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A Pattern-Based Predictive Indexing Method for Distributed Trajectory Databases

机译:基于模式的分布式弹道数据库预测索引方法

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摘要

Recently, it has become possible to collect large amounts of trajectory data of moving objects by using sensor networks. To manage such trajectory data, we have developed a distributed trajectory database composed of a server and many sensor nodes deployed over wide areas. The server manages the trajectory data of each moving object by using indices. However, since each sensor node cannot send trajectory data to the server all the time, the server does not always manage indices for the current trajectory data. In other words, the server is delayed in answering queries for current data because it has to forward each query to the sensor nodes to answer them. This is defined as a delay problem. To avoid this problem, we propose a pattern-based predictive indexing method for the database to answer queries in real time. This method uses past motion patterns of moving objects to predict the future locations of moving objects. In this paper, we describe the method and evaluate it with practical trajectory data. We conclude that the technique can predict the future locations of moving objects well enough in real time and show optimal parameters for prediction.
机译:近来,通过使用传感器网络来收集运动物体的大量轨迹数据成为可能。为了管理这样的轨迹数据,我们开发了一个分布式轨迹数据库,该数据库由服务器和部署在广阔区域上的许多传感器节点组成。服务器通过使用索引来管理每个移动物体的轨迹数据。但是,由于每个传感器节点不能一直将轨迹数据发送到服务器,因此服务器并不总是管理当前轨迹数据的索引。换句话说,服务器在回答当前数据的查询时会延迟,因为服务器必须将每个查询转发到传感器节点以回答它们。这被定义为延迟问题。为避免此问题,我们为数据库提出了一种基于模式的预测索引方法,以实时回答查询。此方法使用移动物体的过去运动模式来预测移动物体的未来位置。在本文中,我们描述了该方法,并通过实际的轨迹数据对其进行了评估。我们得出的结论是,该技术可以实时地很好地预测运动对象的未来位置,并显示用于预测的最佳参数。

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