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A survey on spatial, temporal, and spatio-temporal database research and an original example of relevant applications using SQL ecosystem and deep learning

机译:使用SQL生态系统和深度学习的空间,时间和时空数据库研究以及相关应用的原始示例

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ABSTRACT Spatio-temporal data serves as a foundation for most location-based applications nowadays. To handle spatio-temporal data, an appropriate methodology needs to be properly followed, in which space and time dimensions of data must be taken into account ‘altogether’ – unlike spatial (or temporal) data management tools which consider space (or time) separately and assumes no dependency on one another. In this paper, we conducted a survey on spatial, temporal, and spatio-temporal database research. Additionally, to use an original example to illustrate how today’s technologies can be used to handle spatio-temporal data and applications, we categorize the current technologies into two groups: (1) traditional, mainstay tools (e.g. SQL ecosystem) and (2) emerging, data-intensive tools (e.g. deep learning). Specifically, in the first group, we use our spatio-temporal application based on SQL system, ‘hydrological rainstorm analysis’, as an original example showing how analysis and mining tasks can be performed on the conceptual storm stored in a spatio-temporal RDB. In the second group, we use our spatio-temporal application based on deep learning, ‘users’ future locations prediction based on historical trajectory GPS data using hyper optimized ANNs and LSTMs’, as an original example showing how deep learning models can be applied to spatio-temporal data.
机译:抽象的时空数据现在是大多数基于位置的应用程序的基础。为了处理时空数据,需要正确遵循适当的方法,其中必须考虑数据的空间和时间维度 - 与单独考虑空间(或时间)的空间(或时间)数据管理工具不同并没有彼此依赖。在本文中,我们对空间,时间和时空数据库研究进行了调查。此外,要使用原始示例来说明今天的技术如何用于处理时空数据和应用程序,我们将当前技术分为两组:(1)传统,主干工具(例如SQL Ecosystem)和(2)新兴,数据密集型工具(例如深度学习)。具体而言,在第一组中,我们使用基于SQL系统的时空应用程序,“水文暴雨分析”是一个原始示例,示出了如何在存储在时空RDB中存储的概念风暴上进行分析和挖掘任务。在第二组中,我们使用我们的时空应用程序基于深度学习,“用户的未来位置基于使用超优化的ANNS和LSTMS的历史轨迹GPS数据预测,作为最初的示例,示出了如何应用深度学习模型时空数据。

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