Abstract

Drought stress as one of the most devastating abiotic stresses affects agricultural and horticultural productivity in many parts of the world. The application of melatonin can be considered as a promising approach for alleviating the negative impact of drought stress. Modeling of morphological responses to drought stress can be helpful to predict the optimal condition for improving plant productivity. The objective of the current study is modeling and predicting morphological responses (leaf length, number of leaves/plants, crown diameter, plant height, and internode length) of citrus to drought stress, based on four input variables including melatonin concentrations, days after applying treatments, citrus species, and level of drought stress, using different Artificial Neural Networks (ANNs) including Generalized Regression Neural Network (GRNN), Radial basis function (RBF), and Multilayer Perceptron (MLP). The results indicated a higher accuracy of GRNN as compared to RBF and MLP. The great accordance between the experimental and predicted data of morphological responses for both training and testing processes support the excellent efficiency of developed GRNN models. Also, GRNN was connected to Non-dominated Sorting Genetic Algorithm-II (NSGA-II) to optimize input variables for obtaining the best morphological responses. Generally, the validation experiment showed that ANN-NSGA-II can be considered as a promising and reliable computational tool for studying and predicting plant morphological and physiological responses to drought stress.

Highlights

  • It is well documented that drought significantly affects agricultural and horticultural productivity in many parts of the world [1]

  • Melatonin is categorized as a novel plant growth regulator (PGR) which exists in various levels in different plant cells and tissues [9, 10]

  • Our results showed that the exogenous application of appropriate concentration of melatonin can help the genotypes resist the negative impacts of drought stress

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Summary

Introduction

It is well documented that drought significantly affects agricultural and horticultural productivity in many parts of the world [1]. The effect of melatonin on the plant morphological and physiological responses to drought stress can be considered as a multivariable process and viewed by different factors such as genotype, environmental conditions, and the concentration of melatonin, and the level of water scarcity These factors lead to categorize this process as a complex and non-linear biological process. Difficulty in achieving an optimized solution can be considered as one of the demerit points of most machine learning algorithms [23, 30, 31] To overcome this bottleneck, Zhang et al [32] employed the genetic algorithm (GA) as one of the common optimization algorithms for optimizing relative humidity, light duration, The application of ANNs in modeling morphological responses of citrus to drought stress agar concentration, and culture temperature in order to maximize indirect shoot organogenesis in Cucumis melo. This study has attempted to apply the NSGA-II to find the optimal levels of different factors involved in morphological responses to drought stress

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