期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
多用户终端的教学实施与跟踪系统分析与设计
1
作者 杨桦 郎川萍 《电脑编程技巧与维护》 2015年第17期23-25,共3页
基于信息化的教学实施及管理理念,构架了基于手机、Pad、电脑等多用户终端访问的教学实施管理与跟踪系统。通过信息化管理的手段使教学实施全过程处于系统的动态监控之下,为教学进度的横向和纵向对比提供了依据,能有效地控制整个教学过... 基于信息化的教学实施及管理理念,构架了基于手机、Pad、电脑等多用户终端访问的教学实施管理与跟踪系统。通过信息化管理的手段使教学实施全过程处于系统的动态监控之下,为教学进度的横向和纵向对比提供了依据,能有效地控制整个教学过程的实施,确保教学质量。就该系统设计的必要性、创新性、系统设计、所采用的关键技术等方面进行了分析与阐述,其研究成果具有较高的价值和可推广性。 展开更多
关键词 多终端 学业预习 学业巩固 学业跟踪 系统设计
下载PDF
A Novel Hidden Danger Prediction Method in CloudBased Intelligent Industrial Production Management Using Timeliness Managing Extreme Learning Machine
2
作者 Xiong Luo Xiaona Yang +3 位作者 Weiping Wang Xiaohui Chang Xinyan Wang Zhigang Zhao 《China Communications》 SCIE CSCD 2016年第7期74-82,共9页
To prevent possible accidents,the study of data-driven analytics to predict hidden dangers in cloud service-based intelligent industrial production management has been the subject of increasing interest recently.A mac... To prevent possible accidents,the study of data-driven analytics to predict hidden dangers in cloud service-based intelligent industrial production management has been the subject of increasing interest recently.A machine learning algorithm that uses timeliness managing extreme learning machine is utilized in this article to achieve the above prediction.Compared with traditional learning algorithms,extreme learning machine(ELM) exhibits high performance because of its unique feature of a high generalization capability at a fast learning speed.Timeliness managing ELM is proposed by incorporating timeliness management scheme into ELM.When using the timeliness managing ELM scheme to predict hidden dangers,newly incremental data could be added prior to the historical data to maximize the contribution of the newly incremental training data,because the incremental data may be able to contribute reasonable weights to represent the current production situation according to practical analysis of accidents in some industrial productions.Experimental results from a coal mine show that the use of timeliness managing ELM can improve the prediction accuracy of hidden dangers with better stability compared with other similar machine learning methods. 展开更多
关键词 prediction incremental learning extreme learning machine cloud service
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部