首页> 外文期刊>GigaScience >Biospytial: spatial graph-based computing for ecological Big Data
【24h】

Biospytial: spatial graph-based computing for ecological Big Data

机译:生物关节:基于空间图的生态数据计算

获取原文
       

摘要

Background: The exponential accumulation of environmental and ecological data together with the adoption of open data initiatives bring opportunities and challenges for integrating and synthesising relevant knowledge that need to be addressed, given the ongoing environmental crises. Findings: Here we present Biospytial, a modular open source knowledge engine designed to import, organise, analyse and visualise big spatial ecological datasets using the power of graph theory. The engine uses a hybrid graph-relational approach to store and access information. A graph data structure uses linkage relationships to build semantic structures represented as complex data structures stored in a graph database, while tabular and geospatial data are stored in an efficient spatial relational database system. We provide an application using information on species occurrences, their taxonomic classification and climatic datasets. We built a knowledge graph of the Tree of Life embedded in an environmental and geographical grid to perform an analysis on threatened species co-occurring with jaguars (Panthera onca). Conclusions: The Biospytial approach reduces the complexity of joining datasets using multiple tabular relations, while its scalable design eases the problem of merging datasets from different sources. Its modular design makes it possible to distribute several instances simultaneously, allowing fast and efficient handling of big ecological datasets. The provided example demonstrates the engine’s capabilities in performing basic graph manipulation, analysis and visualizations of taxonomic groups co-occurring in space. The example shows potential avenues for performing novel ecological analyses, biodiversity syntheses and species distribution models aided by a network of taxonomic and spatial relationships.
机译:背景:鉴于正在进行的环境危机,将环境和生态数据的指数累积与采用开放式数据举措带来了机会和挑战,为正在进行的环境危机提供所需的相关知识。调查结果:在这里,我们呈现了生物透视,一个模块化开源知识引擎,旨在使用图表理论的力量进口,组织,分析和可视化大空间生态数据集。该发动机使用混合图形关系方法来存储和访问信息。图数据结构使用链接关系构建表示为存储在图形数据库中的复杂数据结构的语义结构,而表格和地理空间数据存储在有效的空间关系数据库系统中。我们提供了一种应用程序,使用物种出现的信息,他们的分类分类分类和气候数据集。我们建立了嵌入在环境和地理网格中的生命之树的知识图,以对与Jaguars(Panthera Onca)共同发生的受威胁物种进行分析。结论:生物透视方法降低了使用多个表格关系加入数据集的复杂性,而其可扩展设计可以简化来自不同来源的数据集的问题。其模块化设计使得可以同时分发多个实例,允许快速有效地处理大生态数据集。所提供的例子演示了发动机在执行基本图形操纵,分析和分类组的基本图形操纵,分析和可视化方面的能力。该示例显示了用于执行新型生态分析,生物多样性合成和物种分布模型的潜在途径,通过分类和空间关系网络辅助。

著录项

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