| Literature DB >> 33897543 |
Abstract
In order to solve the problems of poor physical fitness of college students and low efficiency of college sport venues' management, an intelligent sports management system based on deep learning technology is designed by using information technology and human-computer interaction under artificial intelligence. Based on the Browser/Server (B/S) structure, the intelligent sports management system is constructed. The basic framework of Spring Cloud is used to integrate the framework and components of each part, and a distributed microservice system is built. The artificial intelligence recommendation algorithm is used to analyze the user's age, body mass index (BMI), and physical health status, and recommend sports programs suitable for students, thus realizing the intelligent sports program recommendation function. At the same time, the recommendation algorithm is used to complete the course recommendation according to the students' preferences, teaching distance, opening time, course evaluation, and other indexes, and the course registration system is constructed; after the analysis of the entity and the relationship between the entities of the intelligent sports system, the database relational model of the system is designed with the entity relationship (E-R) diagram. The results of the functional test show that the system can run well. In conclusion, the sports training environment instructional system based on artificial intelligence and deep learning technology can meet the teaching needs of colleges, improve the sports' quality for college students, and promote psychological education.Entities:
Keywords: artificial intelligence; college students' psychological education; deep learning; intelligent sports system; recommendation algorithm
Year: 2021 PMID: 33897543 PMCID: PMC8060568 DOI: 10.3389/fpsyg.2021.634978
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Figure 1B/S structure diagram.
Figure 2Spring Cloud component architecture.
Figure 3Sports scheme recommendation model.
Figure 4E-R diagram of venue information.
Figure 5E-R diagram of course information.
Figure 6Flow system of sports scheme making and recommendation module.
Figure 7Flow chart of course registration module.
Figure 8Relationship model of system database.
Booking system functional test.
| Test project | Venue reservation |
| Test method | BLACK BOX |
| Test item | Basic operation and data verification of venue reservation |
| Input/operation | Open the user app; Search for the required venues; Identify venue types and projects; Check the booking status; Choose sports time; Specific site number; Submit booking information. |
| Expected result | Display the correct venue information; Show the daily booking situation; Normal selection of idle sessions; Display correct booking information after submission. |
| Actual results | Booking submitted successfully; Consistent with the actual results; Consistent with the PC display. |
The influence of different amount of exercise on college students' anxiety.
| Small amount of exercise | 45.32 | |
| Medium amount of exercise | 43.58 | |
| Large amount of exercise | 38.49 | |
| Group comparison | ||
| Multiple comparisons (LSD correction) | Small and medium | |
| Small and large | ||
| Medium and large | ||
p < 0.001.
Effect of different exercise amount on depression of college students.
| Small amount of exercise | 52.94 | |
| Medium amount of exercise | 47.68 | |
| Large amount of exercise | 41.36 | |
| Group comparison | ||
| Multiple comparisons (LSD correction) | Small and medium | |
| Small and large | ||
| Medium and large | ||
p < 0.05;
p < 0.001.