根据无线电传感器网络随机传播合同调整的传输能力

Bassim Ali Oumran, Muhammad Abdullah Rastanawi Bassim Ali Oumran, Muhammad Abdullah Rastanawi
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引用次数: 0

摘要

无线传感器节点通常随机部署在恶劣、恶劣和难以进入的环境中。因此,传感器节点应该在没有人为干预的情况下长时间运行,以尽可能延长网络的使用寿命,并且节点部署后不可能恢复或改变其位置,但通过改变发射功率级别,在部署之前的基础上重新部署一个新的节点,从而提高网络性能,并保证部署的节点不会丢失。我们也保证了网络的整体运行。研究人员提出了一种“根据随机部署的自适应传输功率水平(ATPLRD)”算法,该算法包括确定相对于随机部署的功率水平和识别网络中可能的路径,以达到节点之间的高度互连,实现节点在最低的能量水平下发布的节点数量最少;并确定网络中退出或失效导致网络崩溃的最重要节点,确定网络的边界节点,以及代表网络间隙的最弱覆盖区域,并由此确定在这些间隙内需要部署的节点数量尽可能少。研究结果表明,该算法在上述各方面都是有效的,本研究的重点是自适应确定节点的传输能级,减少使网络有效运行的部署节点数量,并通过在感兴趣区域内部署额外的节点来提高部署质量。结果表明,在最低的传输功率水平下实现了最少的部署节点数,实现了节点间的高度互联。总能耗下降31.25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive transmission power level algorithm according to random deployment of nodes in WSN: خوارزمية سوية طاقة الإرسال المتكيفة حسب النشر العشوائي للعقد في شبكات الحساسات اللاسلكية
Wireless sensor nodes are generally deployed randomly in hostile, harsh and inaccessible environments. For this reason, the sensor nodes are supposed to operate over long periods of time without human intervention in order to extend the life of the network as much as possible, and also, it is not possible to restore the nodes or change their positions after their deployment, but by changing the transmitting power level and redeploying a new nodes above the deployment Previously, the network performance improves and we guarantee that the deployed nodes are not lost, and we also guarantee the operation of the network as a whole. The researcher has developed an algorithm "Adaptive transmission power level according to random deployment (ATPLRD)", where the presented algorithm includes determining the power levels relative to random deployment and identifying possible paths in the network in order to reach high interconnection between nodes to achieve the least number of published nodes at the lowest energy levels for the nodes, and also determines the most important nodes in the network whose exit or failure leads to the collapse of the network, and determining The boundary nodes of the network, as well as the weakest coverage areas, which represent gaps in the network, and from it determines the number of nodes needed to deploy within these gaps as few as possible. The results of the study showed that the imposed algorithm is effective in all of the above, and we focus in this research on adaptively determining the transmission energy levels of the nodes and reducing the number of deployed nodes that make the network work effectively and improving the quality of deployment by deploying additional nodes within the Reigon of Interest. The results showed achieving the least number of deployed nodes at the lowest transmission power level and achieving high interconnection between nodes. An overall energy consumption improvement of 31.25% was achieved.
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