Deep Learning-Enabled Dynamic Model for Nutrient Status Detection of Aquaponically Grown Plants
Mohamed Farag Taha,
Hanping Mao,
Samar Mousa
et al.
Abstract:Developing models to assess the nutrient status of plants at various growth stages is challenging due to the dynamic nature of plant development. Hence, this study encoded spatiotemporal information of plants within a single time-series model to precisely assess the nutrient status of aquaponically cultivated lettuce. In particular, the long short-term memory (LSTM) and deep autoencoder (DAE) approaches were combined to classify aquaponically grown lettuce plants according to their nutrient status. The propose… Show more
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