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Learning Automata-Based Algorithms for Solving the Target Coverage Problem in Directional Sensor Networks

机译:基于自动机的学习算法,解决定向传感器网络中的目标覆盖问题

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Recently, directional sensor networks have received a great deal of attention due to their wide range of applications in different fields. A unique characteristic of directional sensors is their limitation in both sensing angle and battery power, which highlights the significance of covering all the targets and, at the same time, extending the network lifetime. It is known as the target coverage problem that has been proved as an NP-complete problem. In this paper, we propose four learning automata-based algorithms to solve this problem. Additionally, several pruning rules are designed to improve the performance of these algorithms. To evaluate the performance of the proposed algorithms, several experiments were carried out. The theoretical maximum was used as a baseline to which the results of all the proposed algorithms are compared. The obtained results showed that the proposed algorithms could solve efficiently the target coverage problem.
机译:近年来,定向传感器网络由于其在不同领域中的广泛应用而受到了广泛的关注。定向传感器的独特之处在于它们在检测角度和电池电量方面的局限性,突出了覆盖所有目标并同时延长网络寿命的重要性。它被称为目标覆盖问题,已被证明是NP完全问题。在本文中,我们提出了四种基于自动机的学习算法来解决这个问题。此外,还设计了一些修剪规则以提高这些算法的性能。为了评估所提出算法的性能,进行了几次实验。将理论最大值用作比较所有提议算法的结果的基准。所得结果表明,所提算法能够有效解决目标覆盖问题。

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