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基于智能移动设备的启蒙教育在线学习平台开发 被引量:4

Development of enlightenment education online learning platform based on intelligent mobile device
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摘要 针对当前设计出的启蒙教育在线学习平台便携性不强,孩子常无法跟进学习进度,故在安卓系统上开发基于智能移动设备的启蒙教育在线学习平台,采用Java语言和Eclipse软件建立开发环境,在平台客户端与服务器之间的通信协议中写入修正密文,减轻智能移动设备网络不稳定对平台登录功能产生的不利影响。通过建立IP多媒体文件静态页面属性表增强启蒙教育课件展示功能,并对课程申请功能中的可申请内容搜索与课程列表更新进行开发。实验结果表明,设计的学习平台的吞吐量大、CPU使用率低、安全性好,能够解决因网络不稳定造成的客户端相关登录问题。 Since the previously-designed enlightenment education online learning platform has poor portability,and the children can′t follow up the learning progress,an enlightenment education online learning platform based on intelligent mobile device was developed on Android platform. The Java language and Eclipse software are used to set up the development environment. The correction cipher text is written in communication protocol for the platform client and server platform to alleviate the adverse effect of network instability of intelligent mobile device on platform login function. The static page attribute table of IP multimedia file is established to enhance the exhibition function of the enlightenment education courseware. The applicable content search and curriculum list update of the curriculum application function were developed. The experimental results show that the learning platform has the advantages of high throughput,low CPU utilization and high security,and can solve the related login problem at the client caused by network instability.
作者 刘卓 张艮山
出处 《现代电子技术》 北大核心 2017年第11期33-36,共4页 Modern Electronics Technique
基金 河北省教育科学研究"十二五"规划课题:智能移动设备在国学启蒙教育中的应用研究(13100063)
关键词 启蒙教育 在线学习平台 智能移动设备开发 安卓系统 enlightenment education online learning platform intelligent mobile device development Android system
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