运动心肺监测系统中基于网络异常检测和无线传感器网络的人工智能算法仿真

Zuotao Wei
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引用次数: 0

摘要

网络异常对数据传输和系统运行的影响不容忽视,因此需要一种有效的异常检测方法来保证系统的稳定性。本研究旨在通过构建基于无线传感器网络的人工智能算法,提高心肺运动监测系统的异常检测能力,确保实时数据的准确性和可靠性,为运动健康管理提供支持。本研究采用集成学习算法,结合网络流量监测和传感器数据分析,通过数据预处理、特征提取和异常检测模型构建,实现了对心肺监测数据的实时监测。利用仿真平台评估了算法在不同网络环境下的性能,特别是在无线网络和移动网络中的性能。实验结果表明,所提出的算法能在异常网络条件下有效识别异常数据。与传统检测方法相比,所提出的方法显著提高了检测效率和响应速度,并能适应复杂的无线传感环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Simulation of Artificial Intelligence Algorithm Based on Network Anomaly Detection and Wireless Sensor Network in Sports Cardiopulmonary Monitoring System

Simulation of Artificial Intelligence Algorithm Based on Network Anomaly Detection and Wireless Sensor Network in Sports Cardiopulmonary Monitoring System

The impact of network anomaly on data transmission and system operation cannot be ignored, so an effective anomaly detection method is needed to ensure the stability of the system. This study aims to improve the anomaly detection ability of the cardiopulmonary exercise monitoring system by constructing artificial intelligence algorithms based on wireless sensor networks, ensure the accuracy and reliability of real-time data, and provide support for sports health management. In this study, an integrated learning algorithm was adopted, combined with network traffic monitoring and sensor data analysis, and through data preprocessing, feature extraction and anomaly detection model construction, real-time monitoring of cardiopulmonary monitoring data was realized. Simulation platform is used to evaluate the performance of the algorithm in different network environments, especially in wireless networks and mobile networks. The experimental results show that the proposed algorithm can effectively identify abnormal data under abnormal network conditions. Compared with traditional detection methods, the proposed method significantly improves detection efficiency and response speed, and can adapt to complex wireless sensing environment.

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