School of Physical Education, Shandong University of Technology, Zibo, Shandong 255000, China.
Department of Traditional Chinese Medicine, Shandong Drug and Food Vocational College, Zibo, Shandong 255011, China.
Comput Intell Neurosci. 2022 May 27;2022:8056360. doi: 10.1155/2022/8056360. eCollection 2022.
The wireless sensor network collects data from various areas through specific network nodes and uploads it to the decision-making layer for analysis and processing. Therefore, it has become a perception network of the Internet of Things and has made great achievements in monitoring and prevention at this stage. At this stage, the main problem is the motive power of sensor nodes, so the energy storage and transmission of wireless sensor network is imminent. Mobile edge computing technology provides a new type of technology for today's edge networks, enabling it to process resource-intensive data blocks and feedback to managers in time. It is a new starting point for cloud computing services, compared to traditional cloud computing services. The transmission speed is more efficient and will be widely used in various industries and serve them in the future. Among them, education and related industries urgently need in-depth information, which in turn promotes the rapid development of data mining by sensor networks. This article focuses on data mining technology, mainly expounds the meaning and main mining methods of data mining technology, and conducts data mining on sports training requirements from the aspects of demand collection and analysis, algorithm design and optimization, demand results and realization, etc. Monitor the training status and give the trainer reasonable suggestions. Through the processing of the training data mining results and proofreading the database standardized training data, we can formulate a personalized program suitable for sportsmen, reduce sports injuries caused by no trainer's guidance, and open new doors for training modes. Therefore, this paper studies the sensor network technology, edge computing deployment algorithm, and sports training data mining.
无线传感器网络通过特定的网络节点从各个区域收集数据,并将其上传到决策层进行分析和处理。因此,它已成为物联网的感知网络,并在现阶段的监测和预防方面取得了巨大成就。现阶段,主要问题是传感器节点的动力,因此,无线传感器网络的能量存储和传输迫在眉睫。移动边缘计算技术为当今的边缘网络提供了一种新型技术,使其能够处理资源密集型数据块并及时反馈给管理人员。与传统的云计算服务相比,它是云计算服务的一个新起点。传输速度更加高效,将在未来广泛应用于各个行业并为它们提供服务。其中,教育及相关行业迫切需要深入的信息,这反过来又促进了传感器网络的数据挖掘技术的快速发展。本文主要关注数据挖掘技术,主要阐述了数据挖掘技术的含义和主要挖掘方法,并从需求收集和分析、算法设计和优化、需求结果和实现等方面对体育训练需求进行了数据挖掘,监测训练状态并为培训师提供合理建议。通过对训练数据挖掘结果的处理和对数据库标准化训练数据的校对,我们可以制定出适合运动员的个性化方案,减少因无培训师指导而导致的运动损伤,并为训练模式开辟新的途径。因此,本文研究了传感器网络技术、边缘计算部署算法和体育训练数据挖掘。