Modeling of yield and rating of land characteristics for corn based on artificial neural network and regression models in southern Iran

Desert Pub Date : 2018-06-20 DOI:10.22059/JDESERT.2018.66355
A. Z. Meymand, M. B. Bodaghabadi, A. Moghimi, M. Navidi, F. E. Meymand, M. A. pour
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引用次数: 3

Abstract

This study was conducted to rate the land characteristics of corn in hot areas based on artificial neural networks and regression models. For this purpose, 63 corn fields were selected in southern Iran. In each farm, a pedon was excavated, described and sampled. A questionnaire was completed for each farm. A stepwise regression model was used to study the relationship between land characteristics and corn yield. A characteristic-function curve was used to rate the land characteristics. Finally, crop requirements were prepared by artificial neural network and regression models and verified by comparing the actual and predicted performance levels. The results of regression analysis showed that soil salinity, exchangeable sodium percentage, sand, clay, phosphorous, gypsum and potassium recorded the highest effect on yield and according to the artificial neural network, the exchangeable sodium percentage, soil salinity, soil texture and cation exchange capacity are the most important. Based on regression and artificial neural network methods, the threshold limit and break even production for soil salinity were 4, 2.5, 12, and 10 dS m-1, respectively, but for exchangeable sodium percentage the values were 18, 14, 35, and 30, respectively. The coefficient of determination (R2) between the actual and predicted yield based on the regression model was 0.88, but it was 0.945 (training data) and 0.837 (testing data) for the artificial neural network. Also, the results of the verification of the prepared crop requirements tables showed that the correlation of determination between the land index and the yield in the regression method was 0.78 but it was 0.81 for the artificial neural network, these results are acceptable in both methods.
基于人工神经网络和回归模型的伊朗南部玉米产量和土地特征等级建模
本研究基于人工神经网络和回归模型对热区玉米的土地特征进行了评价。为此,在伊朗南部选定了63块玉米地。在每个农场,都挖掘、描述和采样了一个恋童癖。每个农场都完成了一份调查问卷。采用逐步回归模型研究了土地特征与玉米产量的关系。使用特征函数曲线对土地特征进行评分。最后,通过人工神经网络和回归模型编制了作物需求,并通过比较实际和预测的性能水平进行了验证。回归分析结果表明,土壤盐度、交换性钠百分比、沙子、粘土、磷、石膏和钾对产量的影响最大,根据人工神经网络,交换性钠比率、土壤盐度、土壤质地和阳离子交换能力是最重要的。基于回归和人工神经网络方法,土壤盐度的阈值极限和盈亏平衡产量分别为4、2.5、12和10dS m-1,但交换性钠百分比的值分别为18、14、35和30。基于回归模型的实际产量和预测产量之间的决定系数(R2)为0.88,但人工神经网络的决定系数为0.945(训练数据)和0.837(测试数据)。此外,对编制的作物需求表的验证结果表明,回归方法中土地指数与产量之间的确定相关性为0.78,而人工神经网络为0.81,这些结果在两种方法中都是可接受的。
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