Montiel Edgar Romo, Rivero-Angeles Mario E, Rubino Gerardo, Molina-Lozano Heron, Menchaca-Mendez Rolando, Menchaca-Mendez Ricardo
Instituto Politécnico Nacional-(CIC-IPN), Mexico City 07738, Mexico.
INRIA Rennes-Bretagne Atlantique, Campus Universitaire de Beaulieu, 35042 Rennes CEDEX, France.
Sensors (Basel). 2017 Dec 13;17(12):2902. doi: 10.3390/s17122902.
Clustered-based wireless sensor networks have been extensively used in the literature in order to achieve considerable energy consumption reductions. However, two aspects of such systems have been largely overlooked. Namely, the transmission probability used during the cluster formation phase and the way in which cluster heads are selected. Both of these issues have an important impact on the performance of the system. For the former, it is common to consider that sensor nodes in a clustered-based Wireless Sensor Network (WSN) use a fixed transmission probability to send control data in order to build the clusters. However, due to the highly variable conditions experienced by these networks, a fixed transmission probability may lead to extra energy consumption. In view of this, three different transmission probability strategies are studied: optimal, fixed and adaptive. In this context, we also investigate cluster head selection schemes, specifically, we consider two intelligent schemes based on the fuzzy C-means and k-medoids algorithms and a random selection with no intelligence. We show that the use of intelligent schemes greatly improves the performance of the system, but their use entails higher complexity and selection delay. The main performance metrics considered in this work are energy consumption, successful transmission probability and cluster formation latency. As an additional feature of this work, we study the effect of errors in the wireless channel and the impact on the performance of the system under the different transmission probability schemes.
基于簇的无线传感器网络在文献中已被广泛使用,以实现可观的能耗降低。然而,此类系统的两个方面在很大程度上被忽视了。即,簇形成阶段使用的传输概率以及簇头的选择方式。这两个问题都对系统性能有重要影响。对于前者,通常认为基于簇的无线传感器网络(WSN)中的传感器节点使用固定传输概率来发送控制数据以构建簇。然而,由于这些网络经历的条件高度可变,固定传输概率可能导致额外的能量消耗。有鉴于此,研究了三种不同的传输概率策略:最优、固定和自适应。在此背景下,我们还研究了簇头选择方案,具体而言,我们考虑了基于模糊C均值和k-中心点算法的两种智能方案以及无智能的随机选择。我们表明,使用智能方案大大提高了系统性能,但它们的使用带来了更高的复杂度和选择延迟。这项工作中考虑的主要性能指标是能耗、成功传输概率和簇形成延迟。作为这项工作的一个附加特征,我们研究了无线信道中的错误影响以及在不同传输概率方案下对系统性能的影响。