基于GIS的流行病时空统计的清晰说明

B. Devi, V. N. Mandhala, D. Bhattacharyya, Hye-jin Kim
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引用次数: 0

摘要

信息技术领域的创新使大量空间数据的收集和处理成为可能。数据挖掘的目标是确定掘金。空间数据挖掘识别搭配规则。空间数据是从空间对象考虑的。利用数据挖掘工具对考虑的空间数据进行预处理。对预处理后的数据,采用搭配规则检测频繁项集。运用搭配规律对灾区进行预测。特别是在空间数据挖掘中,将空间数据以时间序列的形式进行比较,得出了具有时空意义的结论。从这个角度看,作为空间数据缩影的搭配规律随着时间的影响而发生变化。因此,空间知识发生的变化是时空交易。提取时空交易并发现搭配的各种行为方面是GIS的重要活动之一。通过实施以“附近”为谓词的搭配规则,根据地理信息系统(GIS)上的空间数据在一年中所有季度的不同颜色的精确点表示来识别受灾地区。据此,预测灾害风险区域,然后将分析的空间数据重新定向到卫生组织,以监督运动。我们的重点是预测灾害,设计一年中所有季度的时空树,并在GIS上表示空间掘金。为此,设计并实现了一个时空灾害管理系统。提出了一种新的时空数据结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligible Illustration of an Epidemic Spatio – Temporal Statistics on GIS
Innovations in the sector of information technology have enabled the collection and processing of enormous amounts of spatial data. The goal of data mining is to determine nuggets. Spatial data mining identifies the collocation rules. Spatial data are considered from the spatial objects. The considered spatial data is preprocessed by using the data mining tool. To the preprocessed data, collocation rule is applied for detecting the frequent item sets. Disaster impacted areas were predicted by applying the collocation rule. In particular to spatial data mining, when spatial data are comparatively represented in time series, a spatio-temporal significance is concluded. In this perspective, the collocation rule that is an epitome for the spatial data acquires changes with temporal impact. Therefore, the changes that arise to the spatial knowledge are the spatio-temporal transactions. Extracting the spatio-temporal transactions and finding the various behavioral aspects of collocation is one of the considerable activities of GIS. By implementing the collocation rule with “nearby” as the predicate, disaster affected areas are identified follows the representation of the spatial data on Geographical Information Systems (GIS) by various colored pinpoints for all the quarters of a year. From that, the regions at risk zone of disaster were predicted, then the analyzed spatial data will be redirected to the health organizations for supervising campaigns. Our focus is to forecast the disaster, design the spatio-temporal trees for all the quarters of a year and to represent the spatial nuggets on GIS. Therefore, a spatio-temporal disaster management system is designed and implemented. A novel data structure for the spatio-temporal data is proposed.
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