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云存储环境下多媒体集成学习资源信息整合系统 被引量:11

Multimedia integrated learning resources information integration system in cloud storage environment
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摘要 为了提高多媒体集成学习资源信息配置和整合能力,文中提出一种基于自适应均衡分配和模糊调度的云存储环境下多媒体集成学习资源信息整合系统设计方法。对采集的多媒体集成学习资源信息采用关联规则挖掘方法进行属性配置,根据多媒体学习资源的属性分类结果进行资源配置和信息聚类处理,构建资源整合的信息融合模型,采用模糊调度方法实现多媒体集成学习资源信息的优化整合。在嵌入式环境下进行资源整合系统软件开发设计,采用ZigBee 协议进行多媒体集成学习资源信息整合系统的组网设计和模块化开发。测试结果表明,设计的多媒体集成学习资源信息整合系统具有很好的教学资源信息整合能力,资源信息的召回率较高。 In order to improve the ability of information allocation and integration of multimedia integrated learning resources, a multimedia integrated learning resources information integration system based on adaptive balanced allocation and fuzzy scheduling is proposed. The information of multimedia integrated learning resources is configured by association rule mining method, configured and clustered according to the results of attribute classification of multimedia learning resources, and the information fusion model of resource integration is constructed. Fuzzy scheduling method is used to realize the optimal integration of multimedia integrated learning resources. The software of resource integration system is developed in embedded environment, and the network design and modularization development of multimedia integrated learning resources information integration system are carried out by using ZigBee protocol. The test results show that the multimedia integrated learning resources information integration system has a good ability of teaching resources information integration, and the recall rate of resources information is high.
作者 朱洁 陆兴华 ZHU Jie;LU Xing-hua(Huali College, Guangdong University of Technology,Guangzhou 511325, China)
出处 《信息技术》 2019年第6期125-129,共5页 Information Technology
关键词 云存储环境 多媒体集成学习 信息资源 整合系统 cloud storage environment multimedia integrated learning information resources integr-ated systems
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