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基于Hadoop的气象大数据分析GIS平台设计与试验
引用本文:李涛,冯仲科,孙素芬,程文生. 基于Hadoop的气象大数据分析GIS平台设计与试验[J]. 农业机械学报, 2019, 50(1): 180-188
作者姓名:李涛  冯仲科  孙素芬  程文生
作者单位:北京林业大学,北京林业大学,北京市农林科学院农业科技信息研究所,北京林业大学
基金项目:国家自然科学基金项目(U1710123)、北京市自然科学基金项目(6161001)和北京林业大学青年教师科学研究中长期项目(2015ZCQ-LX-01)
摘    要:针对海量气象数据在传统Web GIS平台下存储和分析计算受到限制的问题,提出基于Hadoop的分布式计算和存储框架,使用了Hadoop生态体系中的HDFS分布式文件存储框架来存储管理分析海量气象数据。在海量数据的并行计算分析方面,使用MapReduce作为分布式计算编程模型,该模型通过分析海量气候数据可对农业生产进行决策。最后,利用地理信息系统空间可视化技术,在前端页面以三维形式对分析结果进行展示,并分析比较数据量和集群中节点数对计算耗时的影响。试验结果表明,使用分布式多节点集群可以有效提高海量气象数据的存储和计算效率,解决了传统Web GIS平台数据存储与计算的局限性问题。

关 键 词:气象数据   分布式   Hadoop   MapReduce
收稿时间:2018-07-31

Design and Test of GIS Platform for Meteorological Data Analysis Based on Hadoop
LI Tao,FENG Zhongke,SUN Sufen and CHENG Wensheng. Design and Test of GIS Platform for Meteorological Data Analysis Based on Hadoop[J]. Transactions of the Chinese Society for Agricultural Machinery, 2019, 50(1): 180-188
Authors:LI Tao  FENG Zhongke  SUN Sufen  CHENG Wensheng
Affiliation:Beijing Forestry University,Beijing Forestry University,Beijing Forestry University;Institute of Agricultural Science and Technology Information, Beijing Academy of Agricultural and Forestry Sciences and Beijing Forestry University
Abstract:Massive meteorological data is limited in storage and analysis on the traditional WebGIS platform. A distributed computing and storage framework based on Hadoop to manage and analyze a large number of meteorological data was proposed. The HDFS distributed file storage framework was used in Hadoop ecosystem to store and manage massive meteorological data. In the aspect of parallel computing and analysis of massive data, MapReduce was used as the basis of distributed computing programming model. This model can make decision for agricultural production by analyzing massive climatic data. The application of regional large data decision analysis suitable for crop growth and the analysis of large data for meteorological disaster assessment were tried out. It had great application value for the research of climate change information extraction and analysis in agricultural production decision making and other fields. Finally, the front end pages displayed the analysis results in three dimensional form by using the geographic information system spatial visualization technology, which made the analysis results more intuitive, and easier to analyze and decision making, and then the impact of size of data and the number of nodes in the cluster on computing time consuming was analyzed and compared, and the configuration was tuned the most efficient. Experiment results showed that using distributed multi node cluster can effectively improve the storage and calculation efficiency of massive meteorological data, and solve the limitations of traditional WebGIS platform.
Keywords:meteorological data   distributed   Hadoop   MapReduce
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