移动边缘深度学习算法与5G-IoT设备实时异常事件检测

J. Praveenchandar, S. Vinoth Kumar, A. Christopher Paul, M. A Mukunthan, K. Maharajan
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引用次数: 0

摘要

物联网由于其快速扩展和各种应用而越来越受欢迎。此外,5G技术有助于通信和网络连接。这项工作将C-RAN与物联网网络集成在一起,提供实验性5G测试平台。在5G物联网环境中,这种体验可用于增强垂直和平面定位(3D定位)。DRCaG是所提出模型的首字母缩略词,代表了一个在顶部有门控层的深度复杂网络。该模型在学习减少、准确性和矩阵定向方面的性能已经通过大量的仿真得到了证明,其信噪比(SNR)从20 dB到+ 20 dB不等,这表明了DRCaG与其他模型相比的优越性。本研究提出了一种基于深度学习技术的在线端到端解决方案,用于快速、精确、可靠和自动检测各种轻微犯罪类型。通过检测敌意、抢包和破坏公物等微小犯罪,该系统不仅可以识别破坏公物和事故等不寻常的乘客行为,还可以提高乘客的安全性。该解决方案在各种用例和环境设置中表现出色。
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Deep Learning Algorithms in Mobile Edge with Real-Time Abnormal Event Detection for 5G-IoT Devices
IoT is becoming increasingly popular due to its quick expansion and variety of applications. In addition, 5G technology helps with communication and network connectivity. This work integrates C-RAN with IoT networks to provide an experimental 5G testbed. In a 5G IoT environment, this experience is utilized to enhance both perpendicular and flat localization (3D localization). DRCaG, an acronym for the proposed model, stands for a deep, complicated network with a gated layer on top. The performance of the proposed model has been demonstrated through extensive simulations in terms of learning reduction, accuracy, and matrix disorientation, with a variable signal-to-noise ratio (SNR) spanning from 20 dB to + 20 dB, which illustrates the superiority of DRCaG compared to others. An online, end-to-end solution based on deep learning techniques is presented in this study for the fast, precise, reliable, and automatic detection of diverse petty crime types. By detecting tiny crimes like hostility, bag snatching, and vandalism, the suggested system may not only identify unusual passenger behavior like vandalism and accidents but also improve passenger security. The solution performs admirably in a variety of use cases and environmental settings.
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来源期刊
International Journal of Interactive Mobile Technologies
International Journal of Interactive Mobile Technologies Computer Science-Computer Networks and Communications
CiteScore
5.20
自引率
0.00%
发文量
250
审稿时长
8 weeks
期刊介绍: This interdisciplinary journal focuses on the exchange of relevant trends and research results and presents practical experiences gained while developing and testing elements of interactive mobile technologies. It bridges the gap between pure academic research journals and more practical publications. So it covers the full range from research, application development to experience reports and product descriptions. Fields of interest include, but are not limited to: -Future trends in m-technologies- Architectures and infrastructures for ubiquitous mobile systems- Services for mobile networks- Industrial Applications- Mobile Computing- Adaptive and Adaptable environments using mobile devices- Mobile Web and video Conferencing- M-learning applications- M-learning standards- Life-long m-learning- Mobile technology support for educator and student- Remote and virtual laboratories- Mobile measurement technologies- Multimedia and virtual environments- Wireless and Ad-hoc Networks- Smart Agent Technologies- Social Impact of Current and Next-generation Mobile Technologies- Facilitation of Mobile Learning- Cost-effectiveness- Real world experiences- Pilot projects, products and applications
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