Dataset for water and nitrogen deficit stress detection in soilless tomato crops based on spectral indices

Published: 9 December 2024| Version 2 | DOI: 10.17632/gmtj7tjthx.2
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Description

The dataset for water and nitrogen deficit stress detection in soilless tomato crops based on spectral indices focuses on analysing data from four experiments to detect water and nitrogen deficits automatically using a classification tree methodology. The sheet "schedule" provides the scheduling information for the nitrogen and water treatments applied to the plants to create deficit conditions. It also includes a timetable and planning details, likely outlining the experimental procedures and timelines.The file integrates key aspects of the research process, from data collection to operational planning. A sheet named "Data 4Exp." contains the main experimental results, organised into groups based on periods. A total of 186 data samples were randomly split into 80% for training and validation and 20% for testing, as presented in "Data 4Exp. test" sheet. The full description of the methodology followed is presented in the manuscript: Elvanidi, A., Katsoulas, N., & Kittas, C. (2018). Automation for Water and Nitrogen Deficit Stress Detection in Soilless Tomato Crops Based on Spectral Indices. Horticulturae, 4(4), 47. https://doi.org/10.3390/horticulturae4040047

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Steps to reproduce

This dataset was used for the development of the manuscript Elvanidi, A., Katsoulas, N., & Kittas, C. (2018). Automation for Water and Nitrogen Deficit Stress Detection in Soilless Tomato Crops Based on Spectral Indices. Horticulturae, 4(4), 47. https://doi.org/10.3390/horticulturae4040047 More details about the dataset and how the data were collected are presented in https://doi.org/10.3390/horticulturae4040047

Institutions

University of Thessaly

Categories

Spectroscopy, Remote Sensing, Machine Learning, UV-Vis Diffuse Reflectance Spectroscopy, Abiotic Stress, Greenhouse Crops, Fertigation, Convolutional Neural Network, Crop Nutrition

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