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A cellular learning automata-based deployment strategy for mobile wireless sensor networks

机译:基于蜂窝学习自动机的移动无线传感器网络部署策略

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One important problem which may arise in designing a deployment strategy for a wireless sensor network is how to deploy a specific number of sensor nodes throughout an unknown network area so that the covered section of the area is maximized. In a mobile sensor network, this problem can be addressed by first deploying sensor nodes randomly in some initial positions within the area of the network, and then letting sensor nodes to move around and find their best positions according to the positions of their neighboring nodes. The problem becomes more complicated if sensor nodes have no information about their positions or even their relative distances to each other. In this paper, we propose a cellular learning automata-based deployment strategy which guides the movements of sensor nodes within the area of the network without any sensor to know its position or its relative distance to other sensors. In the proposed algorithm, the learning automaton in each node in cooperation with the learning automata in the neighboring nodes controls the movements of the node in order to attain high coverage. Experimental results have shown that in noise-free environments, the proposed algorithm can compete with the existing algorithms such as PF, DSSA, IDCA, and VEC in terms of network coverage. It has also been shown that in noisy environments, where utilized location estimation techniques such as GPS-based devices and localization algorithms experience inaccuracies in their measurements, or the movements of sensor nodes are not perfect and follow a probabilistic motion model, the proposed algorithm outperforms the existing algorithms in terms of network coverage.
机译:在设计用于无线传感器网络的部署策略时可能出现的一个重要问题是如何在整个未知网络区域中部署特定数量的传感器节点,以使该区域的覆盖区域最大化。在移动传感器网络中,可以通过首先在网络区域内的某些初始位置随机部署传感器节点,然后让传感器节点四处移动并根据其相邻节点的位置找到最佳位置来解决此问题。如果传感器节点不知道有关其位置甚至彼此的相对距离的信息,问题将变得更加复杂。在本文中,我们提出了一种基于蜂窝学习自动机的部署策略,该策略可指导传感器区域在网络区域内的移动,而无需任何传感器知道其位置或与其他传感器的相对距离。在提出的算法中,每个节点中的学习自动机与相邻节点中的学习自动机协同控制节点的移动,以实现高覆盖率。实验结果表明,在无噪声的环境下,该算法在网络覆盖范围上可以与现有的算法如PF,DSSA,IDCA和VEC竞争。还表明,在嘈杂的环境中,所使用的位置估计技术(例如基于GPS的设备和定位算法)在测量中会出现误差,或者传感器节点的运动不够完美,并且遵循概率运动模型,因此所提出的算法的性能优于现有的网络覆盖算法。

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