Maximizing network efficiency by optimizing channel allocation in wireless body area networks using machine learning techniques

IF 0.5 Q4 TELECOMMUNICATIONS Internet Technology Letters Pub Date : 2023-07-11 DOI:10.1002/itl2.458
V. Chandra Shekhar Rao, M. Shanmathi, M. Rajkumar, S.L.A. Haleem, V. Amirthalingam, A. Vanathi
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Abstract

Machine learning (ML) based optimization algorithms have been applied in Wireless Body Area Networks (WBANs) for IoT health care to improve network performance. These algorithms can be used for various purposes, such as Channel allocation, Quality of service, Energy optimization, and Fault tolerance. Using a Q-learning algorithm in WBANs can help improve the accuracy and efficiency of IoT healthcare systems, leading to better patient outcomes. The learning rate of the Q-learning is enhanced by utilizing the Adagrad ALR optimizer. Q-learning with Adagrad ALR optimizer-based channel allocation can be used to optimize channel allocation by considering factors such as network congestion, link quality, and node power constraints by optimizing channel allocation. It will improve the performance of WBANs, leading to faster and more reliable medical data transmission. The proposed Q-learning with Adagrad ALR optimizer algorithm dynamically adjusts channel allocation in real-time based on changing network conditions, leading to more efficient use of available channels. In addition to improving network performance, ALR-based channel allocation can help extend battery life and reduce energy consumption in WBANs. By optimizing the use of available channels dynamically, ALR algorithms can help reduce the amount of energy consumed by the network, leading to longer battery life and reduced costs associated with IoT healthcare systems. To validate the performance of the proposed Q-learning with the Adagrad ALR optimizer method, the simulation results were compared with the three existing channel allocation mechanisms such as the Q-learning method, PEH quality of service, and the Clustering algorithm in terms of throughput, delay, and energy efficiency. The energy efficiency of the proposed algorithm gets enhanced by 17% when compared with the other three algorithms.

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利用机器学习技术优化无线体域网络中的信道分配,实现网络效率最大化
基于机器学习(ML)的优化算法已应用于物联网医疗的无线体域网络(wban),以提高网络性能。这些算法可用于各种目的,如信道分配、服务质量、能源优化和容错。在wban中使用q学习算法可以帮助提高物联网医疗保健系统的准确性和效率,从而改善患者的治疗效果。利用Adagrad ALR优化器提高了q学习的学习率。基于Adagrad ALR优化器的信道分配Q-learning可以通过优化信道分配来考虑网络拥塞、链路质量、节点功率约束等因素来优化信道分配。它将提高wban的性能,实现更快、更可靠的医疗数据传输。本文提出的基于Adagrad ALR优化算法的Q-learning可以根据不断变化的网络条件实时动态调整信道分配,从而更有效地利用可用信道。除了提高网络性能外,基于alr的信道分配还有助于延长电池寿命并降低wban的能耗。通过动态优化可用通道的使用,ALR算法可以帮助减少网络消耗的能量,从而延长电池寿命并降低与物联网医疗保健系统相关的成本。为了验证采用Adagrad ALR优化器方法的Q-learning的性能,将仿真结果与现有的三种信道分配机制(Q-learning方法、PEH服务质量和Clustering算法)在吞吐量、延迟和能量效率方面进行了比较。与其他三种算法相比,该算法的能效提高了17%。
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