Machine Learning-assisted Distance Based Residual Energy Aware Clustering Algorithm for Energy Efficient Information Dissemination in Urban VANETs

Amit Choksi, Mehul Shah
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Abstract

A Vehicular Ad-hoc Network (VANET) is an essential component of intelligent transportation systems in the building of smart cities. A VANET is a self-configure high mobile and dynamic potential wireless ad-hoc network that joins all vehicle nodes in a smart city to provide in-vehicle infotainment services to city administrators and residents. In the smart city, the On-board Unit (OBU) of each vehicle has multiple onboard sensors that are used for data collection from the surrounding environment. One of the main issues in VANET is energy efficiency and balance because the small onboard sensors can’t be quickly recharged once installed on On-board Units (OBUs). Moreover, conserving energy stands out as a crucial challenge in VANET which is primarily contingent on the selection of Cluster Heads (CH) and the adopted packet routing strategy. To address this issue, this paper proposes distance and energy-aware clustering algorithms named SOMNNDP, which use a Self-Organizing Map Neural Network (SOMNN) machine learning technique to perform faster multi-hop data dissemination. Individual Euclidean distances and residual node energy are considered as mobility parameters throughout the cluster routing process to improve and balance the energy consumption among the participating vehicle nodes. This maximizes the lifetime of VANET by ensuring that all intermediate vehicle nodes use energy at approximately the same rate. Simulation findings demonstrate that SOMNNDP improves Quality of Service (QoS) better and consumes 17% and 14% less energy during cluster routing than distance and energy-aware variation of K-Means (KM) and Fuzzy C-Means (FCM) called KMDP and FCMDP respectively.
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基于机器学习辅助距离的剩余能量感知聚类算法,用于城市 VANET 中的高能效信息传播
在智能城市的建设中,车载 Ad-hoc 网络(VANET)是智能交通系统的重要组成部分。VANET 是一种自配置的高移动性和动态潜力无线 ad-hoc 网络,它将智能城市中的所有车辆节点连接起来,为城市管理者和居民提供车载信息娱乐服务。在智慧城市中,每辆车的车载单元(OBU)都有多个车载传感器,用于收集周围环境的数据。VANET 的主要问题之一是能源效率和平衡,因为小型车载传感器安装在车载单元 (OBU) 上后无法快速充电。此外,在 VANET 中,节能也是一项重要挑战,这主要取决于簇头(CH)的选择和所采用的数据包路由策略。为解决这一问题,本文提出了名为 SOMNNDP 的距离和能量感知聚类算法,该算法使用自组织映射神经网络(SOMNN)机器学习技术来执行更快的多跳数据传播。在整个集群路由过程中,单个节点的欧氏距离和节点剩余能量被视为移动参数,以改善和平衡参与车辆节点之间的能量消耗。这样就能确保所有中间车辆节点以大致相同的速率使用能量,从而最大限度地延长 VANET 的寿命。仿真结果表明,SOMNNDP 能更好地提高服务质量(QoS),与 K-Means(KM)和 Fuzzy C-Means(FCM)的距离和能量感知变体(分别称为 KMDP 和 FCMDP)相比,SOMNNDP 在集群路由过程中的能耗分别降低了 17% 和 14%。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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