Exploring Efficient Methods for Using Multiple Spectral Reflectance Indices to Establish a Prediction Model for Early Drought Stress Detection in Greenhouse Tomato

Author:

Fang Shih-Lun1ORCID,Cheng Yu-Jung1ORCID,Tu Yuan-Kai2,Yao Min-Hwi3,Kuo Bo-Jein14ORCID

Affiliation:

1. Department of Agronomy, National Chung Hsing University, Taichung 40227, Taiwan

2. Crop Genetic Resources and Biotechnology Division, Taiwan Agricultural Research Institute, Taichung 41362, Taiwan

3. Agricultural Engineering Division, Taiwan Agricultural Research Institute, Taichung 41362, Taiwan

4. Smart Sustainable New Agriculture Research Center (SMARTer), Taichung 40227, Taiwan

Abstract

Early detection of drought stress in greenhouse tomato (Solanum lycopersicum) is an important issue. Real-time and nondestructive assessment of plant water status is possible by spectroscopy. However, spectral data often suffer from the problems of collinearity, class imbalance, and class overlap, which require some effective strategies to overcome. This study used a spectroscopic dataset on the tomato (cv. ‘Rosada’) vegetative stage and calculated ten spectral reflectance indices (SRIs) to develop an early drought detection model for greenhouse tomatoes. In addition, this study applied the random forest (RF) algorithm and two resampling techniques to explore efficient methods for analyzing multiple SRI data. It was found that the use of the RF algorithm to build a prediction model could overcome collinearity. Moreover, the synthetic minority oversampling technique could improve the model performance when the data were imbalanced. For class overlap in high-dimensional data, this study suggested that two to three important predictors can be screened out, and it then used a scatter plot to decide whether the class overlap should be addressed. Finally, this study proposed an RF model for detecting early drought stress based on three SRIs, namely, RNDVI, SPRI, and SR2, which only needs six spectral wavebands (i.e., 510, 560, 680, 705, 750, and 900 nm) to achieve more than 85% accuracy. This model can be a useful and cost-effective tool for precise irrigation in greenhouse tomato production, and its sensor prototype can be developed and tested in different situations in the future.

Publisher

MDPI AG

Subject

Horticulture,Plant Science

Reference62 articles.

1. FAO (2023, November 25). FAOSTAT. Available online: https://www.fao.org/faostat/en/#data.

2. Field, C.B., Barros, V., Stocker, T.F., Qin, D., Dokken, D.J., and Ebi, K.L. (2012). A Special Report of Working Groups I and II of the Intergovernmental Panel on Climate Change, IPCC.

3. Cogato, A., Meggio, F., De Antoni Migliorati, M., and Marinello, F. (2019). Extreme weather events in agriculture: A systematic review. Sustainability, 11.

4. Mid-latitude freshwater availability reduced by projected vegetation responses to climate change;Mankin;Nat. Geosci.,2019

5. Global terrestrial water storage and drought severity under climate change;Pokhrel;Nat. Clim. Change,2021

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