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A heterogeneous sensor network simulation system with integrated terrain data for real-time target detection in 3D space

机译:具有集成地形数据的异构传感器网络仿真系统,可在3D空间中进行实时目标检测

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Large scale sensor networks composed of many low-cost small sensors networked together with a small number of high fidelity position sensors can provide a robust, fast and accurate air defense and warning system. The team has been developing simulations of such large networks, and is now adding terrain data in an effort to provide more realistic analysis of the approach. This work, a heterogeneous sensor network simulation system with integrated terrain data for real-time target detection in a three-dimensional environment is presented. The sensor network can be composed of large numbers of low fidelity binary and bearing-only sensors, and small numbers of high fidelity position sensors, such as radars. The binary and bearing-only sensors are randomly distributed over a large geographic region; while the position sensors are distributed evenly. The elevations of the sensors are determined through the use of DTED Level 0 dataset. The targets are located through fusing measurement information from all types of sensors modeled by the simulation. The network simulation utilizes the same search-based optimization algorithm as in our previous two-dimensional sensor network simulation with some significant modifications. The fusion algorithm is parallelized using spatial decomposition approach: the entire surveillance area is divided into small regions and each region is assigned to one compute node. Each node processes sensor measurements and terrain data only for the assigned sub region. A master process combines the information from all the compute nodes to get the overall network state. The simulation results have indicated that the distributed fusion algorithm is efficient enough so that an optimal solution can be reached before the arrival of the next sensor data with a reasonable time interval, and real-time target detection can be achieved. The simulation was performed on a Linux cluster with communication between nodes facilitated by the Message Passing Interface (MPI). The input target information for the simulations is a set of modified target track data generated from a realistic theater level air combat simulation. The probability of detection (POD), false alarm rate (FAR), and average deviation (AVD) are used in evaluating the network performance.
机译:由许多低成本的小型传感器和少量的高保真位置传感器组成的大规模传感器网络可以提供强大,快速,准确的防空和预警系统。该团队一直在开发这种大型网络的模拟,现在正在添加地形数据,以便对该方法进行更实际的分析。本文介绍了一种具有集成地形数据的异构传感器网络仿真系统,用于在三维环境中进行实时目标检测。传感器网络可以由大量低保真二进制和纯轴承传感器,以及少量高保真位置传感器(例如雷达)组成。二进制和纯方位传感器随机分布在较大的地理区域内;位置传感器分布均匀。通过使用DTED 0级数据集确定传感器的高程。通过融合模拟建模的所有类型传感器的测量信息来定位目标。网络仿真使用与我们先前的二维传感器网络仿真相同的基于搜索的优化算法,但有一些重大修改。使用空间分解方法将融合算法并行化:将整个监视区域划分为小区域,并将每个区域分配给一个计算节点。每个节点仅针对分配的子区域处理传感器测量值和地形数据。主进程将来自所有计算节点的信息组合起来以获取整体网络状态。仿真结果表明,分布式融合算法足够有效,可以在下一个传感器数据到达之前以合理的时间间隔达到最优解,并且可以实现实时目标检测。该仿真是在Linux群集上执行的,通过消息传递接口(MPI)促进了节点之间的通信。用于模拟的输入目标信息是从实际战区级空战模拟生成的一组修改后的目标航迹数据。检测概率(POD),错误警报率(FAR)和平均偏差(AVD)用于评估网络性能。

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