首页> 外文期刊>Information >SOOCP: A Platform for Data and Analysis of Space Object Optical Characteristic
【24h】

SOOCP: A Platform for Data and Analysis of Space Object Optical Characteristic

机译:SOOCP:空间物体光学特性数据分析平台

获取原文
           

摘要

With the advancement of various technologies, the research and application of space object optical characteristic (SOOC), one of the main characteristics of space objects, are faced with new challenges. Current diverse structures of massive SOOC data cannot be stored and retrieved effectively. Moreover, SOOC processing and application platforms are inconvenient to build and deploy, while researchers’ innovative algorithms cannot be applied effectively, thereby limiting the promotion of the research achievements. To provide a scaffolding platform for users with different needs, this paper proposes SOOCP, a SOOC data and analysis service platform based on microservice architecture. Using the hybrid Structured Query Language (SQL)/NoSQL service, the platform provides efficient data storage and retrieval services for users at different levels. For promoting research achievements and reusing existing online services, the proposed heterogeneous function integration service assists researchers and developers in independently integrating algorithmic modules, functional modules, and existing online services to meet high concurrency requests with a unified interface. To evaluate the platform, three research cases with different requirement levels were considered. The results showed that SOOCP performs well by providing various data and function integration services for different levels of demand.
机译:随着各种技术的进步,作为空间物体主要特征之一的空间物体光学特性(SOOC)的研究和应用面临着新的挑战。当前无法有效存储和检索海量SOOC数据的各种结构。而且,SOOC处理和应用平台的构建和部署不方便,而研究人员的创新算法无法得到有效应用,从而限制了研究成果的推广。为了为不同需求的用户提供一个脚手架平台,本文提出了基于微服务架构的SOOC数据和分析服务平台SOOCP。该平台使用混合结构化查询语言(SQL)/ NoSQL服务,可以为不同级别的用户提供有效的数据存储和检索服务。为了促进研究成果并重用现有的在线服务,提出的异构功能集成服务可帮助研究人员和开发人员独立地集成算法模块,功能模块和现有的在线服务,以统一的界面满足高并发性要求。为了评估该平台,考虑了三个具有不同需求级别的研究案例。结果表明,SOOCP通过为不同级别的需求提供各种数据和功能集成服务而表现良好。

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