Nadana Ravishankar T, Ramprasath M, Daniel A, Selvarajan Shitharth, Subbiah Priyanga, Balusamy Balamurugan
Department of Data Science and Business Systems, SRM Institute of Science and Technology, Kattankulathur, Chennai, Tamil Nadu, India.
Department of Data Science and Business Systems, SRM Institute of Science and Technology, Kattankulathur, Chennai, India.
Sci Rep. 2023 Dec 27;13(1):23041. doi: 10.1038/s41598-023-50064-w.
Unmanned aerial vehicles (UAVs) become a promising enabler for the next generation of wireless networks with the tremendous growth in electronics and communications. The application of UAV communications comprises messages relying on coverage extension for transmission networks after disasters, Internet of Things (IoT) devices, and dispatching distress messages from the device positioned within the coverage hole to the emergency centre. But there are some problems in enhancing UAV clustering and scene classification using deep learning approaches for enhancing performance. This article presents a new White Shark Optimizer with Optimal Deep Learning based Effective Unmanned Aerial Vehicles Communication and Scene Classification (WSOODL-UAVCSC) technique. UAV clustering and scene categorization present many deep learning challenges in disaster management: scene understanding complexity, data variability and abundance, visual data feature extraction, nonlinear and high-dimensional data, adaptability and generalization, real-time decision making, UAV clustering optimization, sparse and incomplete data. the need to handle complex, high-dimensional data, adapt to changing environments, and make quick, correct decisions in critical situations drives deep learning in UAV clustering and scene categorization. The purpose of the WSOODL-UAVCSC technique is to cluster the UAVs for effective communication and scene classification. The WSO algorithm is utilized for the optimization of the UAV clustering process and enables to accomplish effective communication and interaction in the network. With dynamic adjustment of the clustering, the WSO algorithm improves the performance and robustness of the UAV system. For the scene classification process, the WSOODL-UAVCSC technique involves capsule network (CapsNet) feature extraction, marine predators algorithm (MPA) based hyperparameter tuning, and echo state network (ESN) classification. A wide-ranging simulation analysis was conducted to validate the enriched performance of the WSOODL-UAVCSC approach. Extensive result analysis pointed out the enhanced performance of the WSOODL-UAVCSC method over other existing techniques. The WSOODL-UAVCSC method achieved an accuracy of 99.12%, precision of 97.45%, recall of 98.90%, and F1-score of 98.10% when compared to other existing techniques.
随着电子和通信领域的巨大发展,无人驾驶飞行器(UAV)成为下一代无线网络的一个有前途的使能器。无人机通信的应用包括依赖于灾难后传输网络覆盖扩展的消息、物联网(IoT)设备,以及将位于覆盖空洞内的设备发出的遇险消息发送到应急中心。但是,使用深度学习方法来增强无人机聚类和场景分类以提高性能存在一些问题。本文提出了一种基于最优深度学习的有效无人机通信和场景分类的新型白鲨优化器(WSOODL-UAVCSC)技术。无人机聚类和场景分类在灾害管理中提出了许多深度学习挑战:场景理解复杂性、数据变异性和丰富性、视觉数据特征提取、非线性和高维数据、适应性和泛化性、实时决策、无人机聚类优化、稀疏和不完整数据。处理复杂的高维数据、适应不断变化的环境以及在关键情况下做出快速、正确决策的需求推动了无人机聚类和场景分类中的深度学习。WSOODL-UAVCSC技术的目的是对无人机进行聚类以实现有效的通信和场景分类。WSO算法用于优化无人机聚类过程,并能够在网络中实现有效的通信和交互。通过对聚类的动态调整,WSO算法提高了无人机系统的性能和鲁棒性。对于场景分类过程,WSOODL-UAVCSC技术涉及胶囊网络(CapsNet)特征提取、基于海洋捕食者算法(MPA)的超参数调整和回声状态网络(ESN)分类。进行了广泛的仿真分析以验证WSOODL-UAVCSC方法的卓越性能。广泛的结果分析指出了WSOODL-UAVCSC方法相对于其他现有技术的增强性能。与其他现有技术相比,WSOODL-UAVCSC方法的准确率达到99.12%,精确率达到97.45%,召回率达到98.90%,F1分数达到98.10%。