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Exact and Heuristic Algorithms for Data-Gathering Cluster-Based Wireless Sensor Network Design Problem

机译:基于数据收集集群的无线传感器网络设计问题的精确启发式算法

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Data-gathering wireless sensor networks (WSNs) are operated unattended over long time horizons to collect data in several applications such as those in climate monitoring and a variety of ecological studies. Typically, sensors have limited energy (e.g., an on-board battery) and are subject to the elements in the terrain. In-network operations, which largely involve periodically changing network flow decisions to prolong the network lifetime, are managed remotely, and the collected data are retrieved by a user via internet. In this paper, we study an integrated topology control and routing problem in cluster-based WSNs. To prolong network lifetime via efficient use of the limited energy at the sensors, we adopt a hierarchical network structure with multiple sinks at which the data collected by the sensors are gathered through the clusterheads (CHs). We consider a mixed-integer linear programming (MILP) model to optimally determine the sink and CH locations as well as the data flow in the network. Our model effectively utilizes both the position and the energy-level aspects of the sensors while selecting the CHs and avoids the highest-energy sensors or the sensors that are well-positioned sensors with respect to sinks being selected as CHs repeatedly in successive periods. For the solution of the MILP model, we develop an effective Benders decomposition (BD) approach that incorporates an upper bound heuristic algorithm, strengthened cuts, and an $varepsilon$ -optimal framework for accelerated convergence. Computational evidence demonstrates the efficiency of the BD approach and the heuristic in terms of solution quality and time.
机译:数据收集无线传感器网络(WSN)长时间无人值守,可在多种应用(例如气候监测和各种生态研究)中收集数据。通常,传感器的能量有限(例如,车载电池),并且会受到地形中元素的影响。远程管理网络内操作,该操作主要涉及定期更改网络流量决策以延长网络寿命,并且用户可以通过Internet检索收集的数据。在本文中,我们研究了基于集群的WSN中的集成拓扑控制和路由问题。为了通过有效利用传感器上的有限能量来延长网络寿命,我们采用了具有多个接收器的分层网络结构,在该网络结构中,通过簇头(CH)收集传感器收集的数据。我们考虑使用混合整数线性规划(MILP)模型来最佳地确定接收器和CH位置以及网络中的数据流。我们的模型在选择CH时有效地利用了传感器的位置和能级方面,并避免了在连续的时间段内反复选择相对于汇的能量最高的传感器或位置正确的传感器作为CH。对于MILP模型的解决方案,我们开发了一种有效的Benders分解(BD)方法,该方法结合了上限启发式算法,增强的割据和用于加速收敛的$ varepsilon $最佳框架。计算证据证明了BD方法的效率以及启发式方法在解决方案质量和时间方面的优势。

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