Enhancing Vehicular Network Efficiency: The Impact of Object Data Inclusion in the Collective Perception Service

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Andreia Figueiredo;Pedro Rito;Miguel Luís;Susana Sargento
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Abstract

As the automotive industry evolves, integrating intelligent technologies and cooperative services in vehicular networks has become crucial to enhance road safety and autonomous driving capabilities. However, this integration can strain networks, particularly when exchanging a high volume of object information. This work studies the impact of the Collective Perception Messages (CPMs) size on the vehicular network performance. We introduce an algorithm aimed at optimizing the efficiency of extra object data inclusion in CPMs. The focus is on evaluating the vehicular network efficiency by selectively including extra objects within the available message space, strategically enhancing the transmission of more objects. This optimization not only reduces the need for constant CPM generation, but also maximizes the efficiency of information exchange. Using real-world vehicular data, this approach’s effectiveness in improving the Collective Perception Service (CPS) is demonstrated, showing a significant improvement when compared to traditional CPS standard: the proposed algorithm is capable of transmitting 14% more object information while using 2.6% fewer bytes. In addition, if we were to maintain the same number of bytes used in transmission as the CPS standard, our algorithm would result in a 23% increase in transmitted object information. Furthermore, the additional delay incurred by the algorithm is minimal, with an average of just 3 ms.
提高车载网络效率:将对象数据纳入集体感知服务的影响
随着汽车行业的发展,在车辆网络中集成智能技术和合作服务对于提高道路安全和自动驾驶能力至关重要。然而,这种整合会给网络带来压力,尤其是在交换大量对象信息时。这项工作研究了集体感知信息(CPM)大小对车辆网络性能的影响。我们引入了一种算法,旨在优化在 CPM 中包含额外对象数据的效率。重点是通过在可用信息空间内选择性地包含额外对象,战略性地增强更多对象的传输,来评估车辆网络的效率。这种优化不仅减少了不断生成 CPM 的需要,还最大限度地提高了信息交换的效率。通过使用真实世界的车辆数据,证明了这种方法在改进集体感知服务(CPS)方面的有效性,与传统的 CPS 标准相比有了显著改善:所提出的算法能够多传输 14% 的对象信息,而使用的字节数却减少了 2.6%。此外,如果我们保持与 CPS 标准相同的传输字节数,我们的算法将使传输的对象信息增加 23%。此外,该算法产生的额外延迟极小,平均仅为 3 毫秒。
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CiteScore
5.40
自引率
0.00%
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