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A Dynamic Approach to Sensor Network Deployment for Mobile-Target Detection in Unstructured, Expanding Search Areas

机译:在非结构化,扩展搜索区域中用于移动目标检测的传感器网络部署的动态方法

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This paper proposes a novel strategy for the deployment of a static-sensor network based on the use of a target-motion probability model. The focus is on the real-time dynamic and optimal deployment of the network for detecting untrackable targets. The dynamic nature of the deployment refers to the on-line reconfigurability of the network as real-time information about the target becomes available. The optimal locations of the network nodes, in turn, are determined based on maximizing the probability of finding the target through the use of iso-cumulative-probability curves. The proposed strategy is adaptable to unstructured environments with natural terrain variation and the presence of obstacles. Extensive simulations, some of which are included in this paper, verified the advantage of our deployment strategy over other existing methods. Namely, the proposed strategy can tangibly increase the success rate of target detection, while reducing the mean detection time, when compared with uniform-coverage-based approaches that do not consider probabilistic target-motion modeling. A comprehensive example is also included, herein, to illustrate the successful application of our proposed deployment strategy to a wilderness search and rescue scenario, where both static and mobile sensors are employed within a hybrid sensor-deployment strategy.
机译:本文提出了一种基于目标运动概率模型的静态传感器网络部署新策略。重点是用于检测不可追踪目标的网络的实时动态和最佳部署。部署的动态性质是指当有关目标的实时信息可用时,网络的在线可重新配置性。反过来,网络节点的最佳位置是根据通过使用等累积概率曲线找到目标的概率最大化来确定的。所提出的策略适用于自然地形变化且存在障碍物的非结构化环境。广泛的模拟(包括本文中的一些模拟)证明了我们的部署策略相对于其他现有方法的优势。即,与不考虑概率目标运动模型的基于统一覆盖的方法相比,所提出的策略可以切实地提高目标检测的成功率,同时减少平均检测时间。本文还包括一个综合示例,以说明我们提出的部署策略在野外搜索和救援场景中的成功应用,在该场景中,混合传感器部署策略中同时使用了静态传感器和移动传感器。

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