestion is an indicator that public transportation needs to be expanded. The optimum route is compared to other kinds of public transit using this methodology (Greenfield, 2014). If the commute time is comparable to that of private car transportation during peak hours, consumers should take public transportation.
利用大数据和机器学习技术进行实时交通拥堵预测
目的本研究旨在提出一种智能实时交通模型来解决交通拥堵问题。所提出的模型通过评估道路事故的概率和准确的交通信息预测来帮助城市人口的日常生活。它还有助于减少环境中的总体二氧化碳排放,并通过提高整体交通质量来帮助城市人口的日常生活。设计/方法论/方法本研究基于对大量传感器数据的分析,提供了一个实时交通模型。实时交通预测系统可以识别和可视化特定车道上的当前交通状况。所提出的模型结合了来自道路传感器以及各种其他来源的数据。很难实时捕获和处理大量的传感器数据。传感器数据由使用大数据技术的流媒体分析平台消耗,然后使用一系列深度学习和机器学习技术进行处理。发现本文提供的研究将通过提供一个使用物联网传感器数据和其他数据源的更准确、更可信的模型来填补数据分析领域的空白。这种方法还可以通过将其纳入其平台,帮助交通机构和公共安全部门等组织做出战略决策。研究局限性/含义该模型有一个很大的缺陷,即它对2020年1月之后的一段时间做出的预测并不特别准确。然而,这并不是模型中的缺陷;相反,这是全球流行病新冠肺炎的一个缺陷。全球疫情影响了交通状况,导致2020年2月之后的数据不稳定。然而,一旦情况恢复正常,作者对他们的模型产生准确预测的能力充满信心。实际意义为了帮助用户选择何时出行,本研究旨在查明湾区高速公路交通拥堵的原因,并预测实时交通速度。为了确定本研究中影响交通速度的最佳属性,作者从加州交通管理局性能测量系统(PeMS)获得了数据,对其进行了审查,并使用了多个模型。作者开发了一个模型,可以预测交通速度,同时考虑天气和事故数据等外部变量,具有相当的准确性和可推广性。为了帮助用户确定特定日期某个地点的交通拥堵,预测方法使用图形用户界面。随着项目范围和实用性的增加,这个用户界面在未来可以随时扩展。作者基于网络的交通速度预测平台对城市规划者和个人旅行者都很有用。作者通过使用五年的数据(2015-2019)来训练2020年数据的模型和预测结果,获得了出色的结果。作者的算法在使用2020年1月的数据进行测试时产生了高度准确的预测。该模型的好处包括在特定日期对加利福尼亚州四条主要高速公路(101号高速公路、I-680号高速公路、880号高速公路和280号高速公路)特定地点的交通速度进行准确预测。该可扩展模型的性能优于该领域其他学者创建的绝大多数早期模型。如果该计划在整个加利福尼亚州推广,政府将受益于新交通项目的更好规划和执行。这一举措可以扩大到包括整个加利福尼亚州,协助政府更好地规划和实施新的交通项目。社会影响为了估计交通拥堵,所提出的模型考虑了各种数据来源,包括天气和事故数据。根据交通拥堵统计,“瓶颈”占交通拥堵的40%,“交通事故”占25%,“工作区”占10%(交通拥堵统计)。因此,必须考虑事故数据进行分析。该研究使用前五年的交通、天气和事件数据来估计任何特定地区的交通拥堵。因此,所提出的模型预测的结果将更加准确,需要提前安排工作的通勤者将受益匪浅。创意/价值建议的作品允许用户为他们选择最佳的时间和运输方式。该模型背后的基本思想是,如果汽车在路上花费更多的时间,就会导致交通拥堵。拟议的系统鼓励用户在短时间内到达他们的位置。拥堵是公共交通需要扩大的一个指标。使用该方法将最佳路线与其他类型的公共交通进行比较(Greenfield,2014)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 求助全文
来源期刊
World Journal of Engineering
World Journal of Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
4.20
自引率
10.50%
发文量
78
期刊介绍: The main focus of the World Journal of Engineering (WJE) is on, but not limited to; Civil Engineering, Material and Mechanical Engineering, Electrical and Electronic Engineering, Geotechnical and Mining Engineering, Nanoengineering and Nanoscience The journal bridges the gap between materials science and materials engineering, and between nano-engineering and nano-science. A distinguished editorial board assists the Editor-in-Chief, Professor Sun. All papers undergo a double-blind peer review process. For a full list of the journal''s esteemed review board, please see below.
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信