ACoCo:一种提高物联网CoAP性能的自适应拥塞控制方法

J. Jayaudhaya, S. Supriya, Vijay Anand Kandaswamy, Samuthira Pandi V, S. Kamatchi, C. P. Priya
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引用次数: 1

摘要

工业物联网(IIoT)需要实时传输关键数据,以确保功能并防止危险情况的发生。然而,目前6TiSCH网络的数据传输调度方法并不能有效地根据其临界性和性能要求来处理异构流量,可能导致违反时序限制。为了解决这个问题,本文提出了ACoCo,一种针对CoAP的自适应拥塞控制方法,它使用强化学习技术根据实时网络条件、节点行为和流量模式动态适应拥塞控制参数。仿真结果表明,ACoCo在减少端到端交易延迟和提高拥塞网络条件下的交易交付率方面是有效的,为物联网网络优化设计提供了有价值的见解。ACoCo在6TiSCH网络架构内有效运行,同时考虑到网络的调度功能和通信需求。
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ACoCo: An Adaptive Congestion Control Approach for Enhancing CoAP Performance in IoT Network
The Industrial Internet of Things (IIoT) requires the real-time transmission of critical data to ensure functionality and prevent hazardous situations. However, current data transmission scheduling methods in 6TiSCH networks do not efficiently handle heterogeneous traffic based on its criticality and performance requirements, potentially leading to violations of timing limits. To address this issue, this paper proposes ACoCo, an Adaptive Congestion Control approach for CoAP that uses reinforcement learning techniques to dynamically adapt congestion control parameters based on real-time network conditions, node behaviors, and traffic patterns. Simulation results demonstrate ACoCo's effectiveness in reducing end-to-end transaction delay and improving transaction delivery ratio under congested network conditions, providing valuable insights for IoT network optimization and design. ACoCo operates effectively within the 6TiSCH network architecture, taking into account the scheduling function and communication requirements of the network.
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