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Application of firefly algorithm-based support vector machines for prediction of field capacity and permanent wilting point

机译:基于萤火虫算法的支持向量机应用于现场容量和永久性衰弱点的预测

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摘要

Soil field capacity (FC) and permanent wilting point (PWP) are significant parameters in numerous biophysical models and agricultural activities. Although these parameters can be measured directly, their measurements are quite expensive. The purpose of this study was to develop a hybrid Support Vector Machine (SVM) combined with Firefly Algorithm (FFA) techniques (SVM-FFA) to predict the FC and PWP using some easily available soil properties. The data consist of 215 soil samples collected from different horizons of soil profiles located in the East Azerbaijan provinces, North-west of Iran. Several important parameters, including the sand,silt, clay, bulk density, and organic matter content were used as inputs, while the soil FC and PWP were the output parameters. The predictions from the SVM-FFA model were compared with SVM and artificial neural network (ANN) models. The model results were compared with regard to root mean square error (RMSE), correlation coefficient (CC) and relative root mean square error (RRMSE). A comparison of models indicated that the SVM-FFA model predicted better than SVM and ANN models with RMSE = 2.402%, CC = 0.972, RRMSE = 7.677% for FC and RMSE = 1.720%, CC = 0.969, RRMSE = 5.512% for PWP in the training data set while RMSE = 2.873%, CC = 0.962, RRMSE = 8.745% for FC and RMSE = 1.935%, CC = 0.965, RRMSE = 10.619% for PWP were obtained in the testing data set.
机译:土地容量(FC)和永久性衰弱点(PWP)是许多生物物理模型和农业活动中的重要参数。虽然可以直接测量这些参数,但它们的测量非常昂贵。本研究的目的是开发一种混合支持向量机(SVM)与萤火虫算法(FFA)技术(SVM-FFA)结合使用,以预测FC和PWP使用一些易于可用的土壤性质。数据包括从位于伊朗西北部的东阿塞拜疆省的土壤型材的不同视野中收集的215种土样品。使用包括沙,淤泥,粘土,堆积密度和有机物质含量的几个重要参数作为输入,而土壤Fc和PWP是输出参数。与SVM和人工神经网络(ANN)模型进行比较了SVM-FFA模型的预测。将模型结果与根均方误差(RMSE),相关系数(CC)和相对根均方误差(RRMSE)进行比较。模型的比较表明,SVM-FFA模型预测的SVM和ANN型号具有RMSE = 2.402%,CC = 0.972,RRMSE = 7.677%,RMSE = 1.720%,CC = 0.969,RRMSE = 5.512%的PWP在RMSE = 2.873%的训练数据集中,CC = 0.962,RRMSE = 1.935%的RRMSE = 1.935%,CC = 0.965,在测试数据集中获得了PWP的RRMSE = 10.619%。

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