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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >Declustering and load-balancing methods for parallelizing geographic information systems
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Declustering and load-balancing methods for parallelizing geographic information systems

机译:并行化地理信息系统的分簇和负载平衡方法

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摘要

Declustering and load balancing are important issues in designing a high performance geographic information system (HPGIS), which is a central component of many interactive applications such as real time terrain visualization. The current literature provides efficient methods for declustering spatial point data. However, there has been little work toward developing efficient declustering methods for collections of extended objects, like chains of line segments and polygons. We focus on the data partitioning approach to parallelizing GIS operations. We provide a framework for declustering collections of extended spatial objects by identifying the following key issues: (1) work load metric; (2) spatial extent of the work load; (3) distribution of the work load over the spatial extent; and (4) declustering method. We identify and experimentally evaluate alternatives for each of these issues. In addition, we also provide a framework for dynamically balancing the load between different processors. We experimentally evaluate the proposed declustering and load balancing methods on a distributed memory MIMD machine (Cray T3D). Experimental results show that the spatial extent and the work load metric are important issues in developing a declustering method. Experiments also show that the replication of data is usually needed to facilitate dynamic load balancing, since the cost of local processing is often less than the cost of data transfer for extended spatial objects. In addition, we also show that the effectiveness of dynamic load balancing techniques can be improved by using declustering methods to determine the subsets of spatial objects to be transferred during runtime.
机译:在设计高性能地理信息系统(HPGIS)时,分簇和负载平衡是重要的问题,而HPGIS是许多交互式应用程序(例如实时地形可视化)的核心组件。当前文献提供了用于解聚空间点数据的有效方法。但是,为开发诸如线段和多边形链之类的扩展对象的集合而开发有效的去簇方法的工作很少。我们专注于使GIS操作并行化的数据分区方法。通过确定以下关键问题,我们提供了一个用于扩展扩展空间对象集合的框架:(1)工作量度量; (2)工作负荷的空间范围; (3)工作量在空间上的分布; (4)解聚方法。我们确定并实验评估这些问题的替代方案。此外,我们还提供了一个框架,用于动态平衡不同处理器之间的负载。我们在分布式内存MIMD机器(Cray T3D)上实验性地评估了建议的分簇和负载平衡方法。实验结果表明,空间范围和工作量度量是开发去聚类方法的重要问题。实验还表明,通常需要数据复制来促进动态负载平衡,因为本地处理的成本通常小于扩展空间对象的数据传输成本。此外,我们还表明,通过使用分簇方法确定运行时要传输的空间对象的子集,可以提高动态负载平衡技术的有效性。

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