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Query processing of massive trajectory data based on mapreduce

机译:基于mapreduce的海量轨迹数据查询处理

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With the development of positioning technologies and the boosting deployment of inexpensive location-aware sensors, large volumes of trajectory data have emerged. However, efficient and scalable query processing over trajectory data remains a big challenge. We explore a new approach to this target in this paper, presenting a new framework for query processing over trajectory data based on MapReduce. Traditional trajectory data partitioning, indexing, and query processing technologies are extended so that they may fully utilize the highly parallel processing power of large-scale clusters. We also show that the append-only scheme of MapReduce storage model can be a nice base for handling updates of moving objects. Preliminary experiments show that this framework scales well in terms of the size of trajectory data set. It is also discussed the limitation of traditional trajectory data processing techniques and our future research directions.
机译:随着定位技术的发展以及廉价的可感知位置的传感器的大量部署,出现了大量的轨迹数据。然而,对轨迹数据进行有效且可扩展的查询处理仍然是一个巨大的挑战。我们在本文中探索了一种实现此目标的新方法,提出了一种基于MapReduce的轨迹数据查询处理的新框架。扩展了传统的轨迹数据分区,索引和查询处理技术,以便它们可以充分利用大型集群的高度并行处理能力。我们还显示,MapReduce存储模型的仅追加方案可以为处理移动对象的更新提供良好的基础。初步实验表明,该框架在轨迹数据集的大小方面可以很好地扩展。还讨论了传统轨迹数据处理技术的局限性以及我们未来的研究方向。

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