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MOVIES: Indexing moving objects by shooting index images

机译:电影:通过拍摄索引图像来索引运动物体

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With the exponential growth of moving objects data to the Gigabyte range, it has become critical to develop effective techniques for indexing, updating, and querying these massive data sets. To meet the high update rate as well as low query response time requirements of moving object applications, this paper takes a novel approach in moving object indexing. In our approach, we do not require a sophisticated index structure that needs to be adjusted for each incoming update. Rather, we construct conceptually simple short-lived index images that we only keep for a very short period of time (sub-seconds) in main memory. As a consequence, the resulting technique MOVIES supports at the same time high query rates and high update rates, trading this property for query result staleness. Moreover, MOVIES is the first main memory method supporting time-parameterized predictive queries. To support this feature, we present two algorithms: non-predictive MOVIES and predictive MOVIES. We obtain the surprising result that a predictive indexing approach-considered state-of-the-art in an external-memory scenario-does not scale well in a main memory environment. In fact, our results show that MOVIES outperforms state-of-the-art moving object indexes such as a main-memory adapted B~x-tree by orders of magnitude w. r. t. update rates and query rates. In our experimental evaluation, we index the complete road network of Germany consisting of 40,000,000 road segments and 38,000,000 nodes. We scale our workload up to 100,000,000 moving objects, 58,000,000 updates per second and 10,000 queries per second, a scenario at a scale unmatched by any previous work.
机译:随着将对象数据移动到千兆字节的范围内呈指数增长,开发索引,更新和查询这些海量数据集的有效技术变得至关重要。为了满足运动对象应用程序的高更新率和低查询响应时间的要求,本文采用了一种新颖的运动对象索引方法。在我们的方法中,我们不需要为每个传入更新都需要调整的复杂索引结构。而是,我们构造了概念上简单的短期索引图像,这些图像仅在主内存中保留很短的时间段(亚秒)。结果,生成的技术MOVIES同时支持高查询率和高更新率,用此属性来交换查询结果的陈旧性。此外,MOVIES是第一个支持时间参数化预测查询的主存储方法。为了支持此功能,我们提出了两种算法:非预测电影和预测电影。我们获得了令人惊讶的结果,即在外部存储器场景中采用最新技术的预测索引方法在主存储环境中无法很好地扩展。实际上,我们的结果表明,MOVIES的表现优于最先进的运动对象索引(例如,适应主内存的B〜x树)的数量级w。河t。更新率和查询率。在我们的实验评估中,我们对德国的完整道路网络进行了索引,该网络由40,000,000个路段和38,000,000个节点组成。我们将工作负载扩展到最多100,000,000个移动对象,每秒58,000,000个更新和每秒10,000个查询,这种情况是以前任何工作都无法比拟的。

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