Abstract

The main body of modern Chinese martial arts competition is the strategy, and fighting has just started in sports competitions. Strategy and action correspond to each other and practice as a set. Therefore, constructing the Chinese martial arts competition decision-making algorithm and perfecting the martial arts competition are intuitive and essential. The formulation of martial arts competition strategies requires scientific analysis of athletic data and more accurate predictions. Based on this observation, this paper combines the popular neural network technology to propose a novel additional momentum-elastic gradient descent. The BP neural network adapts to the learning rate. The algorithm is improved for the traditional BP neural network, such as selecting learning step length, the difficulty of determining the size, and direction of the weight, and the learning rate is not easy to control. The experimental results show that this paper's algorithm has improved both network scale and running time and can predict martial arts competition routines and formulate scientific strategies.

Highlights

  • From the concept of martial arts [1, 2], martial art is a traditional sport with Chinese culture as the theoretical foundation, martial arts methods as the primary content, and routines, fighting, and exercises as the primary forms of sports. e types of martial arts mainly include routines, fighting, actions, and exercises

  • Is paper combines the popular neural network technology to propose a novel additional momentum-elastic gradient descent based on the above observations. e BP neural network adapts to the learning rate. e algorithm is improved for the traditional BP neural network, such as selecting learning step length, the difficulty of determining the size and direction of the weight, and the learning rate is not easy to control. e experimental results show that this paper’s algorithm has improved both network scale and running time and can predict martial arts competition routines and formulate scientific strategies

  • Because of the limitations of the SDBP neural network, that is, MOBP neural network and BP neural network, this paper first improves the selection of learning step size and the size and direction of weights enhances the selection of learning rate, that is, the new algorithm, that is, BP neural network with additional momentum-elastic gradient descent-adaptive learning rate

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Summary

Introduction

From the concept of martial arts [1, 2], martial art is a traditional sport with Chinese culture as the theoretical foundation, martial arts methods as the primary content, and routines, fighting, and exercises as the primary forms of sports. e types of martial arts mainly include routines, fighting, actions, and exercises. E algorithm is improved for the traditional BP neural network, such as selecting learning step length, the difficulty of determining the size and direction of the weight, and the learning rate is not easy to control.

Results
Conclusion
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