Advancing autonomous vehicle control systems: An in‐depth overview of decision‐making and manoeuvre execution state of the art

Author:

Abdallaoui Sara1,Ikaouassen Halima1ORCID,Kribèche Ali1,Chaibet Ahmed1,Aglzim El‐Hassane1

Affiliation:

1. DRIVE Lab University of Burgundy Nevers France

Abstract

AbstractThis abstract discusses the significant progress made in autonomous vehicles, focusing on decision‐making systems and control algorithms. It explores recent advances, challenges, and contributions in the field, emphasizing the need for precise navigation and control. The paper covers various methodologies, including rule‐based methods, machine learning, deep learning, probabilistic approaches, and hybrid approaches, examining their applications and effectiveness in ensuring safe navigation. Additionally, it reviews ongoing research efforts, emerging trends, and persistent challenges related to decision‐making and manoeuvre execution in autonomous vehicles, addressing complex topics such as sensor measurement uncertainty, dynamic environment modelling, real‐time responsiveness, and safe interactions with other road users. The objective is to provide a comprehensive overview of the state of the art in autonomous vehicle navigation and control for readers.

Publisher

Institution of Engineering and Technology (IET)

Subject

General Engineering,Energy Engineering and Power Technology,Software

Reference112 articles.

1. Hofer L.:Decision‐making algorithms for autonomous robots.Doctoral Thesis University of Bordeaux(2017)

2. Increasing flexibility and productivity in Industry 4.0 production networks with autonomous mobile robots and smart intralogistics

3. Risk assessment based collision avoidance decision-making for autonomous vehicles in multi-scenarios

4. Thorough Review Analysis of Safe Control of Autonomous Vehicles: Path Planning and Navigation Techniques

5. Decision‐making in driver‐automation shared control: a review and perspectives;Wang W.;IEEE/CAA J. Autom. Sin.,2020

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