首页> 外文期刊>Computer networks >Two and three-dimensional intrusion object detection under randomized scheduling algorithms in sensor networks
【24h】

Two and three-dimensional intrusion object detection under randomized scheduling algorithms in sensor networks

机译:传感器网络中基于随机调度算法的二维和三维入侵目标检测

获取原文
获取原文并翻译 | 示例

摘要

We are interested in wireless sensor networks which are used to detect intrusion objects such as enemy tanks, cars, submarines, etc. Since sensor nodes have a limited energy supply, sensor networks are configured to put some sensor nodes in sleep mode to save energy. This is a special case of a randomized scheduling algorithm. Ignored by many studies, an intrusion object's size and shape are important factors that greatly affect the performance of sensor networks. For example, an extremely large object in a small sensor field can easily be detected by even one sensor node, no matter where the sensor node is deployed. The larger an intrusion object is, the fewer sensor nodes that are required for detection. Furthermore, using fewer sensor nodes can save resources and reduce the waste of dead sensor nodes in the environment. Therefore, studying coverage based on intrusion object's size is important. In this paper, we study the performance of the randomized scheduling algorithm via both analysis and simulation in terms of intrusion coverage intensity. In particular, we study cases where intrusion objects occupy areas in a two-dimensional plane and where intrusion objects occupy areas in a three-dimensional space, respectively. We also study the deployment of sensor nodes when intrusion objects are of different sizes and shapes. First, sensor nodes are deployed in a two-dimensional plane and a three-dimensional space with uniform distributions. Then, they are deployed in a two-dimensional plane and a three-dimensional space in two-dimensional and three-dimensional Gaussian distributions, respectively. Therefore, our study not only demonstrates the impact of the size and shape of intrusion objects on the performance of sensor networks, but also provides a guideline on how to configure sensor networks to meet a certain detecting capability in more realistic situations.
机译:我们对用于检测入侵物体(例如敌方坦克,汽车,潜艇等)的无线传感器网络感兴趣。由于传感器节点的能量供应有限,因此传感器网络配置为将某些传感器节点置于睡眠模式以节省能量。这是随机调度算法的特例。许多研究忽略了入侵对象的大小和形状是重要影响传感器网络性能的重要因素。例如,无论传感器节点部署在哪里,即使在一个传感器节点上,也可以轻松地在一个较小的传感器区域中检测到极大的物体。入侵对象越大,检测所需的传感器节点越少。此外,使用较少的传感器节点可以节省资源并减少环境中失效的传感器节点的浪费。因此,研究基于入侵对象大小的覆盖范围非常重要。在本文中,我们通过分析和仿真研究了入侵调度强度方面的随机调度算法的性能。特别是,我们研究了入侵对象分别占据二维平面中的区域和入侵对象占据三维空间中的区域的情况。当入侵对象具有不同的大小和形状时,我们还将研究传感器节点的部署。首先,将传感器节点部署在具有均匀分布的二维平面和三维空间中。然后,它们分别以二维和三维高斯分布分布在二维平面和三维空间中。因此,我们的研究不仅证明了入侵对象的大小和形状对传感器网络性能的影响,而且还为如何配置传感器网络以满足更实际情况下的特定检测能力提供了指导。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号