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首页> 外文期刊>Agricultural Water Management >Root zone soil moisture prediction models based on system identification: Formulation of the theory and validation using field and AQUACROP data
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Root zone soil moisture prediction models based on system identification: Formulation of the theory and validation using field and AQUACROP data

机译:基于系统识别的根区土壤水分预测模型:理论的表述和使用田间数据和AQUACROP数据的验证

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摘要

In model-based irrigation control, the root zone soil moisture deficit (RZSMD) is maintained based on the water balance. To predict RZSMD in real-time, effective rainfall, irrigation and crop evapotranspiration need to be calculated online. Estimating the first two variables is more important yet tedious due to practical limitations of knowing the amount of water actually infiltrated into the soil. In order to solve this problem, we propose to apply system identification on water balance data to obtain a linear time series model. We further investigate how to carry out the modelling (i) under saturated conditions, (ii) when there is a rule-based irrigation control, and (iii) under measurement noise in the soil moisture readings. Using synthetic data we obtained a model fit above 80% in all cases. Additionally, we show the model optimality and applicability with an independent dataset, using residual tests. For two sets of field data, we observed model fits of 84% and 63%, and satisfaction in all residual tests. Simplicity in the model reduces calibration efforts whereas its linearity and adequacy recommend it for real-time irrigation control applications. In summary, the results indicate that a first order linear time series model based on system identification can successfully predict RZSMD in a real-time irrigation control system. (C) 2015 Elsevier B.V. All rights reserved.
机译:在基于模型的灌溉控制中,根系区域的土壤水分亏缺(RZSMD)基于水分平衡得以维持。要实时预测RZSMD,需要在线计算有效降雨,灌溉和作物蒸散量。由于了解实际渗入土壤的水量的实际限制,估计前两个变量更为重要但又乏味。为了解决这个问题,我们建议对水平衡数据进行系统辨识以获得线性时间序列模型。我们将进一步研究如何进行建模(i)在饱和条件下,(ii)有基于规则的灌溉控制时以及(iii)在土壤湿度读数中处于测量噪声下时如何进行建模。使用综合数据,我们得出的模型在所有情况下均高于80%。此外,我们使用残差测试通过独立的数据集显示模型的最优性和适用性。对于两组现场数据,我们观察到模型拟合度分别为84%和63%,并且在所有残差测试中均令人满意。该模型的简单性减少了校准工作,而其线性和充分性则建议将其用于实时灌溉控制应用。总之,结果表明,基于系统识别的一阶线性时间序列模型可以在实时灌溉控制系统中成功预测RZSMD。 (C)2015 Elsevier B.V.保留所有权利。

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