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Use of Principal Components for Scaling Up Topographic Models to Map Soil Redistribution and Soil Organic Carbon

机译:使用主成分放大地形模型以绘制土壤再分布和土壤有机碳的图

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摘要

Landscape topography is a critical factor affecting soil formation and plays an important role in determining soil properties on the earth surface, as it regulates the gravity-driven soil movement induced by runoff and tillage activities. The recent application of Light Detection and Ranging (LiDAR) data holds promise for generating high spatial resolution topographic metrics that can be used to investigate soil property variability. In this study, fifteen topographic metrics derived from LiDAR data were used to investigate topographic impacts on redistribution of soil and spatial distribution of soil organic carbon (SOC). Specifically, we explored the use of topographic principal components (TPCs) for characterizing topography metrics and stepwise principal component regression (SPCR) to develop topography-based soil erosion and SOC models at site and watershed scales. Performance of SPCR models was evaluated against stepwise ordinary least square regression (SOLSR) models. Results showed that SPCR models outperformed SOLSR models in predicting soil redistribution rates and SOC density at different spatial scales. Use of TPCs removes potential collinearity between individual input variables, and dimensionality reduction by principal component analysis (PCA) diminishes the risk of overfitting the prediction models. This study proposes a new approach for modeling soil redistribution across various spatial scales. For one application, access to private lands is often limited, and the need to extrapolate findings from representative study sites to larger settings that include private lands can be important.
机译:景观地形是影响土壤形成的关键因素,并且在决定地球表面的土壤特性方面起着重要作用,因为它调节了由径流和耕作活动引起的重力驱动的土壤运动。光检测和测距(LiDAR)数据的最新应用为产生高空间分辨率地形度量提供了希望,该度量可用于研究土壤属性的变异性。在这项研究中,使用了来自LiDAR数据的15种地形度量,以研究地形对土壤再分配和土壤有机碳(SOC)空间分布的影响。具体而言,我们探索了使用地形主成分(TPC)表征地形度量和逐步主成分回归(SPCR)来开发基于地形的土壤侵蚀和站点和分水岭规模的SOC模型。针对逐步普通最小二乘回归(SOLSR)模型评估了SPCR模型的性能。结果表明,在不同空间尺度下,SPCR模型在预测土壤再分配率和SOC密度方面均优于SOLSR模型。使用TPC可以消除各个输入变量之间的潜在共线性,并且通过主成分分析(PCA)进行的维数减少可以减少过度拟合预测模型的风险。这项研究提出了一种新的方法来模拟土壤在不同空间尺度上的重新分布。对于一个应用程序而言,对私有土地的访问通常受到限制,并且需要将代表性研究站点的研究结果推论到包括私有土地在内的更大环境中,这一点很重要。

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