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An artificial neural network approach to the estimation of stem water potential from frequency domain reflectometry soil moisture measurements and meteorological data.

机译:一种人工神经网络方法,可通过频域反射法,土壤湿度测量和气象数据估算茎干水势。

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摘要

Stem water potential seems to be a sensitive measure of plant water status. Nonetheless, it is a labour-intensive measurement and is not suited for automatic irrigation scheduling or control. This study describes the application of artificial neural networks to estimate stem water potential from soil moisture at different depths and standard meteorological variables, considering a limited data set. The experiment was carried out with 'Navelina' citrus trees grafted on 'Cleopatra' mandarin. Principal components analysis and multiple linear regression were used preliminarily to assess the relationships among observations and to propose other models to allow a comparative analysis, respectively. Two principal components account for the systematic data variation. The optimum regression equation of stem water potential considered temperature, relative humidity, solar radiation and soil moisture at 50 cm as input variables, with a determination coefficient of 0.852. When compared with their corresponding regression models, ANNs presented considerably higher performance accuracy (with an optimum determination coefficient of 0.926) due to a higher input-output mapping ability.
机译:干水势似乎是衡量植物水分状况的敏感指标。但是,这是一项劳动密集型的测量,不适用于自动灌溉计划或控制。这项研究描述了人工神经网络的应用,它根据有限的数据集,从不同深度和标准气象变量的土壤湿度中估算茎水势。实验是用嫁接在“埃及艳后”普通话上的“ Navelina”柑桔树进行的。初步使用主成分分析和多元线性回归来评估观测值之间的关系,并提出其他模型以进行比较分析。两个主要组成部分说明了系统数据的变化。干茎水势的最佳回归方程将温度,相对湿度,太阳辐射和50 cm处的土壤水分作为输入变量,确定系数为0.852。与相应的回归模型相比,人工神经网络由于具有较高的输入输出映射能力,因此具有相当高的性能精度(最佳确定系数为0.926)。

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