Mu Ke, Wang Zhiling, Tang Jinzhou, Zhang Jiarui, Han Wenxia
School of Health Management, Xi'an Medical University, Xi'an, 710021, China.
School of Pharmacy, Xi'an Medical University, Xi'an, 710021, China.
Sci Rep. 2025 Apr 13;15(1):12748. doi: 10.1038/s41598-025-97927-y.
In order to gain a more accurate understanding and enhance the relationship between the fitness ecological environment and artificial intelligence (AI)-driven sports public services, this study combines a Convolutional Neural Network (CNN) approach based on residual modules and attention mechanisms with the SERVQUAL evaluation model. The method employed involves the analysis of big data collected from questionnaire surveys, literature reviews, and interviews. This study critically examines the impact of advanced AI technologies on residents' satisfaction with the fitness ecological environment in sports public services and conducts theoretical analysis of the obtained data. The results show that the quality of sports public services empowered by AI significantly influences residents' satisfaction with the fitness ecological environment, such as running, swimming, ball games and other sports with high requirements for sports service quality and ecological environment. Only the good public sports service quality matching with them can meet the needs of the ecological environment for fitness, and stimulate the enthusiasm of the people for fitness. The study also shows that swimming, running and all kinds of ball games account for the largest proportion of all sports. To sum up, the satisfaction of residents' fitness ecological environment is greatly affected by the quality of public sports services, which is mainly reflected in the good and perfect sports environment and facilities that can provide residents with a wealth of fitness options, greatly improving the sports ecological environment. This study is helpful to realize the relationship between sports public service and sports ecological environment. It contributes to understanding the role of AI and deep learning in enhancing the correlation between sports public service and the ecological environment of sports.
为了更准确地理解并加强健身生态环境与人工智能(AI)驱动的体育公共服务之间的关系,本研究将基于残差模块和注意力机制的卷积神经网络(CNN)方法与SERVQUAL评估模型相结合。所采用的方法包括对通过问卷调查、文献综述和访谈收集的大数据进行分析。本研究批判性地考察了先进人工智能技术对居民对体育公共服务中健身生态环境满意度的影响,并对所得数据进行了理论分析。结果表明,人工智能赋能的体育公共服务质量显著影响居民对健身生态环境的满意度,例如对体育服务质量和生态环境要求较高的跑步、游泳、球类运动等。只有与之匹配的良好公共体育服务质量才能满足健身对生态环境的需求,并激发人们的健身热情。研究还表明,游泳、跑步和各类球类运动在所有运动项目中占比最大。综上所述,居民健身生态环境的满意度受公共体育服务质量的影响很大,主要体现在良好完善的体育环境和设施能为居民提供丰富的健身选择,极大地改善了体育生态环境。本研究有助于认识体育公共服务与体育生态环境之间的关系。它有助于理解人工智能和深度学习在增强体育公共服务与体育生态环境相关性方面的作用。