提高无线传感器网络链路可靠性的深度神经网络算法

K. Bhaskar, T. Kumanan, S. Sree Southry., Vetrimani Elangovan
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引用次数: 0

摘要

无线传感器网络(WSN)的特点是规模、动态性和分散性。这些复杂的特性引起了各种各样的问题,其中之一就是无线通信对网络效率和用于路由的协议的影响。链路可靠性预测方法可以在防止弱连接的同时提高无线传感器网络路由算法的效率。该方法引入了一种深度神经网络算法来提高无线传感器网络的链路可靠性。采用深度神经网络(Deep neural network, DNN)算法对节点接收信号强度(Received Signal Strength)、可用带宽(available bandwidth)、时延(delay)、接收包速率(packet Received rate)等输入参数进行评估,计算链路可靠性输出。可用带宽参数用于识别有效的数据传输路径。实验结果表明,与传统机制相比,DILR机制提高了节点间链路的可靠性,降低了路由开销。
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Deep Neural Network Algorithm to Improve Link Reliability in Wireless Sensor Networks
Wireless Sensor Network (WSN) is distinguished by size, dynamism, and decentralization. These complicated properties give rise to various problems, one of which is the impact of wireless communications on the efficiency of networks and the protocols used for routing. The prediction methods of link reliability can boost the efficiency of the routing algorithms used in WSNs while preventing weak connections. This approach introduces a Deep neural network algorithm to improve link reliability (DILR) in WSN. A Deep neural network (DNN) algorithm is used to evaluate the input parameters like node Received Signal Strength, available bandwidth, delay, and packet received rate parameters for calculating the link reliability output. The available bandwidth parameter recognizes the efficient data transmitting path. The experimental outcomes illustrate that the DILR mechanism improves the link reliability among nodes and reduces routing overhead compared to the conventional mechanism.
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