【24h】

AN APPROACH OF DISCOVERING SPATIAL-TEMPORAL PATTERNS IN GEOGRAPHICAL PROCESS

机译:一种在地理过程中发现空间模式的方法

获取原文

摘要

Spatial data mining focuses on searching rules of the geographical statement, the structures of distribution and the spatial patterns of phenomena. However, many methods ignore the temporal information, thus, limited results describing the statement of spatial phenomena. This paper focuses on developing a mining method which directly detects spatial-temporal association rules hidden in the geographical process. Through such approach, geographical process can be extracted as a particle which exists in spatial-temporal- attribute dimensions. By setting customized fixed-window, geographical process in one time interval is organized as a record with attribute value and spatial orientation change. Spatial-temporal association rules can be found in geographic process mining table. [TimeInterval_i, MovingDirection_m,P] => [Timelntervalj, MovingDirection_n,Q] To verify this mining approach, it is applied on AVHRR MCSST thermal data for extracting Indo-Pacific warm pool's frequent movement patterns. The raw data provided by PO.DAAC, whose time spans of 20years from 1981 to 2000 with 7days' time particle, has been used to mining spatial temporal association rules. In the experiment, we extract warm pool within 30°N-30°S, 100°E-140°W and use 28°C as temperature threshold. After which Warm Pool's geographical process table is established so as to describe the variation of warm pool in spatial-temporal-attribute dimension. In the mining process, 18 spatial-temporal process frequent models can be found by setting minimal support threshold at 10% and confidence threshold at 60%. The result shows such a methodology can mine complicated spatial-temporal rules in realistic data. At the same time, the mining result of warm pool's frequent movement patterns may provide reference for oceanographers.
机译:空间数据挖掘重点是搜索地理陈述的规则,分布的结构和现象的空间模式。然而,许多方法忽略了时间信息,因此,描述了描述空间现象陈述的有限结果。本文侧重于开发一种挖掘方法,该方法直接检测隐藏在地理过程中的空间关联规则。通过这种方法,可以提取地理过程作为空间 - 时间尺寸中存在的粒子。通过设置自定义固定窗口,将一个时间间隔的地理进程组织为具有属性值和空间方向变化的记录。空间 - 时间关联规则可以在地理过程挖掘表中找到。 [TimeInterval_i,MovingDirection_M,P] => [TimelNtervalj,MovingDirection_N,Q]验证此挖掘方法,应用于AVHRR MCSST热数据,用于提取印度太平洋温池的频繁移动模式。 Po.daac提供的原始数据,其时间跨度从1981年到2000年的时间跨度与第7天的时间粒子,已用于采取空间时间关联规则。在实验中,我们在30°N-30°S,100°E-140°W中提取温池,并使用28°C作为温度阈值。在建立温水池的地理流程表之后,以描述空间 - 时间属性维度中温池的变化。在采矿过程中,通过在10%的10%和置信阈值下以60%的置信阈值设置最小的支撑阈值,可以找到18个空间过程频繁模型。结果显示了这种方法可以在现实数据中挖掘复杂的空间 - 时间规则。同时,温池频繁运动模式的采矿结果可以为海洋记录器提供参考。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号