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Computational Framework for Analytical Operation in Intelligent Transportation System using Big Data
Intelligent Transportation System (ITS) is the future of the current transport scheme. It is meant to incorporate an intelligent traffic management operation to offer vehicles more safety and valuable traffic-related information. A review of existing approaches showcases the implementation of varied...
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Published in: | International journal of advanced computer science & applications 2023, Vol.14 (7) |
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container_title | International journal of advanced computer science & applications |
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creator | G, Mahendra R, Roopashree H. |
description | Intelligent Transportation System (ITS) is the future of the current transport scheme. It is meant to incorporate an intelligent traffic management operation to offer vehicles more safety and valuable traffic-related information. A review of existing approaches showcases the implementation of varied scattered schemes where analytical operation is mainly emphasized. However, some significant shortcomings are witnessed in efficiently managing complex traffic data. Therefore, the proposed system introduces a novel computational framework with a joint operation toward analytical processing using big data targeting to manage raw and complex traffic data efficiently. As a novel feature, the model introduces a data manager who can manage the complex traffic stream, followed by decentralized traffic management, that can identify and eliminate artefacts using statistical correlation. Finally, predictive modelling is incorporated to offer knowledge discovery with the highest accuracy. The simulation outcome shows that Random Forest excels with 99% accuracy, which is the highest of all existing machine learning approaches, along with the accomplishment of 11.77% reduced overhead, 1.3% of reduced delay, and 67.47% reduced processing time compared to existing machine learning approaches. |
doi_str_mv | 10.14569/IJACSA.2023.0140744 |
format | article |
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subjects | Accuracy Big Data Intelligent transportation systems Machine learning Mathematical analysis Prediction models Statistical correlation Traffic information Traffic management |
title | Computational Framework for Analytical Operation in Intelligent Transportation System using Big Data |
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