Modeling the Performance Parameters of Pollen Grains of Male Date Palms Using an Artificial Neural Network Based on the Mineral Composition and Morphological Properties of Their Leaves

Saleh M. Al-Sager, M. Abdel-Sattar, Rashid S. Al-Obeed, Saad S. Almady, Abdulwahed M. Aboukarima
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Abstract

One of the key factors for sustainability in agricultural systems, particularly, for cultivation of date palms, is the identification of the performance parameters of the pollen grains of male date palms (Phoenix dactylifera L.). This study was carried out to predict the performance parameters of pollen grains using an artificial neural network (ANN) model. The morphological features of spathe length, spathe weight, number of pinnae per leaf, leaf length, leaf width, length of the pinna part, pinna length, pinna width, length of the spathe stem, and spathe width, as well as the concentrations of minerals such as Mg, N, K, P, and Ca in their leaves were used as inputs to the ANN model. For this purpose, we collected the required data from nine male date palms grown in Saudi Arabia. The ANN model utilized in this work included an input layer with 15 parameters, a hidden layer of 30 neurons, and an output layer with 8 neurons. The ANN model was trained with 27 patterns. Seven patterns were utilized for testing purposes. The coefficient of determination (R2) obtained between the observed and predicted performance parameters’ values using the testing dataset was 0.902 for the number of strands per spathe, 0.967 for strand length, 0.963 for the number of flowers per strand, 0.941 for the number of flowers per spathe, 0.985 for the weight of pollen grains per spathe, 0.810 for the pollen grains’ viability, 0.936 for the pollen grains’ length, and 0.992 for the pollen grains’ width. The length of the spathe stem had the most critical effect on how the ANN model predicted the values of the dependent variables, i.e., the number of strands per spathe, with a percentage of contribution of 17.66%; the weight of pollen grains per spathe, with 17.85%; the pollen grains’ length, with 19.78%, and the pollen grains’ width, with a percentage of contribution of 30.59%. Spathe weight had the most critical influence on strand length and pollen grains’ viability, with percentages of 26.29% and 14.92%, respectively. Leaf width had the most critical effect on the number of flowers per spathe, with a percentage of 12.55%. The elemental concentration of K in the male date palm leaves had the most critical effect on the number of flowers per strand, with a percentage of 13.98%. It was therefore concluded that using a modeling process with the ANN technique can help estimate the performance parameters of male date palms’ pollen grains for different purposes, such as providing a starting point for mathematical analyses associated with the physiological mechanisms of male date palm. Moreover, the outcomes of this research work can be supportive as a practical tool in this field of study.
基于叶片矿物成分和形态特性的人工神经网络模拟雄性枣椰树花粉粒的性能参数
农业系统可持续性的关键因素之一是确定雄性枣椰树(Phoenix dactylifera L.)花粉粒的性能参数,枣椰树栽培尤其如此。本研究利用人工神经网络(ANN)模型预测花粉粒的性能参数。将佛焰苞长度、佛焰苞重量、每片叶的羽片数、叶片长度、叶片宽度、羽片部分长度、羽片长度、羽片宽度、佛焰苞茎长度和佛焰苞宽度等形态特征以及叶片中 Mg、N、K、P 和 Ca 等矿物质的浓度作为 ANN 模型的输入。为此,我们收集了生长在沙特阿拉伯的九棵雄性椰枣所需的数据。这项工作中使用的 ANN 模型包括一个有 15 个参数的输入层、一个有 30 个神经元的隐藏层和一个有 8 个神经元的输出层。ANN 模型用 27 种模式进行了训练。测试使用了 7 种模式。使用测试数据集观察到的性能参数值与预测值之间的判定系数(R2)分别为:每佛焰苞股数 0.902,股长 0.967,每佛焰苞花数 0.963,每佛焰苞花朵数 0.963。每股花数为 0.963,每佛焰苞花数为 0.941,每佛焰苞花粉粒重量为 0.985,花粉粒活力为 0.810,花粉粒长度为 0.936,花粉粒宽度为 0.992。花粉囊茎的长度对 ANN 模型预测因变量(即每花粉囊的股数,贡献率为 17.66%;每花粉囊的花粉粒重量,贡献率为 17.85%;花粉粒长度,贡献率为 19.78%;花粉粒宽度,贡献率为 30.59%)值的影响最大。佛焰苞重量对股长和花粉粒活力的影响最大,分别占 26.29% 和 14.92%。叶宽对每佛焰苞花朵数的影响最大,占 12.55%。雄枣椰树叶片中 K 元素浓度对每股花数的影响最为关键,所占比例为 13.98%。因此得出结论,利用方差网络技术建模过程有助于估算雄枣椰树花粉粒的性能参数,以用于不同目的,例如为与雄枣椰树生理机制相关的数学分析提供起点。此外,这项研究工作的成果还可作为这一研究领域的实用工具。
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