Crop-water assessment in Citrus (Citrus sinensis L.) based on continuous measurements of leaf-turgor pressure using machine learning and IoT
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José A. Barriga | I. García-Tejero | Pedro Clemente | Fernando Blanco-Cipollone | Emiliano Trigo-Córdoba
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