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首页> 外文期刊>Computers and Electronics in Agriculture >Studying the relationships between nutrients in pistachio leaves and its yield using hybrid GA-ANN model-based feature selection
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Studying the relationships between nutrients in pistachio leaves and its yield using hybrid GA-ANN model-based feature selection

机译:基于混合GA-AND模型的特征选择研究开花叶片营养素与产量的关系

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Sustainable and reliable management requires special attention to factors affecting crop yield. In the present study, a hybrid model of genetic algorithm and artificial neural network (GA-ANN) was employed to recognize the importance of nutrients in pistachio yield. One hundred seventy-five points in different pistachio orchards of Rafsanjan and Anar regions, Kerman province, the southeast of Iran, were identified and selected for leaf sampling and yield measurement. The concentration of phosphorus (P), potassium (K), iron (Fe), zinc (Zn), copper (Cu), manganese (Mn), calcium (Ca) and magnesium (Mg) was determined. The hybrid GA-ANN model was implemented in MATLAB software, after statistical analysis and multivariate regression modeling. The results showed that the correlation and linear multiple regression analysis could not justify the variations of pistachio yield in relation to leaves' nutrients concentration. The lowest error of the hybrid GA-ANN model was observed by five features including concentrations of K, Mg, Fe, Zn and Cu. Sensitivity analysis of ANN indicated that the highest relative importance for predicting pistachio yield was related to Cu (34.6%), K (28.2%) and Fe (26.1%). The GA-ANN model was able to solve complex and multi-dimensional problems. The accurate and careful interpretation of the results, obtained from this approach can provide a good insight for optimum farm management planning.
机译:可持续和可靠的管理需要特别注意影响作物产量的因素。在本研究中,采用了一种遗传算法和人工神经网络(GA-ANN)的混合模型来认识到营养物质在开心产量中的重要性。鉴定并选择了伊朗东南部的Rafsanjan和Anar地区的不同开心果园中的一百七十五点,并选择了叶片采样和产量测量。测定磷(P),钾(K),铁(Fe),锌(Zn),铜(Cu),锰(Mn),钙(Ca)和镁(Mg)的浓度。混合GA-ANN模型在MATLAB软件中实施,经过统计分析和多变量回归建模。结果表明,相关和线性多元回归分析无法证明与叶子营养浓度相关的开发率产量的变化。杂交GA-ANN模型的最低误差由五个特征观察,包括k,mg,Fe,Zn和Cu的浓度。安康的敏感性分析表明,预测开发率产量的最高重视与Cu(34.6%),K(28.2%)和Fe(26.1%)有关。 GA-ANN模型能够解决复杂和多维问题。从这种方法获得的结果的准确和仔细解释可以为最佳农业管理计划提供良好的见解。

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