分布式存储计算系统的多目标并行跟踪算法

R. Popp, K. Pattipati, Y. Bar-Shalom, R. R. Gassner
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引用次数: 3

摘要

我们提出了一种鲁棒的可扩展并行化多目标跟踪算法,用于空中交通监视。通过将交互多模型(IMM)状态估计器嵌入到基于优化的分配框架中,将状态估计和数据关联问题耦合起来。描述了SPMD分布式内存并行化,其中并行化了优化问题的接口,即计算相当多的门控和IMM状态估计、协方差计算和似然函数评估(用作分配问题中的成本系数)。我们描述了针对固有任务分配问题开发的几种启发式算法,其中的问题是跨一组同构处理器分配具有不确定处理成本和可忽略的通信成本的跟踪任务,以最大限度地减少工作负载不平衡。使用基于两个FAA空中交通中心雷达的测量数据库(由罗马实验室提供),我们展示了使用简单的任务分配算法在32节点的英特尔Paragon超级计算机上获得近线性加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multitarget tracking algorithm parallelization for distributed-memory computing systems
We present a robust scalable parallelization of a multitarget tracking algorithm developed for air traffic surveillance. We couple the state estimation and data association problems by embedding an interacting multiple model (IMM) state estimator into an optimization-based assignment framework. A SPMD distributed-memory parallelization is described wherein the interface to the optimization problem, namely computing the rather numerous gating and IMM state estimates, covariance calculations, and likelihood function evaluations (used as cost coefficients in the assignment problem), is parallelized. We describe several heuristic algorithms developed for the inherent task allocation problem wherein the problem is one of assigning track tasks, having uncertain processing costs and negligible communication costs, across a set of homogeneous processors to minimize workload imbalances. Using a measurement database based on two FAA air traffic central radars, courtesy of Rome Laboratory, we show that near linear speedups are obtainable on a 32-node Intel Paragon supercomputer using simple task allocation algorithms.
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