Research on Delay Control Method of Ultra-Wideband Wireless Communication Based on Artificial Intelligence
Abstract
In order to improve the intelligence and real-time performance of ultra-broadband wireless communication, it is necessary to control the time delay of intelligent data transmission in ultra-broadband wireless communication. An intelligent data transmission time delay control algorithm for ultra-broadband wireless communication based on artificial intelligence algorithm is proposed. A wireless communication network transmission model based on wireless sensor networking model is constructed, and the position and scale parameters distributed in the process of wireless communication transmission are measured by using different scales. It is found that the time delay control problem is the best replica correlation matched filter detection problem, and the communication delay control is realized to the maximum extent. The simulation results show that the artificial intelligence of ultra-broadband wireless communication delay control is good and the communication quality is high.
Keywords
Artificial intelligence Ultra-broadband Wireless communication Delay controlReferences
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