Online Incremental Rough Set Learning in Intelligent Traffic System

Abstract

In the last few years, vehicle to vehicle communication (V2V) technology has been developed to improve the efficiency of traffic communication and road accident avoidance. In this paper, we have proposed a model for online rough sets learning vehicle to vehicle communication algorithm. This model is an incremental learning method, which can learn data object-by-object or class-by-class. This paper proposed a new rules generation for vehicle data classifying in collaborative environments. ROSETTA tool is applied to verify the reliability of the generated results. The experiments show that the online rough sets based algorithm for vehicle data classifying is suitable to be executed in the communication of traffic environments. The implementation of this model on the objectives’ (cars’) rules that define parameters for the determination of the value of communication, and for reducing the decision rules that leads to the estimation of their optimal value. The confusion matrix is used to assess the performance of the chosen model and classes (Yes or No). The experimental results show the overall accuracy (predicted and actual) of the proposed model. The results show the strength of the online learning model against offline models and demonstrate the importance of the accuracy and adaptability of the incremental learning in improving the prediction ability.

Authors and Affiliations

Amal Bentaher, Yasser Fouad, Khaled Mahar

Keywords

Related Articles

Crowd Mobility Analysis using WiFi Sniffers

Wi-fi enabled devices such as today’s smart-phones are regularly in-search for connectivity. They continuously send management frames called Probe Requests searching for previ-ously accessed networks. These frames contai...

Discrete-Time Approximation for Nonlinear Continuous Systems with Time Delays

This paper is concerned with the discretization of nonlinear continuous time delay systems. Our approach is based on Taylor-Lie series. The main idea aims to minimize the effect of the delay and neglects the importance o...

Pedestrian Crossing Safety System at Traffic Lights based on Decision Tree Algorithm

Pedestrians are one of the street users who have the right to get priority on security. Highway users such as vehicle drivers sometimes violate the traffic lights that is endanger pedestrians and make pedestrians feel in...

Competitive Representation Based Classification Using Facial Noise Detection

Linear representation based face recognition is hotly studied in recent years. Competitive representation classification is a linear representation based method which uses the most competitive training samples to sparsel...

Fruit Fly Optimization Algorithm for Network-Aware Web Service Composition in the Cloud

Service Oriented Computing (SOC) provides a framework for the realization of loosely coupled service oriented applications. Web services are central to the concept of SOC. Currently, research into how web services can be...

Download PDF file
  • EP ID EP278019
  • DOI 10.14569/IJACSA.2018.090312
  • Views 95
  • Downloads 0

How To Cite

Amal Bentaher, Yasser Fouad, Khaled Mahar (2018). Online Incremental Rough Set Learning in Intelligent Traffic System. International Journal of Advanced Computer Science & Applications, 9(3), 77-82. https://europub.co.uk/articles/-A-278019