Cross-correlation based approach of underwater network cardinality estimation with random placement of sensors

H. H. Raton, S. Chowdhury, M. Rana, M. S. Anower, Shaik Asif Hossain, M. Sarkar
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引用次数: 1

Abstract

Cardinality estimation is a major concern for proper network operation and maintenance. Cardinality estimation of a network can be performed using protocol based techniques. But, underwater environment makes these protocol based methods inefficient in underwater network. To solve this problem, underwater network cardinality has been estimated using cross-correlation of the received Gaussian signals at multiple sensors. In cross-correlation based approach, the sensors are placed at the centre of the network for better estimation performance. This may not be possible in some practical cases. So, it is essential to introduce a new cardinality estimation technique which is equally effective for both central and random placement of sensors. In this paper, cardinality estimation is performed with central and random placement of sensors within the network which make the estimation process more flexible. It is observed from the investigation that, efficient estimation is possible with and without central placement of the sensors.
传感器随机放置水下网络基数估计的互相关方法
基数估计是正确的网络操作和维护的一个主要问题。网络的基数估计可以使用基于协议的技术来执行。但是,水下环境使得这些基于协议的方法在水下网络中效率低下。为了解决这一问题,利用多个传感器接收到的高斯信号的互相关估计了水下网络的基数。在基于互相关的方法中,传感器被放置在网络的中心以获得更好的估计性能。在某些实际情况下,这可能是不可能的。因此,有必要引入一种新的基数估计技术,该技术对传感器的中心位置和随机位置都同样有效。在本文中,通过在网络中中心和随机放置传感器来进行基数估计,使估计过程更加灵活。从研究中观察到,无论是否将传感器放置在中心位置,都可以进行有效的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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