Design and Implementation of Goalkeeper Defensive Strategy on the Soccer Robot Simulation Game

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Abstract:

Robot soccer is a new research topic of artificial intelligence. The robot soccer game can be simply simulated by software. As the core part of defensive strategy, the goalkeeper's defensive is also a difficult subject in the soccer robot game. The site is devised by the rules, and the area of ball is as the center. This strategy does not consider the other player's position as well as their overall offensive state. It is not adopt to determine some special cases. A novel defensive strategy of goalkeeper is designed, and the experiments in different arithmetic are done and the results are noted. It needs to be further improved in guarantee real-time performance

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1176-1179

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December 2012

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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