A Novel Resource-Aware Distributed Cooperative Decision-Making Mechanism for Connected Automated Vehicles

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Authors Abstract
Content
This article proposes a new model for a cooperative and distributed decision-making mechanism for an ad hoc network of automated vehicles (AVs). The goal of the model is to ensure safety and reduce energy consumption. The use of centralized computation resource is not suitable for scalable cooperative applications, so the proposed solution takes advantage of the onboard computing resources of the vehicle in an intelligent transportation system (ITS). This leads to the introduction of a distributed decision-making mechanism for connected AVs. The proposed mechanism utilizes a novel implementation of the resource-aware and distributed–vector evaluated genetic algorithm (RAD-VEGA) in the vehicular ad hoc network of connected AVs as a solver to collaborative decision-making problems. In the first step, a collaborative decision-making problem is formulated for connected AVs as a multi-objective optimization problem (MOOP), with a focus on energy consumption and collision risk reduction as example objectives. RAD-VEGA then cooperatively solves this MOOP, taking into account the availability of AV’s onboard resources and the application layer characteristics of today’s ITS communication tools. The performance of the proposed mechanism is evaluated by solving the ZDT1 test problem and studying pareto-frontier solutions to the true front over time. The scalability of the proposed solution is estimated to be 305 CAVs, considering a communication bandwidth of 6 MB/s. Additionally, cooperative AV planning scenario examples are simulated, and the effectiveness of the proposed mechanism is demonstrated by comparing final and initial solutions after solving the MOOP using RAD-VEGA.
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DOI
https://doi.org/10.4271/12-07-04-0030
Pages
17
Citation
Ghahremaninejad, R., and Bilgen, S., "A Novel Resource-Aware Distributed Cooperative Decision-Making Mechanism for Connected Automated Vehicles," SAE Int. J. CAV 7(4), 2024, https://doi.org/10.4271/12-07-04-0030.
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Publisher
Published
Sep 06
Product Code
12-07-04-0030
Content Type
Journal Article
Language
English