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The Design of an Intelligent High-Speed Loom Industry Interconnection Remote Monitoring System

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Abstract

In this paper, the design of the remote monitoring system for the industrial interconnection of the intelligent high-speed loom is carried out from the hardware system and the software system. The overall design scheme of the system is as follows. The transmission control protocol/internet protocol communication protocol based on the socket programming interface is used for data transmission between the local executor and the cloud server. The browser/server architecture is selected for data communication between the web server and remote client. The data interaction between the web server and the remote client is realized by Ajax (Asynchronous JavaScript and XML). Finally, the remote monitoring function of the industrial interconnection of the intelligent high-speed loom is realized. The effective communication distance of the hardware circuit control board of the intelligent high-speed loom monitoring system is 150 m, which meets the needs of the industrial field. The client-side of the system can be compatible with different browsers and can monitor the running state of high-speed loom in real-time. Once the loom breaks down, the system can judge the cause of the failure through algorithm analysis, and the visual interface can achieve a better human–computer interaction effect, which can meet the needs of the industry for the intelligent remote monitoring system of the high-speed loom. The effective communication distance of the hardware circuit control board of the intelligent high-speed loom monitoring system is 150 m, which meets the needs of the industrial field.

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Correspondence to Kai Peng.

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Xiao, Y., Zhang, H., Yuan, C. et al. The Design of an Intelligent High-Speed Loom Industry Interconnection Remote Monitoring System. Wireless Pers Commun 113, 2167–2187 (2020). https://doi.org/10.1007/s11277-020-07317-y

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