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Detection of road traffic anomalies based on computational data science

Jamal Raiyn

2022Discover Internet of Things13 citationsDOIOpen Access PDF

Abstract

Abstract The development of 5G has enabled the autonomous vehicles (AVs) to have full control over all functions. The AV acts autonomously and collects travel data based on various smart devices and sensors, with the goal of enabling it to operate under its own power. However, the collected data is affected by several sources that degrade the forecasting accuracy. To manage large amounts of traffic data in different formats, a computational data science approach (CDS) is proposed. The computational data science scheme introduced to detect anomalies in traffic data that negatively affect traffic efficiency. The combination of data science and advanced artificial intelligence techniques, such as deep leaning provides higher degree of data anomalies detection which leads to reduce traffic congestion and vehicular queuing. The main contribution of the CDS approach is summarized in detection of the factors that caused data anomalies early to avoid long-term traffic congestions. Moreover, CDS indicated a promoting results in various road traffic scenarios.

Topics & Concepts

Computer scienceFloating car dataTraffic congestionQueueing theoryReal-time computingIntelligent transportation systemData miningTransport engineeringEngineeringComputer networkTraffic Prediction and Management TechniquesTraffic control and managementAnomaly Detection Techniques and Applications