利用物联网进行多媒体数据传输的自适应 RPL 路由优化模型

P. K. Shashidhar, T. C. Thanuja, Rajashekar Kunabeva
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引用次数: 0

摘要

研究目标这项研究工作的主要目标包括开发自适应 RPL 优化(ARPLO)模型,以提高物联网网络内的数据传输效率。这包括构建基于网格的网络结构,优化数据传输;选择最合适的节点作为网格头节点,最大限度地延长网络寿命,同时最大限度地降低能耗;实施创新的目标函数驱动方法,优化父节点选择;集成自适应深度神经网络(ADNN),对医疗数据进行精确分类。研究方法研究方法包括几个关键步骤。通过物联网节点和根节点建立基于网格的网络结构,利用包含 DIO 消息的 DODAG 流程进行节点排序。为提高能效,采用 Trickle 算法对控制信息进行优化。网格头节点的选择基于根节点公平性、剩余能量和负载影响指数等指标。利用新颖的中阶最优路由(MOOR)目标函数来优化路由决策。ADNN 用于精确的医疗数据分类。通过在 Python 环境中进行仿真,对所提出模型的性能进行了评估。研究结果研究结果表明,与现有模型相比,ARPLO 模型具有显著优势。它实现了更高的能效、更好的吞吐量、更高的数据包交付率 (PDR),并延长了网络寿命。Trickle 算法有助于实现高效的控制信息优化。基于 MOOR 的路由方法改进了多媒体医疗数据传输。此外,ADNN 的集成提高了数据分类的准确性,尤其是在医疗保健应用中。研究成果与更广泛领域的现有价值和报告相一致,同时提供了有助于增强现有知识库的新见解。ARPLO 协议的性能表明,吞吐量提高了 31.2%,PDR 提高了 7.12%,寿命提高了 10.7%,能耗降低了 12.72%,控制开销降低了 31.01%,端到端延迟降低了 33.01%。新颖性:这项研究的新颖性在于其综合方法,它整合了基于网格的网络结构、基于 MOOR 的优化和基于 ADNN 的分类。采用 Trickle 算法实现高能效通信是一项创新。网格头节点选择新指标的引入,以及 MOOR 目标函数在多媒体医疗数据路由中的应用,展示了该研究的创新贡献。关键词:物联网物联网(IoT)、RPL(低功耗和有损网络路由协议)、优化、路由、多媒体、医疗保健
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Adaptive RPL Routing Optimization Model for Multimedia Data Transmission using IOT
Objectives: The main objectives of this research endeavor encompass the development of the Adaptive RPL Optimization (ARPLO) model to enhance data transmission efficiency within IoT networks. This includes constructing a grid-based network structure optimized for data transfer, selecting the most suitable nodes as grid head nodes to maximize network lifespan while minimizing energy consumption, implementing an innovative objective function-driven approach to optimize parent node selection, and integrating an Adaptive Deep Neural Network (ADNN) to accurately classify medical data. Methods: The research methodology entails several key steps. A grid-based network structure is established with IoT nodes and root nodes, where a DODAG process incorporating DIO messages is utilized for node ranking. To enhance energy efficiency, the Trickle algorithm is employed for control message optimization. Grid head nodes are chosen based on metrics such as root node fairness, residual energy, and load influence index. The novel Middle Order Optimal Routing (MOOR) objective function is utilized to optimize routing decisions. ADNN is implemented for precise medical data classification. The proposed model's performance is evaluated through simulation in a Python environment. Findings: The research findings demonstrate that the ARPLO model yields notable benefits compared to existing models. It achieves higher energy efficiency, improved throughput, enhanced packet delivery ratio (PDR), and an extended network lifespan. The Trickle algorithm contributes to efficient control message optimization. The MOOR-based routing approach improves multimedia medical data transfer. Moreover, the integration of ADNN enhances the accuracy of data classification, particularly in healthcare applications. The research outcomes align with the broader field's existing values and reports while offering novel insights that contribute to enhancing the existing knowledge base. ARPLO protocol performance reveals that there is increase of throughput of 31.2%, PDR by 7.12%, lifetime of 10.7 % with reduction of energy consumption by 12.72%, control overhead by 31.01% and end-to-end delay by 33.01%. Novelty: The novelty of this research lies in its comprehensive approach that integrates a grid-based network structure, MOOR-based optimization, and ADNN-based classification. The incorporation of the Trickle algorithm for energy-efficient communication is an innovative feature. The introduction of new metrics for grid head node selection, along with the application of the MOOR objective function for multimedia medical data routing, showcases the research's innovative contributions. Keywords: Internet of Things (IoT), RPL (Routing Protocol for Low­Power and Lossy Networks), Optimization, Routing, Multimedia, Healthcare
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