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首页> 外文期刊>Journal of network and computer applications >Unknown hostile environment-oriented autonomous WSN deployment using a mobile robot
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Unknown hostile environment-oriented autonomous WSN deployment using a mobile robot

机译:使用移动机器人的未知敌对环境型自动WSN部署

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In this study, we consider the Internet of Things (IoT) with an autonomous deployment framework and seek optimal localizable k-coverage (OLKC) strategies to preserve the connectivity and robustness in IoT networks to assist robots during disaster recovery activities. Therefore, we define localizable k-coverage as the covered region within which a mobile robot can localize itself aided by k neighboring beacon nodes (BNs) in a wireless sensor network (WSN). To this end, we first propose the optimal localizable k-coverage WSN deployment problem (OLKWDP) and present a novel framework that preserves WSN connectivity and robustness for mobile robots. To localize a mobile robot with at least k BNs and overcome the network hole problem that can occur in unknown hostile environments, we propose a hole recovery method for the OLKC achieved by a mobile robot that knows the concurrent mapping, deployment and localization of the WSN. We then present a mapping-to-image transformation method to reveal the interactions between the WSN deployment and the network holes for the OLKC while constructing the online mapping. To solve the OLKWDP, we also develop two optimality conditions to achieve maximum coverage by the proposed OLKC in the unknown hostile environment using the minimum number of sensors. Moreover, we analyze the factors that influence the probability of success of the OLKC and the factors that influence the performance of a mobile robot when determining the WSN deployment. The simulation results illustrate that our framework outperforms the trilateration and spanning tree (TST) method in unknown hostile environment exploration and can achieve the OLKC in a WSN. In 27 simulated situations, our framework achieved average rates of nearly 100% 1-coverage, 91.34% 2-coverage and 89.00% 3-coverage.
机译:在这项研究中,我们考虑与自主部署框架的东西互联网(物联网),并寻求最佳的可定位k-coverage(olkc)策略,以保留IoT网络中的连接和稳健性,以帮助在灾难恢复活动中提供机器人。因此,我们将可本地化的K覆盖定义为覆盖区域,移动机器人可以在无线传感器网络(WSN)中的K相邻信标节点(BNS)本身辅助。为此,我们首先提出了最佳的本地化k覆盖WSN部署问题(OLKWDP)并呈现了一种新颖的框架,可以保留移动机器人的WSN连接和鲁棒性。为了将移动机器人本地化至少k个BNS并克服可能发生在未知的敌对环境中的网络孔问题,我们向OLKC提出了一个由移动机器人实现的OLKC的孔恢复方法,该方法是了解WSN的并发映射,部署和本地化。然后,我们呈现映射到图像转换方法,以在构建在线映射时揭示OLKC的WSN部署和网络孔之间的交互。为了解决OLKWDP,我们还开发了两个最优性的条件,以利用最小数量的传感器在未知的敌对环境中实现所提出的OLKC的最大覆盖范围。此外,我们分析了影响OLKC成功概率的因素以及在确定WSN部署时影响移动机器人性能的因素。仿真结果表明,我们的框架在未知的敌对环境探索中优于三边形和生成树(TST)方法,可以在WSN中实现OLKC。在27个模拟情境中,​​我们的框架实现了近100%的平均速率1 - 覆盖率,91.34%2 - 覆盖率和89.00%3覆盖率。

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