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Critical Location Spatial-Temporal Coverage Optimization in Visual Sensor Network

机译:视觉传感器网络中关键位置的时空覆盖优化

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摘要

Coverage and network lifetime are two fundamental research issues in visual sensor networks. In some surveillance scenarios, there are some critical locations that demand to be monitored within a designated period. However, with limited sensor nodes resources, it may not be possible to meet both coverage and network lifetime requirements. Therefore, in order to satisfy the network lifetime constraint, sometimes the coverage needs to be traded for network lifetime. In this paper, we study how to schedule sensor nodes to maximize the spatial-temporal coverage of the critical locations under the constraint of network lifetime. First, we analyze the sensor node scheduling problem for the spatial-temporal coverage of the critical locations and establish a mathematical model of the node scheduling. Next, by analyzing the characteristics of the model, we propose a Two-phase Spatial-temporal Coverage-enhancing Method (TSCM). In phase one, a Particle Swarm Optimization (PSO) algorithm is employed to organize the directions of sensor nodes to maximize the number of covered critical locations. In the second phase, we apply a Genetic Algorithm (GA) to get the optimal working time sequence of each sensor node. New coding and decoding strategies are devised to make GA suitable for this scheduling problem. Finally, simulations are conducted and the results show that TSCM has better performance than other approaches.
机译:覆盖范围和网络寿命是视觉传感器网络中的两个基本研究问题。在某些监视方案中,有些关键位置需要在指定时间段内进行监视。但是,在传感器节点资源有限的情况下,可能无法同时满足覆盖范围和网络寿命要求。因此,为了满足网络生存期约束,有时需要将覆盖范围换成网络生存期。在本文中,我们研究如何在网络寿命的约束下调度传感器节点以最大化关键位置的时空覆盖范围。首先,我们分析了关键位置的时空覆盖的传感器节点调度问题,并建立了节点调度的数学模型。接下来,通过分析模型的特征,我们提出了一种两阶段的时空覆盖增强方法(TSCM)。在第一阶段,采用粒子群优化(PSO)算法来组织传感器节点的方向,以最大化覆盖的关键位置的数量。在第二阶段,我们应用遗传算法(GA)来获取每个传感器节点的最佳工作时间序列。设计了新的编码和解码策略以使GA适用于此调度问题。最后,进行了仿真,结果表明TSCM具有比其他方法更好的性能。

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