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A Neuro-fuzzy Logic Model Application for Predicting the Result of a Football Match

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  • Uzochukwu C. Onwuachu

    (Imo Sate Univesity, Nigeria)

  • Promise Enyindah

    (University of Port Harcourt, Nigeria)

Abstract

Many various models have been proposed with the goal of estimating the factors that determine the winner and losers in a football match, and many other models have been proposed with the goal of estimating the elements that determine the winner and losers in a football match. Predicting the result of a football match has been the interest of many gamblers and football fans all over the world. In this research, a Neuro-fuzzy logic model for forecasting the outcome of a football match is proposed. The suggested model comprises two phases: the first utilizes a neural network model to generate the primary factors that impact team performance; the second phase uses a neural network model to generate the major factors that affect team performance. In the second phase, a fuzzy logic model is used to forecast the outcome of a football match. MatLab 2008 was used to simulate the proposed system. In order to forecast the winner and loser of each football match, the model took into account a variety of parameters that affect both the host team and the visiting squad. The results show that the Neurofuzzy logic technique is an effective tool for forecasting the outcome of a football match.

Suggested Citation

  • Uzochukwu C. Onwuachu & Promise Enyindah, 2022. "A Neuro-fuzzy Logic Model Application for Predicting the Result of a Football Match," European Journal of Electrical Engineering and Computer Science, European Open Science, vol. 6(1), pages 60-65, January.
  • Handle: RePEc:epw:ejece0:v:6:y:2022:i:1:id:19400
    DOI: 10.24018/ejece.2022.6.1.400
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