Department of Computer Science, Federal University of Ceará, Fortaleza 60020-181, Brazil.
Quixadá Campus, Federal University of Ceará, Quixadá 63902-580, Brazil.
Sensors (Basel). 2022 Aug 12;22(16):6038. doi: 10.3390/s22166038.
In urban mobility, Vehicular Ad Hoc Networks (VANETs) provide a variety of intelligent applications. By enhancing automobile traffic management, these technologies enable advancements in safety and help decrease the frequency of accidents. The transportation system can now follow the development and growth of cities without sacrificing the quality and organisation of its services thanks to safety apps that include collision alerts, real-time traffic information, and safe driving applications, among others. Applications can occasionally demand a lot of computing power, making their processing impractical for cars with limited onboard processing capacity. Offloading of computation is encouraged by such a restriction. However, because vehicle mobility operations are dynamic, communication times (also known as link lifetimes) between nodes are frequently short. VANET applications and processes are impacted by such communication delays (e.g., the offloading decision when using the Computational Offloading technique). Making an accurate prediction of the link lifespan between vehicles is therefore challenging. The effectiveness of the communication time estimation is currently constrained by the link lifespan prediction methods used in the computational offloading process. This work investigates five machine learning (ML) algorithms to predict the link lifetime between nodes in VANETs in different scenarios. We propose the procedures required to carry out the link lifetime prediction method using existing ML techniques. The tactic creates datasets with the features the models need to learn and be trained. The SVR and XGBoost algorithms that were selected as part of the assessment process were trained. To make the prediction using the trained models, we modified the lifespan prediction function from an offloading approach. To determine the viability of applying link lifespan predictions from the models trained in the road and urban scenarios, we conducted a performance study. The findings indicate that compared to the conventional prediction strategy described in the literature, the suggested link lifetime prediction via regression approaches decreases prediction error rates. An offloading method from the literature is extended by the selected SVR. The task loss and recovery rates might be significantly reduced using the SVR. XGBoost outperformed its ML competitors in task recovery or drop rate by 70% to 80% in an assessed hypothesis compared to an offloading choice technique in the literature. With greater offloading rates from an application on the VANET, this effort is intended to give better efficiency in estimating this data using machine learning in various vehicular settings.
在城市交通中,车联网(VANET)提供了各种智能应用。通过增强汽车交通管理,这些技术可以提高安全性并减少事故发生的频率。由于有了包括碰撞警报、实时交通信息和安全驾驶应用程序在内的安全应用程序,交通系统现在可以跟上城市的发展和增长,而不会牺牲其服务的质量和组织。由于车辆的移动性操作是动态的,因此对于具有有限板载处理能力的汽车,应用程序的处理在计算能力方面可能不切实际,因此需要进行计算卸载。但是,由于节点之间的通信时间(也称为链路寿命)很短,因此会受到此类限制的鼓励。VANET 应用程序和流程会受到此类通信延迟的影响(例如,使用计算卸载技术时的卸载决策)。因此,准确预测车辆之间的链路寿命具有挑战性。在计算卸载过程中使用的链路寿命预测方法目前限制了通信时间估计的有效性。这项工作研究了五种机器学习(ML)算法,以在不同场景下预测 VANET 中节点之间的链路寿命。我们提出了使用现有 ML 技术执行链路寿命预测方法所需的步骤。该策略使用模型需要学习和训练的特征创建数据集。选择 SVR 和 XGBoost 算法作为评估过程的一部分进行了培训。为了使用训练好的模型进行预测,我们修改了来自卸载方法的寿命预测功能。为了确定从在道路和城市场景中训练的模型中应用链路寿命预测的可行性,我们进行了性能研究。研究结果表明,与文献中描述的传统预测策略相比,通过回归方法提出的链路寿命预测可以降低预测误差率。通过选择的 SVR 扩展了文献中的卸载方法。与文献中的卸载选择技术相比,通过选择的 SVR 可以将任务丢失和恢复率降低 70%到 80%。在评估假设中,与文献中的卸载选择技术相比,XGBoost 在任务恢复或下降率方面优于其机器学习竞争对手。通过增加 VANET 上应用程序的卸载率,这项工作旨在通过在各种车辆环境中使用机器学习更好地估计此数据的效率。