Abstract

One of the current topics of interest in transportation science is the use of intelligent computation and IoT (Internet of Things) technologies. Researchers have proposed many approaches using these concepts, but the most widely used concept in road traffic modeling at the microscopic level is the car-following model. Knowing that the standard car-following model is single lane-oriented, the purpose of this paper is to present a fault detection analysis of the extension to a multiple lane car-following model that uses the Bayesian reasoning concept to estimate lane change behavior. After the application of the latter model on real traffic data retrieved from inductive loops placed on a road network, fault detection using parity equations was used. The standard car-following model applied separately for each lane showed the ability to perform a lane change action and to incorporate a new vehicle into the current lane. The results will highlight the advantages and the critical points of influence in the use of a multiple lane car-following model based on probabilistic estimated lane changes. Additionally, this research applied fault detection based on parity equations for the proposed model. The purpose was to deliver an overview of the faults introduced by the behavior of vehicles in adjacent lanes on the behavior of the target vehicle.

Highlights

  • Traffic congestion affects many cities around the world

  • Knowing that the standard car-following model is single lane-oriented, the purpose of this paper is to present a fault detection analysis of the extension to a multiple lane car-following model that uses the Bayesian reasoning concept to estimate lane change behavior

  • Where u1 and u2 are permanently updated considering the incentive criteria defined by Equations (25)–(27) as the consequences of a possible lane change action according to Equations (28)

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Summary

Introduction

The ITS (Intelligent Transportation Systems) concept is one of the main directions of research in transportation science. This concept ensures the incorporation of Internet of Things (IoT) technologies in traffic control and monitoring systems [1] through sensor networks and actuators [2,3]. The current paper started from the idea that the biggest disadvantage of the car-following model was its single-lane orientation, i.e., without incorporating relationships with vehicles in adjacent lanes, making it tough to perform lane change maneuvers and provide fault detection analyses in the case of a multiple lane car-following model. The aim of the fault detection was to identify changes in the output and state variables values as a result of the proposed approach

Background
Car-Following Model—General Overview
Concept Representation and Parameters of Interest
Car-Following Model
Challenges in Car-Following Modeling
Lane Change Behavior Estimation
Lane Change Process Modeling
Bayesian Reasoning for Lane Change Estimation
Car-Following Model for Multiple Lane Road
Fault Detection using Parity Equations
Experiment and Results
Input Data
Simulation Model
Conclusions
Full Text
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