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KCI등재후보 학술저널

A TabNet - Based System for Water Quality Prediction in Aquaculture

DOI : 10.30693/SMJ.2022.11.2.39
  • 36

In the context of the evolution of automation and intelligence, deep learning and machine learning algorithms have been widely applied in aquaculture in recent years, providing new opportunities for the digital realization of aquaculture. Especially, water quality management deserves attention thanks to its importance to food organisms. In this study, we proposed an end-to-end deep learning-based TabNet model for water quality prediction. From major indexes of water quality assessment, we applied novel deep learning techniques and machine learning algorithms in innovative fish aquaculture to predict the number of water cells counting. Furthermore, the application of deep learning in aquaculture is outlined, and the obtained results are analyzed. The experiment on in-house data showed an optimistic impact on the application of artificial intelligence in aquaculture, helping to reduce costs and time and increase efficiency in the farming process.

I. INTRODUCTION

II. RELATED WORK

III. PROPOSED METHOD

IV. EXPERIMENT AND RESULTS

V. CONCLUSION

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