This study evaluated flow-through aquaculture systems by assessing the efficiency of various machine learning algorithms for imputing missing water-quality data, including dissolved oxygen, water temperature, pH, and salinity. Artificial missing data were generated based on real-world missing data mechanisms, and a comprehensive statistical analysis of the data characteristics was conducted to identify suitable imputation methods. Results showed that basic imputation methods like linear interpolation, often insufficient for datasets with high variability and non-linear relationships, performed well for certain data distributions, particularly for salinity and pH data with high kurtosis and symmetric distributions. However, advanced machine learning-based imputation techniques, especially TimesNet, consistently outperformed other methods in handling complex and variable patterns in the water-quality data. This study underscores the importance of selecting appropriate imputation methods based on data properties to enhance environmental monitoring systems in aquaculture and improve operational efficiency and sustainability.
KSP Keywords
Aquaculture system, Data Distribution, Data characteristics, Dissolved oxygen, Environmental monitoring system, High variability, Imputation methods, Imputation techniques, Learning-based, Linear interpolation, Machine Learning Algorithms
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