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基于深度学习的英语智慧课堂教学模式的构建。

The Construction of English Smart Classroom Teaching Mode Based on Deep Learning.

机构信息

School of Foreign Languages, Dalian Jiaotong University, Dalian 116028, Liaoning, China.

Maritime History and Culture Research Center, Dalian Maritime University, Dalian 116026, Liaoning, China.

出版信息

Comput Intell Neurosci. 2022 Aug 22;2022:9037010. doi: 10.1155/2022/9037010. eCollection 2022.

DOI:10.1155/2022/9037010
PMID:36045993
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9424004/
Abstract

Deep learning has an increasingly far-reaching impact on classroom teaching and is an important trend driving the application of educational technology in schools. In the traditional lecture-style teaching process, students are mostly in a passive listening and memorizing state. Simple memorization and repeated training have a certain hindering effect on promoting the transfer and application of the learner's knowledge, and it is not suitable to exert the learner's subjectivity. This research uses the current rapidly developing wireless communication technology to transmit data to the English teaching management platform, so as to realize the information exchange between the English classroom monitoring terminal and the English teaching management platform. The monitoring terminal of the system is mainly responsible for data collection of information, such as student campus card information, the location of the monitoring terminal, and terminal equipment parameters, and uses wireless communication information technology to upload it to the English teaching management platform according to the communication protocol agreed between the terminal and the platform, and the English teaching management platform can issue instructions to the monitoring terminal, so as to realize the control and management functions of the monitoring terminal. The design of the English teaching management platform of this system is a Web system designed based on B/S architecture. The interface of the system is diverse, and English teachers can easily view the monitoring data on the platform through this system. The main function of the English teaching management platform is to receive the data collected from the monitoring terminal, parse the information, and display the processing results to the English teacher in the form of a page. In order to facilitate the storage of data, MySQL database is used for the background data storage of the English teaching management platform. Through the design of the hardware terminal module and the development of the English teaching management platform, a deep learning-based English smart classroom management prototype system is realized.

摘要

深度学习对课堂教学的影响日益深远,是推动教育技术在学校应用的重要趋势。在传统的讲授式教学过程中,学生大多处于被动听讲和记忆的状态。单纯的记忆和重复训练对促进学习者知识的迁移和应用有一定的阻碍作用,不适合发挥学习者的主体性。本研究利用当前飞速发展的无线通信技术将数据传输到英语教学管理平台,从而实现英语课堂监控终端与英语教学管理平台之间的信息交互。系统的监控终端主要负责学生校园卡信息、监控终端位置、终端设备参数等信息的数据采集,并采用无线通信信息技术按照终端与平台之间约定的通信协议上传至英语教学管理平台,英语教学管理平台可以向监控终端下发指令,从而实现对监控终端的控制和管理功能。本系统的英语教学管理平台设计是基于 B/S 架构设计的 Web 系统。系统界面多样化,英语教师可以通过该系统轻松查看平台上的监控数据。英语教学管理平台的主要功能是接收来自监控终端采集的数据,对信息进行解析,并以页面的形式将处理结果展示给英语教师。为了方便数据存储,英语教学管理平台的后台数据存储采用 MySQL 数据库。通过硬件终端模块的设计和英语教学管理平台的开发,实现了基于深度学习的英语智能课堂管理原型系统。

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