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Estimating Pore Water Electrical Conductivity of Sandy Soil from Time Domain Reflectometry Records Using a Time-Varying Dynamic Linear Model

机译:使用时变动态线性模型从时域反射法记录估算沙质土壤的孔隙水电导率

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摘要

Despite the importance of computing soil pore water electrical conductivity (σp) from soil bulk electrical conductivity (σb) in ecological and hydrological applications, a good method of doing so remains elusive. The Hilhorst concept offers a theoretical model describing a linear relationship between σb, and relative dielectric permittivity (εb) in moist soil. The reciprocal of pore water electrical conductivity (1/σp) appears as a slope of the Hilhorst model and the ordinary least squares (OLS) of this linear relationship yields a single estimate (1/σp^) of the regression parameter vector (σp) for the entire data. This study was carried out on a sandy soil under laboratory conditions. We used a time-varying dynamic linear model (DLM) and the Kalman filter (Kf) to estimate the evolution of σp over time. A time series of the relative dielectric permittivity (εb) and σb of the soil were measured using time domain reflectometry (TDR) at different depths in a soil column to transform the deterministic Hilhorst model into a stochastic model and evaluate the linear relationship between εb and σb in order to capture deterministic changes to (1/σp). Applying the Hilhorst model, strong positive autocorrelations between the residuals could be found. By using and modifying them to DLM, the observed and modeled data of εb obtain a much better match and the estimated evolution of σp converged to its true value. Moreover, the offset of this linear relation varies for each soil depth.
机译:尽管在生态和水文应用中从土壤体积电导率(σb)计算土壤孔隙水电导率(σp)十分重要,但要实现这一目标的好方法仍然难以捉摸。 Hilhorst概念提供了一个理论模型,该模型描述了σb与潮湿土壤中的相对介电常数(εb)之间的线性关系。孔隙水电导率(1 /σp)的倒数表现为Hilhorst模型的斜率,该线性关系的普通最小二乘(OLS)产生单个估计值( 1 / σ p ^ 整个数据的回归参数向量(σp)的mrow> )。这项研究是在实验室条件下在沙质土壤上进行的。我们使用时变动态线性模型(DLM)和卡尔曼滤波器(Kf)来估计σp随时间的变化。使用时域反射法(TDR)在土壤柱中不同深度下测量土壤的相对介电常数(εb)和σb的时间序列,以将确定性Hilhorst模型转换为随机模型,并评估εb与εb之间的线性关系。 σb以便捕获对(1 /σp)的确定性更改。应用Hilhorst模型,可以发现残差之间存在强正相关。通过使用它们并将其修改为DLM,观测和建模的εb数据可以获得更好的匹配,并且估计的σp演化收敛到其真实值。此外,该线性关系的偏移量随每种土壤深度而变化。

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