使用学习自动机的能量平衡聚类方法

Batool Abadi Khasragi
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引用次数: 0

摘要

不断增加的小型化和传感器通信能力使它们不可见,并扩大了随时随地的可用性。传感器网络应用的挑战性加大,相关的网络协议设计问题也随之出现。其中之一是提高网络的能源效率和使用寿命。传感器节点的能量储备有限,因此网络必须以最小的能量开销运行。本文的主要目标是通过使用能量平衡来减少能源浪费,从而在状态下通过节点的节能安排来提高网络的生命周期。因此,学习自动机的能力——在传感器网络中解决问题是合适的。为此,提出了基于学习自动机的能量平衡聚类技术,学习自动机驻留在簇头中,根据剩余能量选择最佳节点作为新的簇头进行平衡。利用NS2仿真器对所提出的仿真技术进行了评价。结果表明,计算出的能量平衡大大提高了传感器网络的寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy balanced clustering method with use of learning automata
Increasing miniaturization and sensor communication abilities make them invisible and expand the availability everywhere in any time. Sensor network applications, increase the challenging issues related to design network protocols have emerged. One of them is increasing energy efficiency and lifetime in the network. Sensor nodes with limited energy reserves are deployed, so the network must operate with minimal energy overhead. This article focuses on improving the network lifetime by using energy efficient arrangement of nodes in a state primary goal to reduce energy waste with using energy balance. Therefore, learning automata capabilities — to solve issues in sensor networks is appropriate is used. For the purpose mentioned above, energy balanced clustering technique based on learning automata is proposed that learning automata residing in the cluster head, for balance the best node is selected according to the amount of energy remaining as the new cluster head. Proposed technique with the NS2 simulator to simulate the behavior is evaluated. Results show that the calculated energy balance improves the life time of sensor network substantially.
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