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Using a causal-based function to estimate soil bulk density in invaded coastal wetlands
Land Degradation & Development ( IF 3.6 ) Pub Date : 2021-09-09 , DOI: 10.1002/ldr.4082
Ren‐Min Yang 1 , Liang‐Jie Wang 2 , Liu‐Mei Chen 3 , Zhong‐Qi Zhang 1
Affiliation  

Although pedotransfer functions (PTFs) have been routinely used for predicting soil bulk density (BD) in past decades, most of PTFs were developed based on empirical models that solely focused on statistical prediction. In this study, a causal-based PTF that focused on mechanistic explanation and prediction was developed by using partial least squares structural equation modelling (PLS-SEM). In an initial step, we identified key processes that theoretically affect BD variation, and assign measured variables for each process. This was achieved by investigating previous literature and researchers' experience based on characteristics of our study area. The proposed method was tested in an invaded coastal wetland in eastern China, with 45 samples. The causal-based model explained 71% of the variance in BD variation, indicating a permissible fit to the data. The model showed that the direct effect of nutrient cycling, plant invasion, and depth dependence on BD was significant. The results suggested that the soil processes and their interactions identified in the model were beneficial not only to improve predictive accuracy based on the cross-validation, but also to improve our understanding of BD variation from a system level. The findings highlight that a set of relative merits, such as no assumptions on the data and small sample size requirement, can improve the practical usefulness of PLS-SEM in BD prediction applications. This study also highlights that PLS-SEM may promote process-based soil-landscape modeling in terms of theory and methodology, especially for soil prediction or mapping.
更新日期:2021-11-11
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