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Yield prediction of apricot using a hybrid particle swarm optimization-imperialist competitive algorithm- support vector regression (PSO-ICA-SVR) method

机译:使用混合粒子群优化 - 帝国主义竞争算法 - 支持向量回归(PSO-ICA-SVR)方法的产量预测

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Determining the important factors that affect the crop yield would be helpful for optimization of irrigation water usage, fertilizer applications, and other inputs and resources in farms. The main objective of this study was to evaluate the performance of a hybrid particle swarm optimization-imperialist competitive algorithm-support vector regression (PSO-ICA-SVR) method to predict apricot yield and to identify important factors affecting its yield in Abarkuh region, Yazd Province, Iran. One hundred ten apricot orchards were selected randomly and soil samples were taken at two layers (0-40 and 40-80 cm). Besides, water samples and leaves from branches without fruit were taken in each sampling point. Management information and apricot yields were achieved by completing a questionnaire. After performing yield modeling in MATLAB software, the results showed that the application of this hybrid algorithm identified 18 variables out of 61 studied variables as the most effective variables in apricot yield. The order of importance of selected variables in relation to the sensitivity analysis was irrigation intervals, spacing of rows planting, spacing of trees on each row, magnesium and nitrogen content of leaf, cultivar type, sand percentage and salinity of first studied layer, leaf sodium, soluble magnesium of first studied layer, sand percentage of second studied layer, age of trees, available potassium of first studied layer, silt percentage of second studied layer, coarse fragments percentage of first studied layer, soluble calcium, soluble magnesium and salinity of second studied layer. The validation results showed that the hybrid algorithm was able to estimate apricot yield with a relatively high accuracy (RMSE = L737 for training data and RMSE = 2.329 for testing data). Also, the use of efficiency index (EFI) showed that the hybrid algorithm has a high efficiency (about 99%) for prediction of apricot yield. As the apricot yield has a high sensitivity to the irrigation frequency, adopting management practices should be consider to increase water use efficiency in arid and semi-arid regions.
机译:确定影响作物产量的重要因素是有助于优化灌溉用水量,施肥应用和农场的其他投入和资源。本研究的主要目的是评估混合粒子群优化 - 帝国主义竞争算法 - 支持向量回归(PSO-ICA-SVR)方法,以预测杏产量,并确定影响阿拉伯地区亚拉德地区产量的重要因素伊朗省。选择一百个杏果园,随机选择,并以两层(0-40和40-80cm)拍摄土壤样品。此外,在每个采样点中拍摄除了没有果实的枝条的水样和叶子。通过完成问卷来实现管理信息和杏产量。在MATLAB软件中执行产量建模后,结果表明,该混合算法的应用鉴定了61个研究中的18个变量,作为杏产量中最有效的变量。所选变量与敏感性分析的重要性的顺序是灌溉间隔,行种植的间距,树木上的树木间距,叶片,栽培品种,砂百分比和首次研究层,叶钠的盐度,叶钠,首次研究层的可溶性镁,第二学习层的砂百分比,树龄的年龄,可用的第一学习层,第二学习层的淤泥百分比,粗碎片首次研究的层,可溶性钙,可溶性镁和盐度的较少数研究层。验证结果表明,混合算法能够以相对高的精度(用于训练数据的RMSE = L737和用于测试数据的RMSE = 2.329)来估计杏产量。此外,使用效率指数(EFI)表明,混合算法具有高效率(约99%),用于预测杏产量。由于杏产量对灌溉频率具有很高的敏感性,因此应考虑采用管理实践,以提高干旱和半干旱地区的用水效率。

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