| Literature DB >> 35845907 |
Wei Feng1.
Abstract
A wireless sensor network (WSN) is a group of geographically scattered and specialized sensors to monitor and record variables related to environmental and storing the obtained data in a vital location. These networks have applications and can be utilized in different research domains including physical education where error prediction is assumed as one of the core issues. Thus, careful attention is required from the researcher to provide reliable and accurate prediction models. Thus, aiming the shortage of large prediction error in the physical education evaluation, which is based on the BP neural network and wireless sensor technology, a combination of AFP and questionnaire survey method is proposed in order to improve the accuracy and predictability of evaluation, according to the characteristics of different evaluation subjects. We select the evaluation index system as the input of wireless sensor technology and then use the principle of genetic algorithm to select the optimal individual and optimize the initial parameters of wireless sensor technology to establish the evaluation model of physical education quality. Through the training and testing of sample data, it is shown that the model greatly improves the accuracy of physical education quality evaluation and has a good application prospect in physical education evaluation.Entities:
Mesh:
Year: 2022 PMID: 35845907 PMCID: PMC9283016 DOI: 10.1155/2022/3544457
Source DB: PubMed Journal: Comput Intell Neurosci
Assignment standard of golden scale method.
| Scaling | Meaning |
|---|---|
| 1 | Two factors |
| 1.618 | Factor |
| 2.618 | Factor |
| 4.238 | Factor |
| Reciprocal of scale | The ratio of the importance of |
Eight important evaluation indicators based on AHP and questionnaires.
| First-level indicator | Serial number | Secondary indicators |
|---|---|---|
| Teaching and educating people | X1 | Dedication to work, strong sense of responsibility in all aspects of teaching |
| Teaching organization | X2 | The language is standardized, clear, and vivid, and the speed of speech is moderate |
| Teaching effect | X3 | Students can master the basic concepts and principles of the course |
| X4 | Students enhance analytical problem-solving skills | |
| Teaching content | X5 | Highlight important and difficult points, detail properly, and do not follow the script |
| X6 | Link theory with practice, without discussing content unrelated to the course | |
| Teaching method | X7 | Good at interaction, stimulate students' thinking and learning interest |
| X8 | The teaching ideas are clear and easy to understand, and the methods and means are flexible |
Figure 1The steps of improving GA-enabled wireless sensor neural network.
Figure 2Comparison of the prediction error curves of the two networks.
Figure 3(a) Error prediction without screening indicators, (b) error prediction of uni-hidden layer of screening indicators, (c) error prediction of dual-hidden layer of screening indicators, and (d) GABP prediction error for screening indicators.