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Optimization of fitness data monitoring system based on Internet of Things and cloud computing

机译:基于事物与云计算的健身数据监控系统优化

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In the service dimension, the construction of fitness science data supervision service mode is discussed. Based on the stakeholder theory, through the statistical analysis of the stakeholders of fitness science data supervision, three core stakeholders of the government, users and data service personnel are identified. Based on these three dimensions, we find out the core concepts of government policy model, user demand model and service model. At the same time, each dimension is deeply analyzed. Through the relationship analysis between these three dimensions, the user-oriented collaborative supervision service model of fitness scientific data is expected to guide the specific service practice of fitness scientific data supervision through the establishment of this model. In addition, an unsupervised learning method in machine learning, the isolation forest algorithm, is introduced to detect abnormal data; at the same time, using real fitness data sets, through comparative experiments with local anomaly factor algorithms, it is verified that the isolation forest algorithm has a good effect of anomaly detection; this article also uses redis cache to optimize the performance of the fitness data monitoring system, which solves the access pressure of the main database in a multi-user high-concurrency environment; Finally, the usability and stability of the system are verified by functional tests and stress tests.
机译:在服务维度中,讨论了健身科学数据监督服务模式的构建。根据利益相关者理论,通过对健身科学数据监督的利益相关者的统计分析,确定了政府,用户和数据服务人员的三个核心利益攸关方。根据这三个维度,我们发现了政府政策模型,用户需求模型和服务模型的核心概念。同时,每个维度都深受分析。通过这三个维度之间的关系分析,预计使用本模型的健身科学数据的面向用户的协作监督服务模型将指导健身科学数据监督的具体服务实践。此外,引入了机器学习中的无监督学习方法,介绍了隔离林算法,以检测异常数据;同时,通过使用局部异常因子算法的比较实验,使用真实健身数据集,验证了分离林算法对异常检测有良好的效果;本文还使用REDIS缓存来优化健身数据监控系统的性能,该系统解决了多用户高并发环境中主数据库的访问压力;最后,通过功能测试和压力测试验证了系统的可用性和稳定性。

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