RTIS 2016: Lecture Notes in Real-Time Intelligent Systems pp 263-270 | Cite as
The Application of Artificial Intelligence and Intelligent Decision in Men Volleyball’s Lineup Tactics
Abstract
With the continuous improvement of modern athletic volleyball, competition becomes increasingly fierce. This leads to consistent development of attacking tactics and determines that in most cases, relying on single athlete’s performance can hardly finish the whole attacking process. The combination and coordination of multiple attacking tactics play a significant role in the implementation and success of athletic volleyball attacking tactics. This article begins with the development process of volleyball in China, changes of technical guiding method and technical tactics, current situation of Chinese volleyball’s development. Based on the comparative research on the diagnostic method for artificial intelligent competitive tech-technical in volleyball, the article improves the diagnostic method for artificial volleyball tech-technical tactics to use of artificial nervous network and brings out that it should make various diagnose according to different competition situation and then give an evaluation and a predictive research.
Keywords
Artificial intelligence Volleyball match Techniques and tactics Artificial nervous networksReferences
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