Performance Evaluation of Onboard Processing Capability Reduction in Cooperative Vehicles Using 5G and Artificial Intelligence

4区 计算机科学 Q4 Computer Science Mobile Information Systems Pub Date : 2024-04-08 DOI:10.1155/2024/9280848
Elizabeth Palacios-Morocho, Saúl Inca, Jose F. Monserrat
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Abstract

Fifth-generation (5G) technology is one of the keys to the Industrial Revolution known as Industry 4.0 as it provides faster connectivity and allows a greater number of devices to be connected simultaneously. In the transport sector, newly produced vehicles are equipped with various sensors and applications to help drivers perform safe maneuvers. However, moving from semiautonomous to fully autonomous vehicles to cooperating systems remains a major challenge. Many researchers have focused on artificial intelligence (AI) techniques and the ability to share information to achieve this cooperative behavior. This information can be made up of different data, which can be obtained from different sensors such as laser imaging detection and ranging (LiDAR), radar, camera, global positioning system (GPS), or data related to the current speed, acceleration, or position. The combination of the different shared data is performed depending on the approach of each navigation algorithm. This data fusion will allow a better understanding of the environment but will overload the network, as the traffic generated will be massive. Therefore, this paper addresses the challenge of achieving this cooperation between vehicles from the point of view of network requirements and computational capacity. In addition, this study contributes to advancing theory into real-world practice by examining the performance of cooperative navigation algorithms in the midst of the migration of computational resources from onboard vehicle equipment to the cloud. In particular, it investigates the transition from a cooperative navigation algorithm based on a decentralized architecture to a semidecentralized one as computationally demanding processes previously performed onboard are performed in the cloud. Additionally, the paper discusses the indispensable role of 5G in fulfilling the escalating demands for high throughput and low latency in these services, particularly as the number of vehicles increases. The results of the tests show that the AI acting alone cannot achieve optimal performance, even using 100% of the computational capacity of the onboard equipment in the vehicle. However, a system that integrates 5G and AI-based joint decisions can achieve better performance, reduce the computational resources consumed in the vehicle, and increase the efficiency of collaborative choices by up to 83.3%.
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利用 5G 和人工智能降低合作车辆车载处理能力的性能评估
第五代(5G)技术是被称为工业 4.0 的工业革命的关键之一,因为它能提供更快的连接速度,并允许同时连接更多设备。在交通领域,新生产的车辆配备了各种传感器和应用程序,以帮助驾驶员进行安全操作。然而,从半自动到完全自动的车辆,再到合作系统,仍然是一项重大挑战。许多研究人员将重点放在人工智能(AI)技术和共享信息的能力上,以实现这种合作行为。这些信息可以由不同的数据组成,这些数据可以从不同的传感器获得,如激光成像检测和测距(LiDAR)、雷达、摄像头、全球定位系统(GPS),或与当前速度、加速度或位置相关的数据。不同共享数据的组合取决于每种导航算法的方法。这种数据融合可以更好地了解环境,但会使网络超载,因为产生的流量将是巨大的。因此,本文从网络要求和计算能力的角度出发,探讨了实现车辆间合作的挑战。此外,在计算资源从车载设备向云计算迁移的过程中,本研究通过考察合作导航算法的性能,为将理论推进到现实世界的实践做出了贡献。特别是,本文研究了基于分散式架构的合作导航算法向半集中式架构的过渡,因为以前在车载设备上执行的计算要求较高的流程在云中执行。此外,本文还讨论了 5G 在满足这些服务对高吞吐量和低延迟不断升级的需求方面所发挥的不可或缺的作用,尤其是随着车辆数量的增加。测试结果表明,即使使用车载设备 100% 的计算能力,人工智能单独行动也无法实现最佳性能。然而,集成了 5G 和基于人工智能的联合决策的系统可以实现更好的性能,减少车辆所消耗的计算资源,并将协同选择的效率提高 83.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mobile Information Systems
Mobile Information Systems 工程技术-电信学
自引率
0.00%
发文量
1797
审稿时长
3 months
期刊介绍: Mobile Information Systems is a peer-reviewed, open access journal that publishes original research articles as well as review articles related to all aspects of mobile information systems.
期刊最新文献
Performance Evaluation of Onboard Processing Capability Reduction in Cooperative Vehicles Using 5G and Artificial Intelligence The Review and Comparison between Centralized and Decentralized Digital Identity Systems Exploring the Privacy Paradox in Social Network Users: A Double-Entry Mental Accounting Theory Perspective Retracted: Entrepreneurship, Digital Capabilities, and Sustainable Business Model Innovation: A Case Study Retracted: A Supply Chain Model Based on Data-Driven Demand Uncertainty under the Influence of Carbon Tax Policy
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