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Integration of machine learning and particle filter approaches for forecasting soil moisture

机译:集成机器学习和颗粒过滤方法预测土壤湿度

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摘要

Abstract Accurate forecasting of soil moisture (SM) is crucial for managing the irrigation demands effectively. The dynamics of SM is largely controlled by interaction between land and atmosphere. As an alternate to physics based models, the machine learning based tools have been shown to yield better accuracy in forecasting SM. However, the complexity in the process that controls SM at largely varying scale (from small size porous media to continental level climate) influence the forecast to have uncertainty. Hence, this paper aims at developing a modelling framework for forecasting daily SM up to 5 days lead time along with associated uncertainty. In this modeling, the uncertainty in initial point estimates of artificial neural network (ANN) parameters are re-estimated in a probabilistic framework using Particle filter. In order to reduce the high dimensionality of such problems, most sensitive parameters of the ANN model were identified through Sobol’s sensitivity analysis. The SM and weather data collected from the R.J. Cook Agronomy Farm experimental field near Pullman, Washington, USA were used to demonstrate the proposed method. The overall results of the models were highly encouraging in terms of having a Nash-Sutcliffe efficiency of more than 0.90 in calibration and validation. Further, the parametric uncertainty of ANN model parameters have helped quantifying the uncertainty in the SM forecast and found within acceptable limits. The proposed framework, in turn, helped providing useful information when the models are used in decision making supported with associated uncertainty information.
机译:摘要 准确预报土壤水分是有效管理灌溉需求的关键。SM的动力学很大程度上受陆地和大气相互作用的控制。作为基于物理的模型的替代方法,基于机器学习的工具已被证明可以在预测SM时产生更高的准确性。然而,在不同规模(从小尺寸多孔介质到大陆级气候)控制SM的过程的复杂性影响了预测的不确定性。因此,本文旨在开发一个建模框架,用于预测长达 5 天的每日 SM 提前期以及相关的不确定性。在此建模中,使用粒子滤波器在概率框架中重新估计人工神经网络 (ANN) 参数的初始点估计的不确定性。为了降低此类问题的高维性,通过Sobol的敏感性分析确定了ANN模型的大多数敏感参数。利用美国华盛顿州普尔曼附近的R.J.库克农艺农场试验田采集的SM和天气数据,对所提方法进行了演示。模型的总体结果非常令人鼓舞,在校准和验证中,Nash-Sutcliffe效率超过0.90。此外,ANN模型参数的参数不确定性有助于量化SM预测中的不确定性,并在可接受的范围内发现。反过来,当模型用于决策时,拟议的框架有助于提供有用的信息,并辅以相关的不确定性信息。

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