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Spatiotemporal correlation in WebGIS group-user intensive access patterns

机译:WebGIS组用户密集型访问模式中的时空关联

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摘要

Group-user intensive access to WebGIS exhibits spatiotemporal behaviour patterns with aggregation features and regularity distributions when geospatial data are accessed repeatedly over time and aggregated in certain spatial areas. We argue that these observable group-user access patterns provide a foundation for improved optimization of WebGIS so that it can respond to volume intensive requests with a higher quality of service and improve performance. Subsequently, a measure of access popularity distribution must precisely reflect the access aggregation and regularity features found in group-user intensive access. In our research, we considered both the temporal distribution characteristics and spatial correlation in the access popularity of tiled geospatial data (tiles). Based on the observation that group-user access follows a Zipf-like law, we built a tile-access popularity distribution based on time-sequence, to express the access aggregation of group-users with heavy-tailed characteristics. Considering the spatial locality of user-browsed tiles, we built a quantitative expression for the correlation between tile-access popularities and the distances to hotspot tiles, reflecting the attenuation of tile-access popularity to distance. Moreover, given the geographical spatial dependency and scale attribute of tiles, and the time-sequence of tile-access popularity, we built a Poisson regression model to express the degree of correlation among the accesses to adjacent tiles at different scales, reflecting the spatiotemporal correlation in tile access patterns. Experiments verify the accuracy of our Poisson regression model, which we then applied to a cluster-based cache-prefetching scenario. The results show that our model successfully reflects the spatiotemporal aggregation features of group-user intensive access and group-user behaviour patterns in WebGIS. The refined mathematical method in our model represents a time-sequence distribution of intensive access to tiles and the spatial aggregation and correlation in access to tiles at different scales, quantitatively expressing group-user spatiotemporal behaviour patterns with aggregation features and a regular distribution. Our proposed model provides a precise and empirical basis for performance-optimization strategies in WebGIS services, such as planning computing resource allocation and utilization, distributed storage of geospatial data, and providing distributed services so as to respond rapidly to geospatial data requests, thus addressing the challenges of volume-intensive user access.
机译:当地理空间数据随时间重复访问并聚集在某些空间区域中时,组用户对WebGIS的密集访问表现出具有聚集特征和规则性分布的时空行为模式。我们认为,这些可观察到的组用户访问模式为改进WebGIS的优化提供了基础,以便它可以以更高的服务质量响应大量的请求,并提高性能。随后,访问流行度分布的度量必须精确反映在组用户密集访问中发现的访问聚合和规律性特征。在我们的研究中,我们在平铺的地理空间数据(平铺)的访问流行度中考虑了时间分布特征和空间相关性。基于观察到组用户访问遵循类似Zipf的规律,我们建立了基于时间序列的图块访问流行度分布,以表达具有重尾特征的组用户的访问聚合。考虑到用户浏览的图块的空间局部性,我们为图块访问流行度与热点图块的距离之间的相关性建立了一个定量表达式,反映了图块访问流行度随距离的减小。此外,考虑到图块的地理空间依赖性和比例属性,以及图块访问流行度的时间顺序,我们建立了泊松回归模型来表达不同比例下相邻图块的访问之间的相关程度,反映了时空相关性在图块访问模式中。实验验证了我们的Poisson回归模型的准确性,然后将其应用于基于集群的缓存预取方案。结果表明,我们的模型成功地反映了WebGIS中组用户密集访问的时空聚集特征和组用户行为模式。我们模型中的改进数学方法表示密集访问图块的时间序列分布以及不同规模下访问图块的空间聚集和相关性,定量表示具有聚集特征和规则分布的组用户时空行为模式。我们提出的模型为WebGIS服务中的性能优化策略提供了精确的经验基础,例如规划计算资源的分配和利用,地理空间数据的分布式存储以及提供分布式服务以快速响应地理空间数据请求,从而解决了大量用户访问的挑战。

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  • 作者单位

    Wuhan Univ, State Key Lab Informat Engn Surveying Mapping &, Wuhan 430072, Peoples R China|Collaborat Innovat Ctr Geospatial Technol, Wuhan, Peoples R China;

    Wuhan Univ, State Key Lab Informat Engn Surveying Mapping &, Wuhan 430072, Peoples R China;

    Natl Geomat Ctr China, Beijing, Peoples R China;

    Wuhan Univ, State Key Lab Informat Engn Surveying Mapping &, Wuhan 430072, Peoples R China|Collaborat Innovat Ctr Geospatial Technol, Wuhan, Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Poisson regression; time-sequence; Zipf-like; spatiotemporal; WebGIS;

    机译:泊松回归;时序;Zipf样;时空;WebGIS;

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