Driving Intelligent IoT Monitoring and Control through Cloud Computing and Machine Learning
- URL: http://arxiv.org/abs/2403.18100v1
- Date: Tue, 26 Mar 2024 20:59:48 GMT
- Title: Driving Intelligent IoT Monitoring and Control through Cloud Computing and Machine Learning
- Authors: Hanzhe Li, Xiangxiang Wang, Yuan Feng, Yaqian Qi, Jingxiao Tian,
- Abstract summary: This article explores how to drive intelligent iot monitoring and control through cloud computing and machine learning.
The paper also introduces the development of iot monitoring and control technology, the application of edge computing in iot monitoring and control, and the role of machine learning in data analysis and fault detection.
- Score: 3.134387323162717
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This article explores how to drive intelligent iot monitoring and control through cloud computing and machine learning. As iot and the cloud continue to generate large and diverse amounts of data as sensor devices in the network, the collected data is sent to the cloud for statistical analysis, prediction, and data analysis to achieve business objectives. However, because the cloud computing model is limited by distance, it can be problematic in environments where the quality of the Internet connection is not ideal for critical operations. Therefore, edge computing, as a distributed computing architecture, moves the location of processing applications, data and services from the central node of the network to the logical edge node of the network to reduce the dependence on cloud processing and analysis of data, and achieve near-end data processing and analysis. The combination of iot and edge computing can reduce latency, improve efficiency, and enhance security, thereby driving the development of intelligent systems. The paper also introduces the development of iot monitoring and control technology, the application of edge computing in iot monitoring and control, and the role of machine learning in data analysis and fault detection. Finally, the application and effect of intelligent Internet of Things monitoring and control system in industry, agriculture, medical and other fields are demonstrated through practical cases and experimental studies.
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